Recent Advances of Hyperspectral Imaging Technology and Applications in Agriculture

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Introduction
The global agricultural sector is facing increasing challenges posed by a range of stressors, including a rapidly growing population, the depletion of natural resources, environmental pollution, crop diseases, and climate change. Precision agriculture is a promising approach to address these challenges through improving farming practices, e.g., adaptive inputs (e.g., water and fertilizer), ensured outputs (e.g., crop yield and biomass), and reduced environmental impacts. Remote sensing This review is designed to focus on the acquisition, processing, and analysis of hyperspectral imagery for different agricultural applications. The review is organized in the following main aspects: (1) Hyperspectral imaging platforms and sensors, (2) methods for processing and analyzing hyperspectral images, and (3) hyperspectral applications in agriculture (Table 1). Regarding imaging platforms, different types, including satellites, airplanes, helicopters, fixed-wing UAVs, multi-rotor UAVs, and close-range platforms (e.g., ground or lab based), have been used. These platforms acquire images with different spatial coverage, spatial resolution, temporal resolution, operational complexity, and mission cost. It will be beneficial to summarize various platforms in terms of these features to support the selection of the appropriate one(s) for different monitoring purposes. After raw hyperspectral imagery is acquired, pre-processing is the step for obtaining accurate spectral information. Several procedures need to be carried out during pre-processing (usually implemented in a specialized remote sensing software), including radiometric calibration, spectral correction, atmospheric correction, and geometric correction. Although these are standard processing steps for most satellite imagery, it still can be challenging to perform on many airborne hyperspectral images due to different technical issues (e.g., the requirement of high-accuracy Global Positioning System (GPS) signals for proper geometric correction, the measurement of real-time solar radiance for accurate spectral correction). There are no standardized protocols for all sensors due to the limited availability of hyperspectral imaging in the past and the fact that the new mini-sized and low-cost hyperspectral sensors in the market are from different manufacturers with varying sensor configurations. Various approaches have been used in previous studies to address these challenges [12,19,32,33]. Therefore, it is essential to review these approaches to support other researchers for more accurate and efficient hyperspectral image processing. After pre-preprocessing, such as calibration and correction, spectral information extraction (e.g., band selection and dimension reduction) can be performed to further improve the usability of the hyperspectral image. Techniques for these procedures are reviewed in this study. This review is designed to focus on the acquisition, processing, and analysis of hyperspectral imagery for different agricultural applications. The review is organized in the following main aspects: (1) Hyperspectral imaging platforms and sensors, (2) methods for processing and analyzing hyperspectral images, and (3) hyperspectral applications in agriculture (Table 1). Regarding imaging platforms, different types, including satellites, airplanes, helicopters, fixed-wing UAVs, multi-rotor UAVs, and close-range platforms (e.g., ground or lab based), have been used. These platforms acquire images with different spatial coverage, spatial resolution, temporal resolution, operational complexity, and mission cost. It will be beneficial to summarize various platforms in terms of these features to support the selection of the appropriate one(s) for different monitoring purposes. After raw hyperspectral imagery is acquired, pre-processing is the step for obtaining accurate spectral information. Several procedures need to be carried out during pre-processing (usually implemented in a specialized remote sensing software), including radiometric calibration, spectral correction, atmospheric correction, and geometric correction. Although these are standard processing steps for most satellite imagery, it still can be challenging to perform on many airborne hyperspectral images due to different technical issues (e.g., the requirement of high-accuracy Global Positioning System (GPS) signals for proper geometric correction, the measurement of real-time solar radiance for accurate spectral correction). There are no standardized protocols for all sensors due to the limited availability of hyperspectral imaging in the past and the fact that the new mini-sized and low-cost hyperspectral sensors in the market are from different manufacturers with varying sensor configurations. Various approaches have been used in previous studies to address these challenges [12,19,32,33]. Therefore, it is essential to review these approaches to support other researchers for more accurate and efficient hyperspectral image processing. After pre-preprocessing, such as calibration and correction, spectral information extraction (e.g., band selection and dimension reduction) can be performed to further improve the usability of the hyperspectral image. Techniques for these procedures are reviewed in this study.

Procedures of Applying Hyperspectral Imagery
Image Acquisition Image Processing and Analysis Image Applications

Pre-processing:
-Geometric and radiometric correction etc. -Estimating crop biochemical and biophysical properties -Evaluating crop nutrient status -Classifying imagery to identify crop types, growing stages, weeds/invasive species, stress/disease -Retrieving soil moisture, fertility, and other physical or chemical properties variety of agricultural studies for monitoring different crop and soil properties, including detecting crop disease [41,42], estimating crop properties (e.g., chlorophyll, LAI, biomass) [43][44][45], assessing crop residues [46,47], classifying crop types [48], and investigating soil features [49,50]. A few featured ones include Wu et al. [45], who estimated vegetation chlorophyll content and LAI in a mixed agricultural field using Hyperion data and evaluated spectral bands that are sensitive to these vegetation properties. Camacho Velasco et al. [48] used Hyperion hyperspectral imagery and different classification algorithms (e.g., spectral angle mapper and adaptive coherence estimator) for identifying five types of crops (e.g., oil palm, rubber, grass for grazing, citrus, and sugar cane) in Colombia. Gomez et al. [49] predicted soil organic carbon (SOC) using both spectroradiometer data and a Hyperion hyperspectral image, and they found that using Hyperion data resulted in a lower accuracy compared with results derived from spectroradiometer data.

Satellite-Based Hyperspectral Imaging
Compared with a large number of satellite-based multispectral sensors (e.g., Landsat, SPOT, WorldView, QuickBird, Sentinel-2), there are significantly fewer hyperspectral sensors. EO-1 Hyperion, PROBA-CHRIS, and TianGong-1 [40] are a few examples of the available satellite hyperspectral sensors [20]. EO-1 Hyperion is the most widely used satellite-based hyperspectral sensor for agriculture (e.g., more than 40 publications). It collects data in the visible, near-infrared, and shortwave infrared ranges with a spectral resolution of 10 nm and a spatial resolution of 30 m. More sensor specifications of EO-1 Hyperion are given in Table 2. The sensor was in operation from 2000 to 2017, which corresponds to the period having more publications using satellite-based hyperspectral imaging (e.g., 2006 to 2020 in Figure 2). The use of Hyperion data has been reported in a variety of agricultural studies for monitoring different crop and soil properties, including detecting crop disease [41,42], estimating crop properties (e.g., chlorophyll, LAI, biomass) [43][44][45], assessing crop residues [46,47], classifying crop types [48], and investigating soil features [49,50]. A few featured ones include Wu et al. [45], who estimated vegetation chlorophyll content and LAI in a mixed agricultural field using Hyperion data and evaluated spectral bands that are sensitive to these vegetation properties. Camacho Velasco et al. [48] used Hyperion hyperspectral imagery and different classification algorithms (e.g., spectral angle mapper and adaptive coherence estimator) for identifying five types of crops (e.g., oil palm, rubber, grass for grazing, citrus, and sugar cane) in Colombia. Gomez et al. [49] predicted soil organic carbon (SOC) using both spectroradiometer data and a Hyperion hyperspectral image, and they found that using Hyperion data resulted in a lower accuracy compared with results derived from spectroradiometer data Studies have also been conducted to compare the performances of Hyperion hyperspectral imagery with multispectral imagery for estimating crop properties or classifying crop types. For instance, Mariotto et al. [15] compared Hyperion hyperspectral imagery with Landsat multispectral imagery for the estimation of crop productivity and the classification of crop types. The authors reported better performances of using hyperspectral imagery than using Landsat imagery for both research purposes. Similarly, Bostan et al. [51] compared Hyperion hyperspectral imagery with Landsat multispectral imagery for crop classification and also found that higher classification accuracy can be achieved by using hyperspectral imagery. Studies have also been conducted to compare the performances of Hyperion hyperspectral imagery with multispectral imagery for estimating crop properties or classifying crop types. For instance, Mariotto et al. [15] compared Hyperion hyperspectral imagery with Landsat multispectral imagery for the estimation of crop productivity and the classification of crop types. The authors reported better performances of using hyperspectral imagery than using Landsat imagery for both research purposes. Similarly, Bostan et al. [51] compared Hyperion hyperspectral imagery with Landsat multispectral imagery for crop classification and also found that higher classification accuracy can be achieved by using hyperspectral imagery.   [11,20,[52][53][54][55][56].

