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Article

Spectral Index for Quantifying Leaf Area Index of Winter Wheat by Field Hyperspectral Measurements: A Case Study in Gifu Prefecture, Central Japan

1
Department of Forest Management, Forestry and Forest Products Research Institute, 1 Matsunosato, Tsukuba, Ibaraki 305-8687, Japan
2
Graduate School for International Development and Cooperation, Hiroshima University, 1-5-1 Kagamiyama, Higashi-Hiroshima 739-8529, Japan
3
Faculty of Engineering, Tohoku Institute of Technology, 35-1, YagiyamaKasumi-cho, Taihaku-ku, Sendai, Miyagi 982-8577, Japan
4
Gifu Prefectural Agricultural Technology Center, 729-1 Matamaru, Gifu 501-1152, Japan
5
Gifu Region Agriculture and Forestry Office, 5-14-53 YabutaMinami, Gifu 500-8384, Japan
6
River Basin Research Center, Gifu University, 1-1 Yanagido, Gifu 501-1193, Japan
*
Author to whom correspondence should be addressed.
Remote Sens. 2015, 7(5), 5329-5346; https://doi.org/10.3390/rs70505329
Submission received: 1 December 2014 / Revised: 18 April 2015 / Accepted: 22 April 2015 / Published: 27 April 2015
(This article belongs to the Special Issue Recent Advances in Remote Sensing for Crop Growth Monitoring)

Abstract

:
Timely and nondestructive monitoring of leaf area index (LAI) using remote sensing techniques is crucial for precise and efficient management of crops. In this paper, a new spectral index (SI) for estimating LAI of winter wheat (Triticum aestivum L.) is proposed on the basis of field hyperspectral measurements. A simple index based on the empirical relationships between LAIs and SIs of all available two-waveband combinations from hyperspectral data is developed by considering the difference between reflectance values at 760 and 739 nm (DSIR760–R739 = R760 – R739). Among published and newly developed SIs, DSIR760–R739 exhibited a significant and strong linear relationship with LAI and showed outstanding performance in LAI assessments. The permissible bandwidths for broad-band DSIR760–R739 investigated using simulated reflectance were 5 nm for both 760 and 739 nm center wavelengths. The results indicate that the linear regression model based on the narrow-band and broad-band DSIR760–R739 is a simple but accurate method for timely and nondestructive monitoring of LAI.