Satellite-Based
Airplane PROBA-CHRIS is another commonly used satellite-based hyperspectral sensor that was launched in 2001. Specific studies, such as Verger et al. [57], utilized PROBA-CHRIS data for retrieving LAI, the fraction of vegetation cover (fCover), and the fraction of absorbed photosynthetically active radiation (FAPAR) in an agricultural field. Antony et al. [58] identified three growth stages of wheat using multi-angle PROBA-CHRIS images and found the optimal view angles for the identification. Casa et al. [59] evaluated the performance of airborne Multispectral Infrared Visible Imaging Spectrometer (MIVIS) data and spaceborne PROBA-CHRIS data for investigating soil texture, and they found that these two data have similar performances, although the PROBA-CHRIS data have a lower spatial resolution.
There are a few other satellite-based hyperspectral sensors that have not been commonly used in an agricultural environment. For instance, Hyperspectral Imager (HySI) is a hyperspectral sensor equipped on the Indian Microsatellite-1 (IMS-1) launched in 2008 [60]. It collects spectral signals in the range of 400-950 nm with a spatial resolution of 550 m at nadir [61]. HySI imagery has been used to map different agricultural features, such as soil moisture and soil salinity [62]. It has also been used for crop classification [63]. However, this data has not been widely used in precision farming, which is probably due to the low spatial resolution and limited data availability. The Hyperspectral Imager for the Coastal Ocean (HICO) is another spaceborne hyperspectral sensor that takes images with a spectral range from 380 to 960 nm at a spatial resolution of 90 m [64]. This sensor was mainly designed to sample the coastal ocean and operated from 2009 to 2015.
In recent years, several spaceborne hyperspectral sensors have been launched or scheduled for launching in the next few years. For instance, the German Aerospace Center (DLR) Earth Sensing Imaging Spectrometer (DESIS), a hyperspectral sensor mounted on the International Space Station, was launched in 2018 [65]. This sensor acquires images in the range from 400 to 1000 nm with a spectral resolution of 2.5 nm and a spatial resolution of 30 m. The Hyperspectral Imager Suite (HISUI) is a Japanese hyperspectral sensor that is also onboard the International Space Station [66]. It was launched in 2019 and collects data in the range from 400 to 2500 nm with a spatial resolution of 20 m and a temporal resolution of 2 to 60 days [20]. Hyperspectral Precursor and Application Mission (PRISMA) is an Italian hyperspectral mission with the sensor launched in March 2019. Its spectral resolution is 12 nm in the range of 400-2500 nm (~250 bands in visible to shortwave infrared). Its hyperspectral imagery has a spatial resolution of 30 and 5 m for the panchromatic band [67]. The Environmental Mapping and Analysis Program (EnMAP) is a German hyperspectral satellite mission that is still in the development and production phase [68]. The EnMAP sensor will collect data from the visible to the shortwave infrared range with a spatial resolution of 30 m. It is planned to be launched in 2020. The Spaceborne Hyperspectral Applicative Land and Ocean Mission (SHALOM) is a joint mission by Israeli and Italian space agencies, and the satellite is scheduled to be launched in 2022 [69]. This sensor will collect hyperspectral images with a spatial resolution of 10 m in the spectral range of 400-2500 nm and panchromatic images with a spatial resolution of 2.5 m [70]. HyspIRI is another hyperspectral mission that is also at the study stage [71]. This sensor will collect data in the 380 to 2500 nm range with an interval of 10 nm and a spatial resolution of 60 m.
Although the actual PRISMA, EnMAP, and HyspIRI data are not yet available, researchers have simulated the images using other data and tested the performance of the simulated images for investigating different vegetation and soil features. For instance, Malec et al. [72], Siegmann et al. [73], and Locherer et al. [74] simulated EnMAP imagery using different airborne or spaceborne images and applied the simulated images for investigating different crop and soil properties. Bachmann et al. [75] produced an image using the EnMAP's end-to-end simulation tool and examined the uncertainties associated with spectral and radiometric calibration. Castaldi et al. [76] simulated data of four current (EO-1 ALI and Hyperion, Landsat 8 Operational Land Imager (OLI), Sentinel-2 MultiSpectral Instrument (MSI)) and three forthcoming (EnMAP, PRISMA, and HyspIRI) sensors using a soil spectral library and compared their performance for estimating soil properties. Castaldi et al. [77] used PRISMA Remote Sens. 2020, 12, 2659 9 of 44 data that were simulated with lab-measured spectral data for estimating clay content and attempted to reduce the influence of soil moisture on the estimation of clay.
Previous studies have confirmed the good performance of satellite-based hyperspectral sensors for studying agricultural features; however, several factors could potentially affect the broad applications of these data in precision farming, including the spatial resolution, temporal resolution, and data quality. The detection and monitoring of many agricultural features, such as crop disease, pest infestation, and nutrient status, require high spatial and temporal resolution. Most of the satellite-based hyperspectral sensors have medium spatial resolutions, such as 17 or 36 m for PROBA-CHRIS; 30 m for Hyperion, PRISMA, and EnMAP, DESIS; and 60 m for HyspIRI. Previous studies have indicated that such spatial resolutions are not sufficient for precision farming applications [20,49]. To overcome such limitations, researchers have attempted to pansharpen hyperspectral images, aiming to improve spatial resolution [73,[78][79][80]. Loncan et al. [81] also reviewed different pansharpening methods for generating high-spatial resolution hyperspectral images.
Temporal resolution is another factor that could potentially limit the applications of satellite-based hyperspectral images to precision agriculture. Most of the satellite-based sensors have a long revisit cycle (e.g., typically around two weeks), and thus early signals of crop stress (e.g., disease and pest) may be missed. This limitation can be further aggravated by unfavorable weather conditions (e.g., cloud contamination). Lastly, low data quality is also an issue that can affect the performance of satellite-based hyperspectral imaging for investigating agricultural features. A low signal-to-noise ratio is a well-known issue of Hyperion data (e.g., in the shortwave infrared (SWIR) range), which has affected the accuracy of retrieving different agricultural features [20]. For instance, Asner and Heidebrecht [82], Gomez et al. [49], and Weng et al. [83] found that the low signal-to-noise ratio influenced the accuracies of estimating non-photosynthetic vegetation and soil cover, soil organic matter, and soil salinity, respectively. Future satellite-based hyperspectral missions are expected to solve the data quality issue.

Airplane-Based Hyperspectral Imaging
Airborne hyperspectral imaging has been widely used to collect hyperspectral imagery for different monitoring purposes (e.g., for agriculture or forestry). The first hyperspectral sensor was an airborne visible/infrared imaging spectrometer (AVIRIS) that was developed and utilized in 1987 [84]. It collects spectral signals in 224 bands in the visible to SWIR range (Table 2). Researchers have applied AVIRIS data to help understand a wide range of agricultural features, such as investigating vegetation properties (e.g., yield, LAI, chlorophyll, and water content) [85][86][87][88], analyzing soil properties [89], evaluating crop health or identifying pest infestation [90][91][92], and mapping crop area or agricultural tillage practices [93,94].
Several other airborne hyperspectral sensors have also been used in previous studies. For instance, AVIS images were used for investigating a range of vegetation characteristics (e.g., biomass and chlorophyll) [105], Probe-1 hyperspectral images were used for investigating crop residues [106], RDACS-H4 hyperspectral images were used for detecting crop disease [34], AHS-160 hyperspectral sensor was used for mapping SOC [107], the SWIR Hyper Spectral Imaging (HSI) sensor was used for estimating soil moisture [108], the Pushbroom Hyperspectral Imager (PHI) was used for estimating winter wheat LAI [109], and airborne prism experiment (APEX) data were used for studying the relationship between SOC in croplands and the spectral signals [110].
Most of the aforementioned airborne hyperspectral images have been acquired by airplanes at medium to high altitude (e.g., 1-4 km altitude for CASI, 20 km for AVIRIS), and the acquired images generally having high to medium spatial resolution, such as 4 m for CASI imagery, 5 m for HyMap, and 20 m for AVIRIS [111][112][113]. Such spatial resolutions are appropriate for mapping many crop and soil features. However, image acquisition usually needs to be scheduled months or even years in advance, and flight missions are expensive [19]. Furthermore, for some specific applications, such as investigating species-level or community-level features (e.g., identification of weeds or early signal of crop disease), images with very high spatial resolutions (e.g., sub-meter) are preferred [114,115]. In addition, due to the unstable nature of airplanes as imaging platforms, a gimbal or high-accuracy inertial measurement unit (IMU) will be required to compensate for the orientation change of the airplanes or recording the orientation information for subsequent image correction, respectively. These factors limited the full application of airborne hyperspectral imaging in precision agriculture. Manned helicopters have also been used as platforms for hyperspectral imaging and investigation of vegetation features [27,116]. Helicopters have more flexible flight heights (e.g., 100 m-2 km) than airplanes and are capable of acquiring high-spatial-resolution images (e.g., sub-meter) over large areas. An aviation company with a manned helicopter is generally needed for the imaging task, which requires extra funding support and far advanced pre-scheduling.

UAV-Based Hyperspectral Imaging
UAV has become a popular platform in recent years for remote sensing data acquisition, especially for multispectral imaging using digital cameras or multispectral sensors. With the increased availability of lightweight hyperspectral sensors, researchers have experimented on mounting these sensors on UAVs to acquire high-spatial-resolution hyperspectral imagery [19,117]. Different types of UAVs, including multi-rotors, helicopters, and fixed wings, have been utilized in previous studies ( Figure 3). Compared with manned airplanes and helicopters, UAVs are capable of acquiring highspatial-resolution images with a much lower cost and have high flexibility in terms of scheduling a flight mission [118]. Several specific agricultural applications of UAV-based hyperspectral imaging are summarized in Table 3.
Remote Sens. 2020, 12, x FOR PEER REVIEW 10 of 43 and 20 m for AVIRIS [111][112][113]. Such spatial resolutions are appropriate for mapping many crop and soil features. However, image acquisition usually needs to be scheduled months or even years in advance, and flight missions are expensive [19]. Furthermore, for some specific applications, such as investigating species-level or community-level features (e.g., identification of weeds or early signal of crop disease), images with very high spatial resolutions (e.g., sub-meter) are preferred [114,115]. In addition, due to the unstable nature of airplanes as imaging platforms, a gimbal or high-accuracy inertial measurement unit (IMU) will be required to compensate for the orientation change of the airplanes or recording the orientation information for subsequent image correction, respectively. These factors limited the full application of airborne hyperspectral imaging in precision agriculture. Manned helicopters have also been used as platforms for hyperspectral imaging and investigation of vegetation features [27,116]. Helicopters have more flexible flight heights (e.g., 100 m-2 km) than airplanes and are capable of acquiring high-spatial-resolution images (e.g., sub-meter) over large areas. An aviation company with a manned helicopter is generally needed for the imaging task, which requires extra funding support and far advanced pre-scheduling.

UAV-Based Hyperspectral Imaging
UAV has become a popular platform in recent years for remote sensing data acquisition, especially for multispectral imaging using digital cameras or multispectral sensors. With the increased availability of lightweight hyperspectral sensors, researchers have experimented on mounting these sensors on UAVs to acquire high-spatial-resolution hyperspectral imagery [19,117]. Different types of UAVs, including multi-rotors, helicopters, and fixed wings, have been utilized in previous studies ( Figure 3). Compared with manned airplanes and helicopters, UAVs are capable of acquiring high-spatial-resolution images with a much lower cost and have high flexibility in terms of scheduling a flight mission [118]. Several specific agricultural applications of UAV-based hyperspectral imaging are summarized in Table 3.  [120], (c) MDPI [121], and (d) SPIE [122]. Table 3. Example applications of UAV-based hyperspectral imaging in agriculture.

Applications Previous Studies Research Focuses
Estimating LAI and chlorophyll Yu et al. [37] Estimated a range of vegetation phenotyping variables (e.g., LAI and leaf chlorophyll) using UAV-based hyperspectral imagery and radiative transfer modelling.

Estimating biomass
Honkavaara et al. [123] Mounted a hyperspectral sensor and a consumer-level camera on a UAV for estimating biomass in a wheat and a barley field.
Yue et al. [124] Utilized UAV-based hyperspectral images for estimating winter wheat above-ground biomass.

Estimating nitrogen content
Pölönen et al. [125] Used lightweight UAVs for collecting hyperspectral images and estimated crop biomass and nitrogen content.
Kaivosoja et al. [126] Applied UAV-based hyperspectral imagery to investigate biomass and nitrogen contents in a wheat field.
Akhtman et al. [127] Utilized UAV-based hyperspectral images for estimating nitrogen content and phytomass in corn and wheat fields and monitored temporal variations of these properties.
Estimating water content Izzo et al. [128] Evaluated water content in the commercial vineyard using UAV-based hyperspectral images and determined wavelengths sensitive to canopy water content.
Detecting disease Bohnenkamp et al. [119] Used both ground-and UAV-based hyperspectral images for detecting yellow rust in wheat.
Various lightweight hyperspectral sensors have been developed in recent years and can be mounted on UAVs. Examples of sensors include the widely-used Headwall Micro-and Nano-Hyperspec VNIR [12,13,26,128], UHD 185-Firefly [53,130], the PIKA II sensor [19,32], and the HySpex VNIR [25,131]. These hyperspectral sensors contain more than 100 bands in the visible-near infrared spectral range ( Table 2). These sensors are small and compact (1-2 kg), thus they can be deployed quickly on various manned or unmanned remote sensing platforms. Previous studies conducted by Adão et al. [11] and Lodhi et al. [52] also compared and summarized various lightweight hyperspectral sensors.
A large number of factors need to be considered in the application of UAV-based hyperspectral imaging, ranging from sensor setup and data collection, to image processing. Saari et al. [122] tested the feasibility of a UAV-based hyperspectral imaging system for agricultural and forest applications and discussed several challenges regarding the imaging technology (e.g., hardware requirements and system settings). Aasen et al. [132] focused on the calibration of images collected with a frame-based sensor and discussed several challenges related to the use of UAV-based hyperspectral imaging for vegetation and crop investigation (e.g., the payload of UAV, signal-to-noise ratio, and spectral calibration). Habib et al. [120] attempted to perform orthorectification of UAV-acquired pushbroom-based hyperspectral imagery with frame-based RGB images over an agricultural field. Adão et al. [11] reviewed applications of UAV-based hyperspectral imaging in agriculture and forestry and listed several hyperspectral sensors that can be mounted on UAVs. The authors also discussed several challenges in collecting and analyzing UAV-based hyperspectral imagery, such as radiometric noise, the low quality of UAV georeferencing, and a low signal-to-noise ratio.
UAV-based hyperspectral imaging has become more popular in recent years; therefore, it is critical to review its strengths and limitations. To explore more features of this technology, this section of the review is not limited to agricultural applications alone. Different types of UAVs have been used as hyperspectral imaging platforms, with the two most widely used as multi-rotors [130,133,134] and fixed-wing planes [33,120,135]. Slow flights at low altitudes are preferred to achieve high-spatial-resolution hyperspectral imagery with a high signal-to-noise ratio. Thus, a multi-rotor is more competitive than fixed-wing planes for hyperspectral imaging in terms of flight operation. Specifically, the multi-rotor allows for a low flight altitude, flexible flight speed, and vertical takeoff and landing, while the fixed wing requires a minimum flight altitude, speed, and, sometimes, accessories for takeoff and landing (e.g., runway, launcher, and parachute). A hyperspectral imaging system, which consists of a hyperspectral sensor, a data processing unit, a GPS, and an IMU, has a considerable weight (e.g., 1-3 kg), thus bringing challenges to the payload capacity of the UAV system and its battery endurance. The multi-rotors are generally powered by high-performance batteries (e.g., LiPo), and most have a short endurance (e.g., less than 20 min). The endurance can be as short as 3 min [12]. In contrast, many fixed-wing UAVs are powered by fuel, thus having a much longer endurance (e.g., 1-10 h) [19,135]. However, these fixed-wing planes are mostly large and heavy (e.g., a 5 m wingspan and 14 kg take-off weight) [135], and thus bring challenges to the flight operation. Using UAV, researchers need to consider the UAV SWaP (size, weight, and power), geographical coverage, time aloft, altitude, and other variables. In addition to the challenges in building a UAV system and performing flight operations, researchers likely need to apply for flight permission from an aviation authority (e.g., Special Flight Operations Certificate (SFOC) from Transport Canada), and purchase suitable UAV flight insurance [136]. UAV size and weight are essential parameters to consider in these processes. Furthermore, the UAVs are required to be visible during flight missions, so that the pilot can maintain constant visual contact with the aircraft. This could create a major challenge when flying over a large area, a hilly area, or an area with forests.

Close-Range (Ground-or Lab-Based) Hyperspectral Imaging
Close-range hyperspectral imaging, including ground (Figure 4a-c) or lab based (Figure 4d,e), is an emerging technology in recent years, and it is capable of acquiring super-high-spatial-resolution (e.g., cm or sub-cm level) hyperspectral imagery [137][138][139]. Therefore, this imaging technology can be used for investigating fine-scale (e.g., leaf and canopy level) vegetation features and thus greatly support the investigation of crop growing status and detection of early signs of crop stress (e.g., disease, weeds, or nutrition deficiency). Sensors are mounted on moving or static platforms (e.g., linear stages, scaffolds, or trucks) that can be deployed indoors or outdoors for collecting images. Lamps (e.g., halogen lamp) or the sun are used as light sources in these platforms, respectively.
Researchers have utilized different types of platforms and hyperspectral sensors for collecting super-high-spatial-resolution hyperspectral imagery to study different agricultural features, as shown in Table 4. Table 4. Example applications of close-range hyperspectral imaging in previous studies.

Investigating biochemical components
Feng et al. [140] Designed a hyperspectral imaging system that consists of a Headwall hyperspectral camera, a halogen lamp, a computer, and a translation stage and used this system for taking images of rice leaves to study leaf chlorophyll distribution.
Mohd Asaari et al. [141] Mounted a visible and near-infrared HIS camera in a high-throughput plant phenotyping platform for evaluating plant water status and detecting early stage signs of plant drought stress.
Zhu et al. [142] Installed a hyperspectral camera and halogen lamp on a moving stage and used this imaging system for estimating sugar and nitrogen contents in tomato leaves.

Detecting crop disease
Morel et al. [143] Used a HySpex hyperspectral camera installed in a close-range imaging system for investigating black leaf streak disease in banana leaves.
Nagasubramanian et al. [144] Integrated a Pika XC hyperspectral line imaging scanner and halogen illumination lamps for taking images of soybeans and monitoring fungal disease.

Applications Previous Studies Research Focuses
Identifying vegetation species or weeds Eddy et al. [139] Mounted a hyperspectral sensor on a boom arm that was installed on a truck for acquiring images at 1 m above the ground and applied the hyperspectral images to classifying weeds in different crop fields.
Lopatin et al. [145] Installed an AISA Eagle imaging spectrometer on a scaffold at the height of 2.5 m above ground, aiming to collect hyperspectral imagery in a grassland area for classifying grassland species.

Phenotyping
Behmann et al. [146] Utilized hyperspectral cameras and a close-range 3D laser scanner that were mounted on a linear stage for collecting hyperspectral images and 3D point models, respectively, and used these two datasets for generating hyperspectral 3D plant models for better monitoring plant phenotyping features.

Monitoring soil properties
Antonucci et al. [147] Attempted to estimate copper concentration in contaminated soils using hyperspectral images that were acquired from a lab-based spectral scanner.
Malmir et al. [137] Collected close-range soil images using Pika XC2 hyperspectral camera that was mounted on a linear stage and used the hyperspectral imagery for investigating soil macro-and micro-elements.
Overall, the close-range hyperspectral imaging platform is capable of acquiring super-highspatial-resolution hyperspectral imagery that is critical for investigating fine-scale crop or soil features. These features provide detailed information about the plant's biophysical and biochemical processes and how plants respond to environmental stresses and diseases. However, the image collection and processing also suffer from different issues, such as uninformative variability caused by the interaction of light with the plant structure (i.e., illumination effects), influences of shadows, and expanding applications of the platform to a large scale [141,146]. Further research in these areas is warranted.
Remote Sens. 2020, 12, x FOR PEER REVIEW 13 of 43 Identifying vegetation species or weeds Eddy et al. [139] Mounted a hyperspectral sensor on a boom arm that was installed on a truck for acquiring images at 1 m above the ground and applied the hyperspectral images to classifying weeds in different crop fields.
Lopatin et al. [145] Installed an AISA Eagle imaging spectrometer on a scaffold at the height of 2.5 m above ground, aiming to collect hyperspectral imagery in a grassland area for classifying grassland species.

Phenotyping
Behmann et al. [146] Utilized hyperspectral cameras and a close-range 3D laser scanner that were mounted on a linear stage for collecting hyperspectral images and 3D point models, respectively, and used these two datasets for generating hyperspectral 3D plant models for better monitoring plant phenotyping features.