Graphical Abstract

1. Introduction

In remote sensing, among all canopy variables, leaf area index (LAI) is identified as a key biophysical parameter for crop growth diagnosis and pre-harvest grain yield prediction [1,2], as well as having a key role in terrestrial ecosystem processes [3]. The green LAI, defined as the one-sided green leaf area per unit horizontal ground area [4], is directly related to the growth status of crops [5] and largely influences the spectral reflectance of vegetation canopies. Thus, for site-specific crop management, it is crucial to be able to estimate LAI in a timely and nondestructive manner using remote sensing, since the site-specific crop management requires both high-quality crop production and the minimization of adverse environmental effects via better fertilizer management [2,6,7,8].
To date, empirical regression models based on the spectral indices (SIs) have been widely used for estimating LAI in crop fields because SI is a simpler, more convenient, and lesser restrictive approach than multivariate statistical techniques or radiative transfer model inversions [6,9,10,11]. For example, the normalized difference vegetation index (NDVI) [12] has been widely used in the assessment of above-ground biomass (AGB) and LAI [2]. The modified soil-adjusted vegetation index (MSAVI), optimized soil-adjusted vegetation index (OSAVI), and enhanced vegetation index (EVI) were developed to minimize the effects of varying background soil reflectance and atmospheric influences in measuring vegetation signal [13,14,15,16]. Gitelson [17] proposed the wide dynamic range vegetation index (WDRVI) to accurately assess crop biomass and LAI under conditions of moderate to high AGB. Recently, Viña et al. [10] found that chlorophyll indices (the red-edge chlorophyll index [CIred-edge] and the green chlorophyll index [CIgreen]), devised for chlorophyll assessment at the leaf scale [18], are more accurate for LAI assessments of maize and soybean crops than for the above-mentioned SIs. These SI-based studies have successfully predicted LAI at various spatial scales using commercially available digital cameras, field spectroradiometers, or airborne and satellite-borne sensors [8,11,19,20,21,22,23,24].
Winter wheat (Triticum aestivum L.) is one of the most important crops in Japan and has been planted in more than 212,600 ha [25]. At the canopy scale, previous research has reported that the LAI for wheat can be accurately estimated by field spectral measurements [20,26,27]. However, SI-based empirical regression models have often been growth-stage-specific or year-specific [9,21,28,29]. Therefore, quantitative assessments of LAI remain uncertain. For example, Haboudane et al. found useful SIs (e.g., the modified triangular vegetation index, MTVI2) for LAI predictions of wheat, corn, and soybean based on simulated data using radiative transfer models [20]. However, the response of MTVI2 of airborne hyperspectral data with respect to LAI were different at maturity and senescence growth stages compared with that at early and mid-growth stage for wheat because of the dominance of the heads of the wheat plants and the increase in yellow and dry leaves [20,30]. These results suggest that the use of datasets representing actual canopy characteristics is important for development of new SIs.
Previous research demonstrated the suitability of hyperspectral remote sensing for monitoring crop growth [31,32,33]. Particularly for LAI predictions, the saturation problem of NDVI under moderate to high LAI conditions has been extensively investigated by developing new SIs using hyperspectral data [34,35]. The advantage of hyperspectral data is that it can be used for exploring useful SIs via various waveband combinations. However, hyperspectral data are costly to collect. Therefore, investigating the impact of new SI bandwidths on predictive accuracy is important—from an economic standpoint—for designing sensors [36]. In addition, the large numbers of hyperspectral bands are redundant; selection of important bands for crop monitoring is key to maximizing the efficiency of spectral data use [33].
The aim of this study was to identify simple and accurate SIs for LAI assessment of winter wheat. We explored new SIs based on the empirical relationships between the LAIs and SIs of all available two-waveband combinations. This exploration was conducted using field datasets collected at several growth stages of winter wheat. Then, the predictive ability and sensitivity of the newly developed and existing SIs were evaluated. Finally, the impacts of new SI bandwidths were investigated using simulated reflectance.

2. Materials

2.1. Experimental Site

Field experiments were conducted during two growing seasons in 2006 and 2007 at two experimental dried paddy fields of typical size in the Gifu Prefectural Agricultural Technology Center (GPATC) in southern Gifu prefecture, Japan (35°26.6′N, 136°42′E) (Figure 1). The mean annual temperature and annual precipitation at GPATC in 2004 were 17.7 °C and 1903 mm, respectively [37].
Figure 1. Location and photographs of the experimental site. (a) Location of the experimental site; (b) Photograph of the winter wheat on 25 April 2006 (just before heading); and (c) Photograph of the winter wheat on 2 June 2006 (10 days before harvest).
Figure 1. Location and photographs of the experimental site. (a) Location of the experimental site; (b) Photograph of the winter wheat on 25 April 2006 (just before heading); and (c) Photograph of the winter wheat on 2 June 2006 (10 days before harvest).
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Two major wheat cultivars (cv. “Norin 61” and “Iwainodaichi”) were sown at a 30 cm ridge width at an 80 kg·ha−1 seeding rate (standard cultivation practice). We then investigated the “Norin 61” in 2006 and the “Norin 61” and “Iwainodachi” in 2007. The sowing and heading dates are summarized in Table 1. Wheat was harvested between late May and early June in both the 2006 and 2007 seasons. In this region, a rotational cropping system for rice, wheat, and soybean has been widely adopted, and accordingly, wheat was seeded in the experimental fields after the paddy rice had been harvested. Field measurements were performed in different dried paddy fields at GPATC in 2006 and 2007.
Table 1. Sowing and heading dates of winter wheat in the experimental field.
Table 1. Sowing and heading dates of winter wheat in the experimental field.
Sowing Date/Heading DateNorin 61 (2006)Norin 61 (2007)Iwainodaichi (2007)
Sowing date9 November 20057 November 200617 October 2006
27 October 2006
6 November 2006
16 November 2006
Heading date29 April 20069 April 20072 April 2007
Source: [38,39].