Monitoring soil properties
Antonucci et al. [147] Attempted to estimate copper concentration in contaminated soils using hyperspectral images that were acquired from a lab-based spectral scanner.
Malmir et al. [137] Collected close-range soil images using Pika XC2 hyperspectral camera that was mounted on a linear stage and used the hyperspectral imagery for investigating soil macro-and micro-elements.
Overall, the close-range hyperspectral imaging platform is capable of acquiring super-highspatial-resolution hyperspectral imagery that is critical for investigating fine-scale crop or soil features. These features provide detailed information about the plant's biophysical and biochemical processes and how plants respond to environmental stresses and diseases. However, the image collection and processing also suffer from different issues, such as uninformative variability caused by the interaction of light with the plant structure (i.e., illumination effects), influences of shadows, and expanding applications of the platform to a large scale [141,146]. Further research in these areas is warranted.  [139]; (b) SPIE [148]; (c) Elsevier [138]; (d) Springer Nature [144]; (e) Elsevier [149].
In summary, different hyperspectral imaging platforms, including satellites, airplanes, helicopters, UAVs, and close-range, have different advantages and disadvantages for applications in precision agriculture. Detailed comparisons of these platforms for agricultural applications are shown in Table 5. In brief, satellite-based systems provide images covering large areas but suffer from  [139]; (b) SPIE [148]; (c) Elsevier [138]; (d) Springer Nature [144]; (e) Elsevier [149].
In summary, different hyperspectral imaging platforms, including satellites, airplanes, helicopters, UAVs, and close-range, have different advantages and disadvantages for applications in precision agriculture. Detailed comparisons of these platforms for agricultural applications are shown in Table 5. In brief, satellite-based systems provide images covering large areas but suffer from medium spatial resolution and limited data availability (e.g., a limited number of operating sensors and long revisit time). Airplane-and helicopter-based imaging platforms acquire data with suitable spatial coverage and resolution for most of the agricultural applications. However, they are limited by a high mission cost and scheduling challenges and thus are not suitable for repeated monitoring. UAV-based systems are capable of acquiring high-spatial resolution images repeatedly and have high flexibility. However, they can only cover a small area due to the limited battery endurance and aviation regulations. The close-range imaging systems are capable of obtaining super-high-spatial-resolution images, but they can only be used at leaf or canopy levels. Therefore, the following factors should be taken into consideration when selecting a platform for a specific research project: spatial resolution needed for the study, flight area and flight endurance, weight of the imaging system, platform payload capacity, flight safety and regulations, operation flexibility, and cost. medium spatial resolution and limited data availability (e.g., a limited number of operating sensors and long revisit time). Airplane-and helicopter-based imaging platforms acquire data with suitable spatial coverage and resolution for most of the agricultural applications. However, they are limited by a high mission cost and scheduling challenges and thus are not suitable for repeated monitoring. UAV-based systems are capable of acquiring high-spatial resolution images repeatedly and have high flexibility. However, they can only cover a small area due to the limited battery endurance and aviation regulations. The close-range imaging systems are capable of obtaining super-high-spatialresolution images, but they can only be used at leaf or canopy levels. Therefore, the following factors should be taken into consideration when selecting a platform for a specific research project: spatial resolution needed for the study, flight area and flight endurance, weight of the imaging system, platform payload capacity, flight safety and regulations, operation flexibility, and cost. medium spatial resolution and limited data availability (e.g., a limited number of operating sensors and long revisit time). Airplane-and helicopter-based imaging platforms acquire data with suitable spatial coverage and resolution for most of the agricultural applications. However, they are limited by a high mission cost and scheduling challenges and thus are not suitable for repeated monitoring. UAV-based systems are capable of acquiring high-spatial resolution images repeatedly and have high flexibility. However, they can only cover a small area due to the limited battery endurance and aviation regulations. The close-range imaging systems are capable of obtaining super-high-spatialresolution images, but they can only be used at leaf or canopy levels. Therefore, the following factors should be taken into consideration when selecting a platform for a specific research project: spatial resolution needed for the study, flight area and flight endurance, weight of the imaging system, platform payload capacity, flight safety and regulations, operation flexibility, and cost. medium spatial resolution and limited data availability (e.g., a limited number of operating sensors and long revisit time). Airplane-and helicopter-based imaging platforms acquire data with suitable spatial coverage and resolution for most of the agricultural applications. However, they are limited by a high mission cost and scheduling challenges and thus are not suitable for repeated monitoring. UAV-based systems are capable of acquiring high-spatial resolution images repeatedly and have high flexibility. However, they can only cover a small area due to the limited battery endurance and aviation regulations. The close-range imaging systems are capable of obtaining super-high-spatialresolution images, but they can only be used at leaf or canopy levels. Therefore, the following factors should be taken into consideration when selecting a platform for a specific research project: spatial resolution needed for the study, flight area and flight endurance, weight of the imaging system, platform payload capacity, flight safety and regulations, operation flexibility, and cost. medium spatial resolution and limited data availability (e.g., a limited number of operating sensors and long revisit time). Airplane-and helicopter-based imaging platforms acquire data with suitable spatial coverage and resolution for most of the agricultural applications. However, they are limited by a high mission cost and scheduling challenges and thus are not suitable for repeated monitoring. UAV-based systems are capable of acquiring high-spatial resolution images repeatedly and have high flexibility. However, they can only cover a small area due to the limited battery endurance and aviation regulations. The close-range imaging systems are capable of obtaining super-high-spatialresolution images, but they can only be used at leaf or canopy levels. Therefore, the following factors should be taken into consideration when selecting a platform for a specific research project: spatial resolution needed for the study, flight area and flight endurance, weight of the imaging system, platform payload capacity, flight safety and regulations, operation flexibility, and cost. medium spatial resolution and limited data availability (e.g., a limited number of operating sensors and long revisit time). Airplane-and helicopter-based imaging platforms acquire data with suitable spatial coverage and resolution for most of the agricultural applications. However, they are limited by a high mission cost and scheduling challenges and thus are not suitable for repeated monitoring. UAV-based systems are capable of acquiring high-spatial resolution images repeatedly and have high flexibility. However, they can only cover a small area due to the limited battery endurance and aviation regulations. The close-range imaging systems are capable of obtaining super-high-spatialresolution images, but they can only be used at leaf or canopy levels. Therefore, the following factors should be taken into consideration when selecting a platform for a specific research project: spatial resolution needed for the study, flight area and flight endurance, weight of the imaging system, platform payload capacity, flight safety and regulations, operation flexibility, and cost. medium spatial resolution and limited data availability (e.g., a limited number of operating sensors and long revisit time). Airplane-and helicopter-based imaging platforms acquire data with suitable spatial coverage and resolution for most of the agricultural applications. However, they are limited by a high mission cost and scheduling challenges and thus are not suitable for repeated monitoring. UAV-based systems are capable of acquiring high-spatial resolution images repeatedly and have high flexibility. However, they can only cover a small area due to the limited battery endurance and aviation regulations. The close-range imaging systems are capable of obtaining super-high-spatialresolution images, but they can only be used at leaf or canopy levels. Therefore, the following factors should be taken into consideration when selecting a platform for a specific research project: spatial resolution needed for the study, flight area and flight endurance, weight of the imaging system, platform payload capacity, flight safety and regulations, operation flexibility, and cost.

Methods for Processing and Analyzing Hyperspectral Images
Hyperspectral images acquired by different platforms and sensors are typically provided in a raw format (e.g., digital numbers) that needs to be pre-processed (e.g., atmospheric, radiometric, and spectral corrections) to retrieve accurate spectral information. Afterward, different approaches can be used for analyzing the hyperspectral information and investigating various agricultural features (e.g., crop and soil properties). A few commonly used methods include linear regression, advanced regression (e.g., PLSR), machine learning and deep learning (e.g., RF, CNN), and radiative transfer modelling (e.g., PROSPECT and PROSAIL). Researchers have used one or more of these methods for investigations of different agricultural features. In this section, the review is arranged based on the different methods used in the studies.

Pre-Processing of Hyperspectral Images
Typical processing of hyperspectral imagery includes geometric correction, orthorectification, radiometric correction, and atmospheric correction. For satellite-and airplane-based hyperspectral images, the geometric and orthorectification correction are generally performed by data providers, and the radiometric and atmospheric corrections can be done following standard image processing steps available in remote sensing software. For UAV-based images, in contrast, the users need to conduct these processing steps and decide on appropriate processing methods and associated parameters. For instance, a digital elevation model (DEM) and ground control points (GCPs) are usually needed for performing the orthorectification and geometric correction [12]. If the sensor mounted on UAV is pushbroom based, accurate sensor orientation information recorded by an IMU will be needed for these corrections, and the IMU needs to be integrated into the UAV and well-calibrated [12,27]. Software packages commonly used in previous studies for performing these corrections on UAV-based hyperspectral images include ENVI (Exelis Visual Information Solutions, Boulder, CO, USA) and PARGE (ReSe Applications Schläpfer, Wil, Switzerland) [12,26,117].
Radiometric correction is conducted to convert image digital numbers to radiance using calibration coefficients that are provided by the sensor manufacturer [11]. These coefficients may need to be updated over time due to the degradation of spectral materials used to construct the hyperspectral sensors. Regarding atmospheric correction, although the UAVs are flown at low altitudes, the signals acquired are still subjective to the influence of various atmospheric absorptions and scatterings, such as oxygen absorption at 760nm; water absorption near 820, 940, 1140, 1380, and 1880 nm; and carbon dioxide absorption at 2010 and 2060 nm [12,13,26,150]. Therefore, atmospheric correction is critical for obtaining good-quality spectral information. However, Adão et al. [11] suggest that this process might be skipped if the UAVs are operated close to the ground. Therefore, the application of atmospheric correction will depend on specific flight missions and research purposes (e.g., flight altitudes, if atmosphere-influenced spectral bands are needed). Software or methods commonly used in previous studies for performing atmospheric correction on UAV-based hyperspectral images include the MODTRAN model (Spectral Sciences Inc.), ENVI FLAASH (L3Harris Geospatial), PCI Geomatica (PCI Geomatics Corporate), SMARTS model (Solar Consulting Services), and empirical line correction [12,19,27,32,33,116].
Hyperspectral images typically have hundreds of bands, and many of them are highly correlated. Therefore, dimension reduction is also an essential procedure to consider in the pre-processing of hyperspectral imagery. Many previous studies using hyperspectral imagery have discussed the challenges of data redundancy and have used different methods for dimension reduction. For instance, Miglani et al. [151] performed principal component analysis (PCA) on hyperspectral images and indicated that 99% of the information could be explained in the first 10 principal components. Amato et al. [152] discussed a few previous methods of dimension reduction, such as PCA, minimum noise fraction (MNF), and singular value decomposition (SVD), and proposed a dimension reduction algorithm based on discriminant analysis for supervised classification. Teke et al. [38] reviewed several dimension reduction methods and summarized them based on transformation techniques. Thenkabail et al. [153] discussed the problems of high dimensionality and listed a number of spectral bands that are more important for investigating crop features. Sahoo et al. [4] reviewed different methods for dimension reduction, such as PCA, uniform feature design (UMD), wavelet transforms, and artificial neural networks (ANNs), and discussed their features of operation. Wang et al. [154] proposed an auto-encoder-based dimensionality reduction method that is a deep learning-based approach. Of these different methods, the wavelet transform is one of the most widely used ones for dimension reduction. This technique decomposes a signal into a series of scaled versions of the mother wavelet function and allows the variation of the wavelet based on the frequency information to extract localized features (e.g., local spectral variation) [155,156]. It has also been successfully used for image fusion, feature extraction, and image classification [156][157][158].
In addition to dimensionality reduction, band sensitivity analysis and band selection have also been widely used in hyperspectral remote sensing to reduce the data size by selecting only the bands that are sensitive to the object of interest. Different algorithms have been proposed in previous studies for band selection, such as a fast volume-gradient-based method that is an unsupervised method and removes the most redundant band successively based on the gradient of volume [159], a column subset selection-based method that maximizes the volume of the selected subset of columns (i.e., bands) and is robust to noisy bands [160], and a manifold ranking-based salient band selection method that puts band vectors in manifold space and selects a band-based ranking that can tackle the problem of inappropriate measurement of the band difference [161]. With the sensitivity analysis, previous studies have identified spectral bands that are sensitive to different crop properties, for instance,~515,~550, 570,~670, 700-740,~800, and~855 nm for investigating chlorophyll content;~405,~515,~570,~705, and~720 nm for evaluating nitrogen status;~970,~1180,~1245,~1450, and~1950 nm for assessing water content;~682,~855,~910,~970,~1075,~1245,~1518,~1725, and~2260 nm for estimating biomass; and~550,~682,~855,~1075,~1180,~1450, and~1725 nm for crop classification [36,44,153,162].
Overall, pre-processing is an essential step for improving the quality of hyperspectral images and preparing for further data analysis. After the pre-processing, the analytical methods to be discussed below can be used for analyzing the hyperspectral information and investigating various agricultural features on the ground.

Empirical Relationships
Linear regression is a widely used method for analyzing hyperspectral imagery and retrieving target information (e.g., crop and soil properties). Both spectral reflectance and vegetation indices can be used as predictor variables in establishing a linear relationship. For instance, using spectral bands, Finn et al. [108] built linear regressions between field-measured soil moisture data and the spectral reflectance of collected hyperspectral imagery and identified bands that have stronger correlations with soil moisture. More studies have used vegetation indices in the regression for a better performance as some indices can enhance the signal of targeted features and minimize the background noise. Some of the previous studies are shown in Table 6. Table 6. Selected previous studies utilized linear regression and hyperspectral vegetation indices for investigating agricultural features.

Applications Previous Studies Research Focuses
Estimating leaf chlorophyll and nitrogen content Oppelt and Mauser [105] Utilized the Chlorophyll Absorption Integral (CAI), Optimized Soil-Adjusted Vegetation Index (OSAVI), and hyperspectral Normalized Difference Vegetation Index (h NDVI) for estimating leaf chlorophyll and nitrogen content from hyperspectral imagery and evaluated the performance of each of the indices.
Wu et al. [45] Tested a range of vegetation indices (e.g., NDVI, Simple Ratio (SR), and Triangular Vegetation Index (TVI)) for retrieving vegetation chlorophyll content and LAI from Hyperion images and determined the indices that produced high accuracies.
Cilia et al. [103] Utilized the Double-peak Canopy Nitrogen Index (DCNI) and Modified Chlorophyll Absorption Ratio Index/Modified Triangular Vegetation Index 2 (MCARI/MTVI2) for estimating nitrogen content, as well as the Transformed Chlorophyll Absorption in Reflectance Index (TCARI), MERIS Terrestrial Chlorophyll Index (MTCI) and Triangular Chlorophyll Index (TCI) for estimating leaf pigments.

Applications Previous Studies Research Focuses
Estimating LAI and biomass Xie et al. [109] Evaluated a range of vegetation indices, such as the modified simple ratio index (MSR), NDVI, a newly proposed index NDVI-like (which resembles NDVI), modified triangular vegetation index (MTVI2), and modified soil adjusted vegetation index (MSAVI) for estimating winter wheat LAI from hyperspectral images.
Ambrus et al. [104] Tested the NDVI and Red Edge Position (REP) for estimating field-scale winter wheat biomass.
Richter et al. [98] Examined a range of techniques (e.g., index-based empirical regression, radiative transfer modelling, and artificial neural network) for estimating crop biophysical variables (e.g., LAI and water content) in terms of operational agricultural applications with airborne Hymap data and discussed the unique features of each technique.
Estimating nitrogen content Nevalainen et al. [163] Utilized 28 published vegetation indices (e.g., Chlorophyll Absorption Ratio Index (CARI) and Normalized Difference Red Edge (NDRE)) for estimating oat nitrogen and identified the best-performing one.

Detecting crop disease
Huang et al. [164] Examined the performance of the photochemical reflectance index (PRI) for estimating the disease index of wheat yellow rust using canopy reflectance data and then applied the regression on an airborne hyperspectral imagery for mapping the disease-affected areas.
Copenhaver et al. [34] Calculated a range of vegetation indices (e.g., NDVI and red edge position index) for detecting crop disease and compared the effectiveness of these indices.
Estimating crop residue cover Galloza and Crawford [47] Utilized the Normalized Difference Tillage Index (NDTI) and Cellulose Absorption Index (CAI), together with ALI, Hyperion, and airborne hyperspectral (SpecTIR) data, for estimating crop residue cover for conservation tillage application.

Crop classification
Thenkabail et al. [44] Utilized both spectral bands and vegetation indices for classifying different crop types and estimating vegetation properties and evaluated the performance difference of using various bands or indices.
Overall, linear regression has been commonly used for estimating a wide range of crop or soil properties. It is easy to establish, and most of the index-based regressions generated satisfactory accuracies. However, there are several potential issues associated with this approach, such as the large number of indices available and it is unknown which performs better, regression may be very sensitive to data size and quality, and the saturation problem of indices [36,165]. It is thus critical to consider these potential issues and adopt appropriate solutions when establishing linear regressions with hyperspectral data. For instance, selecting appropriate vegetation indices with targeted crop or soil variables is recommended. Researchers have evaluated a wide range of hyperspectral vegetation indices for different research purposes. Haboudane et al. [166]  in these studies; thus, it is suggested to evaluate the top-performed ones in these studies and select the one that generates the highest accuracy.
To deal with issues of linear regression, advanced regression, such as MLR and PLSR, has also been commonly used in previous research for estimating crop and soil properties [172,173]. Compared with linear regression, the advanced regression models mostly use multiple predictor variables in the model to achieve a higher accuracy. PLSR is one of the most widely used models for investigating crop properties using hyperspectral images, such as Ryu et al. [35], Jarmer [99], Siegmann et al. [73], and Yue et al. [124] used PLSR and hyperspectral images for estimating different crop biophysical and biochemical variables (e.g., LAI, biomass, chlorophyll, content, fresh matter, and nitrogen contents). Thomas et al. [100] examined PLSR for retrieving the biogas potential from hyperspectral images and evaluated the influence of imaging time on retrieval accuracy. Regarding soil features, Gomez et al. [49], Van Wesemael et al. [107], Hbirkou et al. [102], and Castaldi et al. [110] built a PLSR model for estimating the SOC content using hyperspectral images. Zhang et al. [50] used PLSR for estimating a wide range of soil properties (e.g., soil moisture, soil organic matter, clay, total carbon, phosphorus, and nitrogen content) from hyperspectral imagery and identified factors that may affect the model accuracy (e.g., low signal-to-noise ratio, spectral overlap of different soil features). Casa et al. [59] used the PLSR model and different hyperspectral imagery for investigating soil textural features and evaluated various factors (e.g., spectral range and resolution, soil moisture, geolocation error) influencing the model performance.
The PLSR model is implemented in Python and R [174,175] and is widely used in many research areas, including forests [176], grasslands [177], and waters [178]. This model performed well in different studies owning to its strengths in dealing with a large number of inter-correlated predictor variables (i.e., by converting them to a few non-correlated latent variables), addressing the data noise challenge, and tackling the over-fitting problem [171,179]. Different techniques have also been confirmed to be efficient for improving the accuracy of the PLSR model, such as incorporating different types of predictor variables in the model (e.g., spectral bands, indices, textural variables), utilizing predicted residual error sum of squares (PRESS) statistics for determining the optimal number of latent variables, and feature evaluation for selecting more important predictor variables in the model [36]. It is thus critical to carefully examine these techniques for achieving the optimal model accuracy.