2.2. Ground-Based Radiometric Measurements

Canopy reflectance measurements were performed for 10:00–15:00 LST (GMT+9) under clear-sky conditions during the mid (stem extension growth stage) to late (1–2 weeks before harvest) growing stages (Table 2). The canopy spectra were measured using two portable hyperspectral spectroradiometers (ASD FieldSpec Handheld [FSHH] or FieldSpec 3 [FS3]; Analytical Spectral Devices, Boulder, CO, USA). The spectral range was 325–1075 nm for the FSHH and 350–2500 nm for the FS3. For all measurements, the sensor heads were positioned to look vertically downward, centered over the wheat hill, and were kept at a constant 1.3 m above the ground with a commercially available tripod. The radiometers had a 25° field of view, for a viewing area of 58 cm in diameter at the canopy level.
Table 2. Overview of the field spectral measurements.
Table 2. Overview of the field spectral measurements.
DatenMeasured CultivarGrowth StageSpectroradiometer
4 Apr. 200615Norin 61Stem extensionFSHH
7 Apr. 20065Norin 61Stem extensionFSHH
17 Apr. 200615Norin 61Stem extensionFSHH
24 Apr. 200615Norin 61Stem extensionFSHH
21 May 200614Norin 61MaturingFSHH
24 May 20066Norin 61MaturingFSHH
10 Apr. 20079Norin 61HeadingFS3
17 Apr. 20079IwainodaichiAnthesisFSHH
26 Apr. 20076Norin 61 and IwainodaichiGrain fillingFSHH
Using the FSHH, we recorded the upwelling radiance of the wheat canopies, as well as that of the white Spectralon reflectance standard (Labsphere, Inc., North Sutton, NH, USA) at ~15–30 min intervals to determine the canopy reflectance. For the FS3 on 10 April 2007, the upwelling radiance of the white Spectralon reflectance standard was used to calibrate the instrument at 15–30 min intervals, and then the reflectance values of the wheat canopy were recorded. Finally, the spectral data stored in a personal computer were resampled at 1 nm intervals and exported as text files using computer software (RS2 for Windows; Analytical Spectral Devices, Boulder, CO, USA).

2.3. Determination of Field LAI Value

Agronomic survey was carried out on either the same day or the day following the hyperspectral measurements. Above-ground plant samples were obtained by cutting plants at the soil surface level in 50 cm lengths for one hill at each sampling point where the ground-spectral measurements had been made. All plant samples were transported to the laboratory immediately after sampling, where they were then divided into green leaves, yellow leaves, stems, and panicles. The surface area of all the green leaves was determined using a leaf area meter (LI-3100; Li-Cor Inc., Lincoln, NE, USA). The LAI values for a unit ground area were determined by multiplying with a conversion factor (6.67 for 50 cm length samples) in consideration of the ridge width of wheat.