Radiative Transfer Modelling
Radiative transfer modelling is a physically based approach that uses physical laws to simulate the interaction of electromagnetic radiation with vegetation (e.g., reflection, transmission, and absorption) [180]. The RTMs simulate vegetation spectra (e.g., leaf reflectance and transmittance) using vegetation biophysical and biochemical properties (e.g., chlorophyll and water contents) in the forward mode, and for inversion of these variables from spectral measurements in the inverse mode [181]. PROSAIL is one of the most widely used RTMs. This model is an integration of the leaf-level PROSPECT model and canopy-level SAIL model and is capable of simulating canopy reflectance using leaf properties (e.g., chlorophyll and water contents), canopy structural parameters (e.g., LAI and leaf angle), and soil reflectance [18].
PROSAIL has also been used in agricultural environments for investigating crop and soil properties. For instance, Casa and Jones [182] inverted PROSAIL and a ray-tracing canopy model with spectroradiometer-measured hyperspectral reflectance data and imaging spectrometer-acquired hyperspectral image data, respectively, for estimating canopy LAI and evaluated factors influencing the estimation accuracy (e.g., the non-homogeneous surface caused by the crop row structure). Richter et al. [98] utilized PROSAIL for estimating LAI, fCover, canopy chlorophyll, and water content from hyperspectral images and compared its performance to other methods (e.g., artificial neural network). Richter et al. [183] applied PROSAIL to investigate similar vegetation variables and analyzed the accuracy and efficiency of this method. Wu et al. [184] examined the sensitivity of vegetation indices to vegetation chlorophyll content using simulated results from the PROSPECT model and suggested a few well-performed indices. Locherer et al. [74] attempted to estimate vegetation LAI using the PROSAIL model and multi-source hyperspectral images and tested several techniques (e.g., different cost functions and types of averaging methods) used for the inversion process. Yu et al. [37] estimated a range of vegetation phenotyping variables (e.g., LAI and leaf chlorophyll) using hyperspectral imagery and PROSAIL and examined the sensitivity of different spectral ranges to the parameters in the PROSAIL model.
Compared with the regression models discussed in previous sections, the RTMs have been less used in the literature for investigating agricultural features due mainly to their high model complexity and computational intensity. For instance, a wide range of parameters need to be considered in RTM (e.g., chlorophyll, carotenoids, water contents, leaf area index, leaf angles, solar angles, and soil reflectance, along with other parameters, in the PROSAIL model) and the users need to use different techniques (e.g., merit function, look-up table) to facilitate the forward and inversion operations of the model. In addition, it costs much more computing time than the regression models to achieve the predictions of target vegetation variables. However, it is also well known that the regression models tend to be site and time specific and are not readily transferable to other geographical regions or different times over the site [166]. In contrast, RTM is a more transferable approach owning to the fact that it is established based on physical laws and does not require training data for rebuilding the model. In addition, RTM is capable of estimating a range of vegetation properties in one model, while regression models typically can only estimate one variable [36,185].

Machine Learning and Deep Learning
Machine learning algorithms, including support vector machine regression (SVM) and RF, are powerful tools for analyzing hyperspectral information since they can process a large number of variables (e.g., spectral reflectance and vegetation indices) efficiently [186]. Machine learning has been widely used in the remote sensing field for estimating properties of ground features or classifying different ground covers [36,114,187]. Researchers have also used different machine learning algorithms and hyperspectral images for agricultural applications. SVM has been a commonly used algorithm in previous research for prediction or classification purposes. For instance, Honkavaara et al. [123] estimated crop biomass using SVM and UAV-acquired hyperspectral imagery. Bostan et al. [51] utilized SVM for classifying different crop types and achieved high classification accuracy. Ran et al. [93] used KNN and SVM classifiers for investigating tillage practices in agricultural fields and compared their performances. RF is another commonly used algorithm for investigating agricultural features with hyperspectral imagery. For instance, Gao et al. [188] successfully classified weed and maize using RF and lab-based hyperspectral images. Using ground-based hyperspectral reflectance data acquired by an ASD spectroradiometer, Siegmann and Jarmer [189] evaluated the performance of RF, SVM, and PLSR for estimating crop LAI and confirmed the good performance of RF. Similarly, using hyperspectral reflectance, Adam et al. [190] attempted to detect maize disease with the RF model. Overall, machine learning models generally have robust performances for investigating agricultural features using hyperspectral imagery.
Deep learning is a subset of machine learning and extends machine learning by adding more "depth" (i.e., hierarchical representation of the dataset) in the model [191,192]. It is a popular approach in recent years for recognizing patterns in remote sensing images and thus for investigating various ground features. Deep learning has been commonly used in the remote sensing field for image classification, such as land cover classification [193][194][195] and the identification of ground features (e.g., buildings) [196]. Deep learning has also been applied to precision farming to solve complicated issues. Existing studies are, for example, investigating the estimation of crop yield using CNN and multispectral images together with climate data [197], plant disease detection using CNN and smartphone-acquired images [198], crop classification using 3-D CNN and multi-temporal multispectral images [199], and classification of agricultural land cover using deep recurrent neural network and multi-temporal SAR images [200]. Kamilaris and Prenafeta-Boldú [191] reviewed applications of deep learning in agriculture and food production, although not all studies used remote sensing images. Singh et al. [201] reviewed a range of deep learning methods and their applications, specifically in plant phenotyping. Up to now, deep learning has not been well explored for processing and analyzing remote sensing images, especially hyperspectral images, for agricultural applications. Considering the capacity of deep learning for studying feature patterns in images and the rich information in hyperspectral imagery, the integration of the two has a wide range of agricultural applications (e.g., crop classification, weed monitoring, crop disease detection, and plant stress evaluation). Further research in these areas is warranted.
Machine learning or deep learning is capable of processing multi-source and multi-type data [202]. For instance, besides multi-type remote sensing images (e.g., optical, thermal, LiDAR, and Radar), other sources of data, such as weather, irrigation, and historical yield information, can also be incorporated in the modelling process for a possibly better evaluation of targeted agricultural features [203]. Although machine learning and deep learning models are powerful, it is also critical to keep in mind that these models require large-quantity and high-quality training samples to achieve robust performances [202]. Insufficient training datasets or data with issues (e.g., data incompleteness, noise, and biases) may cause undesired model performances.
In summary, different analytical methods (e.g., linear regression, advanced regression, machine learning and deep learning, and RTM) have different levels of complexity, performance, and transferability. More detailed comparisons on these methods are listed in Table 7. Overall, linear regression is the easiest method to use, and its performance is generally acceptable, although this method can be highly influenced by the choice of predictor variables and quality of the sample data. The advanced regression (e.g., PLSR) mostly performs better than the linear regression since it involves multiple variables in the model and is less sensitive to data noise. RTM (e.g., PROSAIL) is capable of producing multiple data products (e.g., chlorophyll, water, and LAI) with reasonably high accuracies. One essential advantage of this method is its high transferability. However, this method has the highest complexity as it requires a wide range of parameters and extensive programming. In terms of machine learning, many algorithms, such as RF and SVM, are well established and mostly performed well in previous studies. Some programming and model adjustments are needed for this method to achieve optimal performance. Deep learning is a relatively new method and is increasingly popular in recent years. Appropriate model design and programming are critical for this approach. It also requires a substantial amount of training data and computing resources to achieve a good model performance.

Hyperspectral Applications in Agriculture
Hyperspectral imaging has been used in agriculture for a wide range of purposes, including estimating crop biochemical properties (e.g., chlorophyll, carotenoids, and water contents) and biophysical properties (e.g., LAI, biomass) for understanding vegetation physiological status and predicting yield, evaluating crop nutrient status (e.g., nitrogen deficiency), monitoring crop disease, and investigating soil properties (e.g., soil moisture, soil organic matter, and soil carbon). Previous studies have also summarized some of the above-mentioned applications of hyperspectral remote sensing in precision agriculture [4,84]. In this section, we will thus focus more on recent hyperspectral studies and summarize these studies according to specific applications.

Estimation of Crop Biochemical and Biophysical Properties
One important hyperspectral application in agriculture is monitoring crop conditions through the retrieval of crop biochemical and biophysical properties [8,99]. For instance, the leaf chlorophyll content is an essential biochemical property influencing the vegetation photosynthetic capacity and controlling crop productivity [99]. In previous studies, Oppelt and Mauser [105] collected AVIS data to retrieve the chlorophyll and nitrogen contents in a winter wheat field. Similarly, Moharana and Dutta [43] used Hyperion data to estimate the contents of these two biochemical components in a rice field. LAI, on the other hand, is a fundamental vegetation biophysical parameter and is highly related to crop biomass and yield [98]. Previous studies have used hyperspectral remote sensing to estimate the LAI of different crops, and some of the example studies are shown in Table 8. Table 8. Selected previous studies estimating LAI for different crop types using hyperspectral images.

Winter wheat
Xie et al. [109] Estimated canopy LAI in a winter wheat field using airborne hyperspectral imagery and proposed a new vegetation index for improved estimation accuracy.
Siegmann et al. [73] Retrieved LAI of two wheat fields using EnMAP images and attempted to pan-sharp the images aiming to improve the spatial resolution of LAI products.

Barley
Jarmer [99] Retrieved a range of canopy variables from barley, including LAI, chlorophyll, water, and fresh matter content using HyMap data and established an efficient approach for monitoring the spatial patterns of crop variables.

Rice
Yu et al. [37] Investigated LAI, leaf chlorophyll content, canopy water content, and dry matter content using UAV-based hyperspectral imagery, aiming to understand the growing status of rice.

Mixed agricultural fields
Richter et al. [98] Estimated crop LAI and water content with airborne HyMap data aiming to support operational agricultural practices (e.g., irrigation management and crop stress detection) in the context of the EnMap hyperspectral mission.
Wu et al. [45] Estimated chlorophyll content and LAI in a mixed agricultural field (e.g., corns, chestnuts trees, and tea plants) using Hyperion data and identified spectral bands and vegetation indices that generated the highest accuracy.
Verger et al. [57] Estimated LAI, fCover, and FAPAR in an agricultural site with different crops using PROBA-CHRIS data.
Locherer et al. [74] Estimated LAI in mixed crop fields using EnMAP data and compared the result accuracy to that of LAI estimation with airborne data.
In addition to the above-mentioned vegetation biochemical and biophysical properties, crop water content is a critical parameter for revealing water stress. Richter et al. [98] attempted to estimate the water content in maize, sugar beet, and winter wheat using airborne HyMap data. Moharana and Dutta [204] investigated the water stress in a rice field and its variations using Hyperion images and indicated that the remote sensing-estimated water content matched well with field-observed data. Izzo et al. [128] evaluated the water status in a commercial vineyard using UAV-based hyperspectral data and determined wavelengths sensitive to the canopy water content. Sahoo et al. [4] discussed the applications of hyperspectral remote sensing data for evaluating water features in crops and listed several vegetation indices for calculating the water content.
It can be found from the literature review that many previous studies have focused on estimating the crop chlorophyll content, LAI, and water content using hyperspectral imagery, while other important crop properties, such as carotenoids, that are sensitive to plant stress are less explored. In addition, crop production is influenced by all of these vegetation properties (e.g., chlorophyll, water, and LAI). Besides investigating the spatial and temporal variations of each property, it is also critical to evaluate the relationships between these properties and further understand how they affect crop growth and crop production.
Estimating crop biomass and forecasting yield are also important applications of remote sensing, as they will contribute to the understanding of crop productivity and implementing suitable management measures [126]. Yue et al. [124] utilized UAV-based hyperspectral images for estimating the above-ground biomass of winter wheat. Yang [205] and Mariotto et al. [15] utilized both multispectral and hyperspectral data to estimate crop yield and found that the hyperspectral imagery-based model performed better. In addition, crop residues left in the field are critical materials protecting soil from water and wind erosion and influencing soil biochemical processes. Previous studies, such as Bannari et al. [106], Galloza and Crawford [47], Bannari et al. [46], have used different hyperspectral images for the estimation of crop residues on farmlands Beyond the estimation of crop biomass and residue, one further research topic is investigating bioenergy (e.g., biogas), which can be generated from the crop biomass. Thomas et al. [100] attempted to estimate the amount of biogas that can be generated per unit of biomass using airborne HyMap data and achieved satisfactory results. Overall, hyperspectral imagery has contributed greatly to the estimation of crop biomass, yield, and other related features (e.g., bioenergy, crop residues). Since crop biomass and yield are highly affected by agricultural practices (e.g., watering and nutrition treatment), involving these practice data, together with hyperspectral imagery, in the model can potentially generate better results. More research in this area is warranted.