3. Methods

3.1. Contour-Map Approach for Exploring New Useful Spectral Indices

Previous studies used contour maps of the coefficient of determination (R2) obtained by a linear regression analysis between agronomic variables and all possible two-waveband combinations of reflectance values to explore useful SIs [6,26,37,40,41,42,43]. This procedure is inadequate when the relationship between the LAI and the SI is nonlinear, and it cannot run with nonlinear fitting because of the requirement for initial parameter values [26]. Conversely, this contour-map approach has the advantage of providing an efficient selection of the optimal combination and width for use in existing sensors and for designing future sensors [6,41], and its results can easily be compared with those from other studies. Therefore, we used this approach with formulae that take the difference (Difference Spectral Index; DSI), ratio (Ratio Spectral Index; RSI), and normalized difference (Normalized Difference Spectral Index; NDSI) of the reflectance values to generate new useful SIs for predicting the LAI. In this analysis, spectral ranges of <400 nm and >1000 nm were omitted due to noise. The DSI, RSI, and NDSI are defined as follows:
DSI R i R j =  R i R j
RSI R i R j =  R i / R i
NDSI R i R j =   ( R i R j ) / ( R i + R j )
where Ri and Rj are the reflectance values at i and j nm. In this study, both the R2 value (highest-R2 criteria) and the root mean square error (RMSE) (minimum-RMSE criteria) from the leave-one-out cross-validation (LOOCV) procedure were used to explore useful SIs. The RMSE was calculated by the following formula:
RMSE = 1 n i = 1 n ( y i ŷ i ) 2
where yi and ŷi are the observed and predicted value of sample data i, respectively, and n is the number of sample data. To compare the predictive ability of these three new SIs, we selected nine other major and potentially useful SIs for LAI prediction: NDVI, EVI, OSAVI, WDRVI, CIred-edge, CIgreen, MSAVI, MTVI1 and MTVI2 (Table 3).
Table 3. Existing spectral indices (SIs) used for comparison with the DSI, RSI, and NDSI.
Table 3. Existing spectral indices (SIs) used for comparison with the DSI, RSI, and NDSI.
Spectral IndexFormulationReference
NDVI ( R 800 R 670 ) / ( R 800 + R 670 ) [12,20]
EVI 2.5 [ ( R 800 R 670 ) / ( R 800 + 6 R 670 7.5 R 445 ) ] [14]
OSAVI ( R 800 R 670 ) / ( R 800 + R 670 + 0.16 ) [16]
WDRVI (α = 0.1) ( αR 800 R 670 ) / ( αR 800 + R 670 ) [17]
CIred-edge R 800 / R 710 1 [10,18,44]
CIgreen R 800 / R 550 1 [10,18]
MSAVI 0.5 [ 2 R 800 + 1 ( 2 R 800 + 1 ) 2 8 ( R 800 R 670 ) ] [15,20]
MTVI1 1.2 [ 1.2 ( R 800 R 550 ) 2.5 ( R 670 R 550 ) ] [20]
MTVI2 1.5 [ 1.2 ( R 800 R 550 ) 2.5 ( R 670 R 550 ) ] ( 2 R 800 + 1 ) 2 ( 6 R 800 5 R 670 ) 0.5 [20]

3.2. Model Construction and Validation

For each SI, linear and non-linear regression models between SI and LAI were constructed [10], and the two models were compared with the Akaike Information Criterion (AIC; [45]) to select the better model.
Then, a bootstrap procedure similar to that in previous studies [46,47] was performed to evaluate the predictive ability of the SIs. First, the data were divided into a calibration dataset (66.7%) and a validation dataset (33.3%) by stratified random sampling (four stratums; 0 ≤ LAI < 1, 1 ≤ LAI < 2, 2 ≤ LAI < 3, and LAI ≥ 3) because there was less data in the high LAI range. Next, the linear or nonlinear model for each SI was fitted to the calibration dataset, and a set of best-fitted values was determined. Finally, the validation dataset was bootstrapped 1000 times, and for each repetition, the inverted linear or nonlinear model with the best-fitted parameters for each SI was used to predict LAI for the validation subsamples. In this study, same calibration dataset and bootstrapped samples in all SIs were used. To assess the predictive accuracy, the RMSE was used.
For our sensitivity analysis, the noise equivalent (NE) ΔLAI [10,48] was used to represent the sensitivity of the SI in detecting changes in LAI:
NE LAI = RMSE ( SI   v s .  LAI ) / [ d ( SI ) / d ( LAI ) ]
where d(SI)/d(LAI) is the first derivative of the SI with respect to LAI, and the RMSE(SI vs. LAI) is the RMSE of the SI versus LAI relationship. The NE∆LAI has the advantage of allowing a direct comparison of different SIs [49].
All data handling and statistical analyses were performed using the R software (version 2.15.0) [50] and the nonlinear fitting was made using the “nls” function in R.

3.3. Determination of Bandwidths for Broad-Band SI

To investigate the performance of new SI under different bandwidths (full width at half maximum; FWHM), simulated reflectance (Rsim) was used. In accordance with a previous study [36], the Rsim was simulated by Equation (6) with the Gaussian response function (Equation (7)):
R sim = λ s λ e R λ   f ( λ ,   σ ) λ s λ e f ( λ ,   σ )
f ( λ ,   σ ) = exp ( ( λ λ c ) 2 2 σ 2 )
where λ is wavelength in the range of spectral response for simulated bandwidth, λc is the central wavelength, and σ = FWHM 2 2 ln 2 . Different bandwidths in the range of 1–61 nm were simulated to investigate changes in predictive accuracy using the RMSE values calculated by the bootstrap procedure described in the previous section. The bandwidths for which the RMSE was not greater than 5% of the smallest RMSE value (optimal1.05 criterion; e.g., [51]) were adopted as the permissible bandwidths for economical sensor design [36].