Evaluating Crop Nutrient Status
Precision farming involves evaluating the crop nutrient status and providing recommendations on site-specific resource management according to crop needs [206]. Such an approach is critical for improving the resource use efficiency and reducing environmental impacts [4,103]. Previous studies have used hyperspectral images for estimating the nitrogen content of different crop types, as shown in Table 9. Table 9. Selected previous studies estimating the nitrogen content for different crop types using hyperspectral images.

Crop types Previous Studies Research Focuses
Corn Akhtman et al. [127] Used UAV-based hyperspectral images for estimating nitrogen content and phytomass in corn and wheat fields and monitored the temporal variation of these properties.
Goel et al. [207] Collected hyperspectral images in a cornfield with different nitrogen treatments and weed controls aiming to evaluate to what extent the spectral signals can identify different nitrogen treatments, weed controls, or their interactions.

Crop types Previous Studies Research Focuses
Cilia et al. [103] Estimated nitrogen concentration and dry mass in an experimental maize field using airborne hyperspectral imagery, aiming to quantify the nitrogen deficit and provide a variable rate fertilization map. The authors also suggested a way to evaluate the minimum amount of nitrogen to apply without reducing crop yield and avoid excessive fertilization.
Quemada et al. [208] Evaluated plant nitrogen status in a maize field using airborne hyperspectral images and developed nitrogen fertilizer recommendations.

Wheat
Koppe et al. [209] Attempted to investigate wheat nitrogen status and aboveground biomass using hyperspectral and radar images and to evaluate spectral signatures of wheats under different nitrogen treatments.
Kaivosoja et al. [126] Used UAV-based hyperspectral imagery to investigate nitrogen content and absolute biomass in a wheat field and evaluated the degree of nitrogen shortage on the date of image acquisition. In this research, historical farming data, including a yield map and a spring fertilization map, were used for estimating the optimal amount of fertilizer to be applied in different areas of the field.
Castaldi et al. [210] Estimated nitrogen content in wheat using multi-temporal satellite-based multispectral and hyperspectral images and found that the band selection affected estimation accuracy at different phenological stages.

Rice
Moharana and Dutta [43] Collected Hyperion images for monitoring nitrogen and chlorophyll contents in rice and investigated the performance of different spectral indices.
Ryu et al. [35] Used airborne hyperspectral images and multivariable analysis to estimate nitrogen content in rice at the heading stage.
Zheng et al. [211] Tried to monitor rice nitrogen status using UAV-based hyperspectral images and tested the performance of different vegetation indices for estimating the nitrogen content.
Zhou et al. [212] Estimated leaf nitrogen concentration of rice using close-range hyperspectral images and tested if the variations of the spatial resolution of the imagery affect the estimation accuracy.
Other crops (i.e., barley, potato, cabbage, tomato, sugarcane, and cacao) Nasi et al. [213] Evaluated the performance of using airborne hyperspectral images and photogrammetric features for estimating crop nitrogen content and biomass in a barley field and a grassland site, and examined if the integration of spectral and plant height information can improve the estimation results.
Nigon et al. [214] Examined nitrogen stress in potato fields using airborne hyperspectral imagery and identified spectral indices that are sensitive to nitrogen content.
Chen et al. [215] Estimated nitrogen content in cabbage seedlings using close-range hyperspectral images and identified sensitive wavelengths for the estimation.
Zhu et al. [142] Investigated soluble sugar, total nitrogen, and their ratio in tomato leaves using close-range hyperspectral images and tested data fusion analysis techniques for improving the investigation accuracy.

Miphokasap and
Wannasiri [216] Collected Hyperion images for investigating spatial variations of sugarcane canopy nitrogen concentration and attempted to identify the nutrient deficient areas for corresponding treatments.
Malmir et al. [217] Attempted to evaluate nutrient status (e.g., nitrogen, phosphorus, and potassium) of cacao leaves using close-range hyperspectral images and examined influences of band selection on the evaluation accuracy.
Overall, owing to the large amount of spectral information in hyperspectral imagery, crop nutrient status can be evaluated with high accuracies, and a corresponding fertilizer treatment plan can be proposed to achieve optimal crop productions. However, it is also essential to keep in mind that there is a wide range of factors, such as soil moisture, soil type, and topographic conditions, that can impact crop growth and production. A more comprehensive treatment plan that takes into consideration both the crop nutrient status and other influencing factors can make a greater contribution to crop production.

Classifying Imagery to Identify Crop Types, Growing Stages, Weeds/Invasive Species, and Stress/Disease
Besides quantifying crop properties, hyperspectral images have also been used for classification purposes, such as differentiating crop types, identifying crop growing stages, classifying weeds or invasive species, and detecting disease [218]. Examples of previous studies are shown in Table 10. Different agricultural land covers or crop types have different spectral characteristics; hence, hyperspectral images can contribute greatly to the classification of these agricultural features. Table 10. Selected previous studies for the classification of agricultural features using hyperspectral images.

Classification of crop types
Camacho Velasco et al. [48] Utilized Hyperion data and different classification algorithms (e.g., spectral angle mapper and adaptive coherence estimator) for identifying five types of crops (e.g., oil palm, rubber, grass for grazing, citrus, and sugar cane) in Colombia.
Bostan et al. [51] Classified different crop and land cover types (e.g., maize, cotton, urban, water, barren rock, and other crop types) using Landsat 8 multispectral and EO-1 Hyperion hyperspectral images and indicated that hyperspectral imagery performed better than the multispectral imagery.
Amato et al. [152] Assessed the potential of PRISMA data for classifying different agricultural land uses (e.g., soybean, corn, and sugar beet) and evaluated the contribution of spectral bands to image segmentation and classification.
Nigam et al. [91] Performed crop classification over homogeneous and heterogeneous agriculture and horticulture areas with airborne AVIRIS images and assessed crop health at the field scale.
Sahoo et al. [4] Reviewed a few previous studies that used hyperspectral images for classification purposes and indicated the robustness of hyperspectral imagery for classifying different crop types and different crop phonological stages.
Other classifications (e.g., growth stages and agricultural tillage practices) Antony et al. [58] Applied multi-angle PROBA-CHRIS data for classifying different growth stages of wheat.
Ran et al. [93] Attempted to detect agricultural tillage practices using hyperspectral imagery with different classification models and identified the best performing one.
Teke et al. [38] Discussed the application of spectral libraries for classification purposes and listed several spectral libraries available worldwide. The authors also indicated the limitations of using a spectral library, such as the spectral varieties within the same species or land cover, and highlighted the importance of having geographically specific libraries Weed infestation is a severe issue in agricultural fields and could substantially affect crop growth and yield. Identifying and mapping weeds in agricultural fields using remote sensing will contribute greatly to variable rate treatment in the fields [219]. Researchers have utilized different remote sensing data and methods for weed mapping, as shown in Table 11. Overall, the identification of weeds typically requires a high spatial resolution since many weeds are small in size and mixed with crops.
UAV-based and close-range hyperspectral imaging is capable of acquiring high-spatial-resolution images, and thus has high potential to contribute to weed detection. Table 11. Selected previous studies for detecting weeds using different hyperspectral imaging platforms.

Platforms Previous Studies Research Focuses
Airborne Goel et al. [97] Attempted to detect weed infestation in a cornfield that had different nitrogen treatments using airborne hyperspectral imagery and found the different nitrogen treatments affected the classification accuracy of weed.
Karimi et al. [220] Performed combinations of different nitrogen treatment rates and weed management practices in a cornfield and tried to classify these combinations with airborne hyperspectral images.

Close range
Zhang et al. [221] Developed a close-range weed sensing system using hyperspectral images for classifying tomato and weeds and tested its performance in different environments.
Eddy et al. [139] Used a ground-based hyperspectral imaging system for classifying weeds in canola, pea, and wheat crops and evaluated the applicability of this approach for real-time detection of weeds in the field.
Eddy et al. [222] Used hyperspectral image data as well as secondary products with reduced bands to classify weeds and achieved good accuracy.
Liu et al. [223] Classified carrot and weeds using a ground-based hyperspectral imaging system and evaluated the number of spectral bands needed to achieve a good classification accuracy.
Multiple platforms Scherrer et al. [129] Attempted to classify herbicide-resistant weeds in different crop fields (e.g., barley, corn, and dry pea) using both ground-and UAV-based hyperspectral imagery and discussed factors influencing classification accuracy (e.g., crop type, plant age, and illumination condition).
Review studies LÓPEZ-Granados [224] Discussed the high potential of hyperspectral remote sensing images for mapping weeds but also indicated the limitations of this technology due to the high cost of data collection.
Monitoring crop disease is highly important to growers trying to reduce economic and yield losses [38]. Hyperspectral imaging collects signals at fine spectral resolutions (e.g., less than 10-nm intervals), and thus can possibly detect early symptoms of crop disease and support timely interventions [225]. Previous studies have used hyperspectral images for detecting diseases in different types of groups (Table 12). Overall, hyperspectral signals are sensitive to the variations of crop growth status (e.g., caused by disease or stress) and thus can indicate the occurrence of crop disease or stress. However, considering that crop status can be affected by other factors (e.g., nutrient deficiency), repeat imaging and analysis together with robust modelling would be critical for accurate and timely detection of crop disease or stress.

Crops Previous Studies Research Focuses
Wheat Bohnenkamp et al. [119] Used both ground-and UAV-based hyperspectral imaging platforms for detecting yellow rust in wheat and evaluated factors influencing the detection (e.g., measurement distance, spectral features to use).
Bauriegel et al. [226] Targeted the infestation of wheat by Fusarium and attempted to detect this disease using hyperspectral remote sensing data, and consequently suggested that farmers need to deal with infected crops separately from healthy crops.
Zhang et al. [227] Attempted to detect the Fusarium head blight in winter wheat similarly using close-range hyperspectral imaging and suggested that this is a stable and feasible way to monitor this disease using low-altitude remote sensing.

Corn
Copenhaver et al. [34] Used airborne hyperspectral images to detect the signal of Ostrinia nubilalis in a cornfield (e.g., via monitoring rate of plant senescence) and tested the performance of this approach throughout the growing season.

Soybean
Nagasubramanian et al. [144] Tried to detect charcoal rot in soybeans using close-range hyperspectral imaging and identified wavelength ranges that are sensitive to this disease.

Sugarcane
Apan et al. [41] Detected sugarcane areas affected by orange rust disease using Hyperion data and developed specific vegetation indices that are sensitive to the disease.

Mustard
Dutta et al. [42] Delineated mustard areas influenced by diseases using Hyperion images and evaluated the performance of different indices.

Review studies
Lowe et al. [218] Focused on hyperspectral imaging and reviewed some of its applications in detecting and classifying crop disease and stress.
Thomas et al. [225] Reviewed the contributions of hyperspectral imaging to the detection of plant disease and discussed different factors (e.g., light and wind) that may limit its wide applications.
Mahlein et al. [228] Reviewed previous studies using remote sensing for detecting plant disease, but not limited to hyperspectral imaging.

Retrieving Soil Moisture, Fertility, and Other Physical or Chemical Properties
Agricultural soil properties, including soil moisture, soil organic matter, soil salinity, and roughness, are important factors influencing crop growth and final production [7]. Hyperspectral remote sensing can contribute greatly to the investigation of these factors. For instance, estimating soil moisture is one of the most popular research topics. Finn et al. [108] estimated soil moisture at three different depths using airborne hyperspectral images and linear regression and discussed the contributions and limitations of hyperspectral remote sensing for soil moisture studies. Casa et al. [229] investigated soil water, clay, and sand contents using a fusion of CHRIS-PROBA images and soil geophysical data. Shoshany et al. [7] summarized four main approaches for estimating soil moisture content: (1) Radar techniques; (2) radiation balance and surface temperature calculations; (3) reflectance in the visible, NIR, and SWIR ranges; and (4) integrative methods using multiple spectral ranges. Although soil moisture can be estimated using optical remote sensing data, it is often affected by the plant ground cover. Integrating multi-type remote sensing data, e.g., SAR and thermal data, can possibly generate more accurate estimates.
SOC is a critical component of soil fertility, which highly controls both the growth and yield of crops. Hyperspectral data provide fine spectral details that are critical for the estimation of SOC content. Previous studies have used hyperspectral images collected by different platforms for investigating SOC (Table 13). Overall, hyperspectral imagery has a high potential for the estimation of soil organic matter and carbon. However, similar to the evaluation of soil moisture, the investigation of soil organic matter and carbon can be highly influenced by vegetation cover. Therefore, collecting hyperspectral images in non-growing seasons could be a solution. Table 13. Selected previous studies for estimating soil organic carbon using hyperspectral images acquired by different platforms.

Satellites
Zhang et al. [50] Utilized EO-1 Hyperion images for estimating several soil properties, including soil moisture, soil organic matter, total carbon, total phosphorus, total nitrogen, and clay content. The authors also found the influence of spectral resolution on the performance of retrieval models.
Casa et al. [230] Assessed soil organic matter and soil texture at the field scale using CHRIS-PROBA images and produced uniform soil zones for supporting irrigation management.

Airplanes
Hbirkou et al. [102] Attempted to estimate SOC in agricultural fields using airborne HyMap images and tested the influences of soil surface conditions on the estimation, aiming to support soil management in precision farming.
Gedminas and Martin [231] Tried to map soil organic matter using airborne hyperspectral imagery in combination with topographic information extracted from LiDAR image and evaluated the correlation between soil organic matter and various spectral bands.
Castaldi et al. [110] Investigated the relationship between SOC in croplands and spectral signals using a soil database and then estimated SOC in their study sites using airborne hyperspectral imagery. With this approach, the authors attempted to reduce the amount of new data collection in the field or lab.
Van Wesemael et al. [107] Discussed the impacts of vegetation cover on soil and the estimation of SOC from remote sensing data and attempted to use spectral unmixing techniques to estimate the fraction of vegetation cover and then estimate the soil carbon content using the residue soil spectra.

Multiple platforms
Gomez et al. [49] Estimated SOC using both lab-based hyperspectral reflectance data and Hyperion image data and found that using the lab-acquired reflectance data can generate more accurate results than using the Hyperion data. At the same time, the Hyperion data can generate a SOC map that matches field observations and thus can also be used for prediction.
Hyperspectral remote sensing data have also been used for estimating other soil features, as shown in Table 14. It can be found from these studies that hyperspectral images can be used for studying a wide range of soil features. Different soil features influence the spectral signals in different bands and with different magnitudes, while some of these influences may be spectrally overlapped. Therefore, when investigating a specific soil feature, it is critical to collect a suitable number of soil samples with other soil features generally controlled. Table 14. Selected previous studies for investigating different soil features using hyperspectral images.

Soil Features Previous Studies Research Focuses
Soil texture Casa et al. [59] Investigated soil texture using airborne MIVIS and spaceborne PROBA-CHRIS hyperspectral images and discussed their performance and limitation (e.g., lack of SWIR band).
Soil nitrogen Song et al. [232] Used airborne hyperspectral images for evaluating the impact of soil nitrogen applications and variable-rate fertilization on winter wheat growth. The authors also indicated that the variable-rate fertilization in the field could reduce the growing difference of winter wheat caused by the spatial variations of soil nitrogen.

Copper concentration
Antonucci et al. [147] Attempted to estimate in soil using lab-based hyperspectral measurement and achieved good accuracy.
Potassium content Wang et al. [233] Evaluated potassium content in cinnamon soil using close-range hyperspectral imaging aiming to better understand soil fertility and indicated the good performance of this approach when the potassium content is high (i.e., ≥ 100 mg/kg).

CO 2 leaks
McCann et al. [234] Detected CO 2 leaks from the soil by monitoring vegetation stress signals using multi-temporal hyperspectral images.
In summary, hyperspectral imaging has been successfully applied to a wide range of agricultural applications, as reviewed above, and summarized in Table 15. Future research directions are also suggested. Classification and detection of stressors: -Weeds or invasive species -Disease/stress affected areas -Improvement of classification methods (e.g., advanced algorithms) for target features -Fusion and application of multi-type and multi-temporal remote sensing data -Further exploration of UAV and close-range imaging for better identification of fine-scale signals Soil properties -Soil moisture -Soil organic matter -Soil salinity -Soil roughness -Separation of spectral signals from soil and vegetation for better assessing soil features -Fusion and application of multi-type remote sensing data to capture different soil information -Further exploration of close-range sensing for investigating soil properties.
Agro-ecosystem -Less explored using hyperspectral image -Ecosystem services -Biodiversity -Adverse effects of agricultural practices on the environments

Conclusions and Recommendations
Hyperspectral imaging has great potential for applications in agriculture, particularly precision agriculture, owing to ample spectral information sensitive to different plant and soil biophysical and biochemical properties. Multiple platforms, including satellites, airplanes, UAVs, and close-range platforms, have become more widely available in recent years for collecting hyperspectral images with different spatial, temporal, and spectral resolutions. These platforms also have different strengths and limitations in terms of spatial coverage, flight endurance, flexibility, operational complexity, and cost. These factors need to be considered when choosing imaging platform(s) for specific research purposes. Further technological developments are also needed to overcome some of the limitations, such as the short battery endurance in UAV operations and high cost of hyperspectral sensors.
Different analytical methods, such as linear regression, advanced regression, machine learning, deep learning, and RTM, have been explored in previous studies for analyzing the tremendous amount of information in hyperspectral images for investigating different agricultural features. Previous studies have mainly used the regression approach, while more physically based methods, such as RTM, have been less explored. Deep learning and effective big-data analytics are powerful tools for recognizing patterns in remote sensing data. Together with hyperspectral imagery, deep learning models have high potential to support the monitoring of a wide range of agricultural features. Different analytical methods have different advantages and disadvantages, and thus it is critical to compare these methods for specific research (e.g., requirements of accuracy and computing efficiency) and choose an optimal approach. In addition, image spectral information has been commonly used as variables for prediction or classification tasks, while other information, such as texture, has been less explored. Further, some other sources of data, such as weather, irrigation records, and historical yield information, can also be used in some of the analytical methods (e.g., machine learning and deep learning) for better monitoring of crop features. More research in these fields is also warranted.
Hyperspectral imaging has been successfully applied in a wide range of agricultural applications, including estimating crop biochemical and biophysical properties; evaluating crop nutrient and stress status; classifying or detecting crop types, weeds, and diseases; and investigating soil characteristics. Previous studies have focused on discussing one or two of the many factors impacting crop growth performance and productivity, and thus cannot evaluate crop status and growth-limiting factors comprehensively. It is important to integrate these factors to achieve a better understanding of their inter-relationships for optimal crop production and environmental protection. Besides, previous studies using hyperspectral imaging have mainly targeted investigating crop growth, aiming to improve crop yield, while less research has focused on understanding the ecosystem side of crop production (e.g., ecosystem services and biodiversity). Further research in these areas is warranted.