4. Results

4.1. Agronomic Data

Summary statistics of the field LAI values are shown in Table 4. The ranges of LAI in the entire dataset were 0.3–5.5. These ranges were sufficiently broad to evaluate the predictive ability of the SIs. Conversely, the ranges of LAI in each dataset, i.e., dataset of the cv. “Norin 61” in 2006 and 2007 and the cv. “Iwainodaichi” in 2007, were insufficient for analysis by year or cultivar. In addition, the 2007 data was collected mainly at the specific growth stage (Table 2). For these reasons, all the data were pooled and then used for statistical analysis.
Table 4. Summary statistics of the field LAI values.
Table 4. Summary statistics of the field LAI values.
VariableStatisticEntire DatasetNorin 61 (2006)Norin 61 (2007)Iwainodaichi (2007)
LAIAverage1.71.42.72.3
Max5.53.05.53.9
Min0.30.31.40.7
Range5.22.74.13.1
n 94701212

4.2. Contour Maps of R2 Value

Figure 2 shows contour maps of the R2 values from the linear regression analysis between LAI and all possible two-waveband combinations of DSI, RSI, and NDSI, respectively. Similar results were also obtained in the RMSE values (data not shown). In DSI (Figure 2a), a higher R2 (>0.75) and smaller RMSE (<0.45) areas were found at the combination of red-edge wavelengths (720–750 nm) and red-edge to NIR wavelengths (740–840 nm). The maximum R2 value (0.860; p < 0.001) and minimum RMSE value (0.345) were obtained by the difference of the reflectance values at 760 nm and 739 nm, i.e., DSIR760–R739. In RSI (Figure 2b), major R2 > 0.75 areas with RMSE < 0.45 included a combination of those around 500 nm and 760 or 990 nm wavelengths, 680 nm with red-edge to NIR wavelengths (735–930 nm, 960–1000 nm), and 730–760 nm wavelengths. The maximum R2 value (0.785; p < 0.001) and minimum RMSE value (0.428) were obtained by RSIR760–R730. In NDSI (Figure 2c), a major R2 > 0.75 area with RMSE < 0.45 was found in region with a combination of around 760 nm and 730 nm wavelengths. The maximum R2 (0.788; p < 0.001) and minimum RMSE (0.425) values were obtained by NDSIR760–R730.
Figure 2. Contour maps of the coefficient of determination (R2) between LAI and (a) DSI; (b) RSI; and (c) NDSI. The crosses (x) indicate the points with the highest R2 values.
Figure 2. Contour maps of the coefficient of determination (R2) between LAI and (a) DSI; (b) RSI; and (c) NDSI. The crosses (x) indicate the points with the highest R2 values.
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Among the three contour maps, RSI showed R2 > 0.70 in a larger number of combinations than the other SIs for estimating LAI. However, we obtained no R2 > 0.80 with RSI. Overall, the DSIR760–R739 yielded the best R2 values with respect to LAI (R2 = 0.860). Moreover, the best waveband-combination for DSI, RSI, and NDSI that were determined by the minimum-RMSE criteria were coincident with the results of the highest-R2 criteria. These results indicate that these three new SIs are useful for LAI prediction; therefore, were further used in this study.

4.3. LAI Prediction and Validation

Figure 3 shows the relationships between LAIs and SIs. NDVI, EVI, OSAVI, MSAVI and MTVI1 each exhibited an asymptotic relationship with LAI. In contrast, the other SIs (i.e., WDRVI, CIred-edge, CIgreen, MTVI2, DSIR760–R739, RSIR760–R730, and NDSIR760–R730) showed a more linear relationship with LAI. In particular, DSIR760–R739 had the most linear relationship with LAI. Based on the AIC, nonlinear model was selected for all SIs except for DSIR760–R739.
Figure 3. Relationships between LAI and (a) NDVI, (b) EVI, (c) OSAVI, (d) WDRVI, (e) CIred-edge, (f) CIgreen, (g) MSAVI, (h) MTV1, (i) MTV2, (j) DSIR760–R739, (k) RSIR760–R730, and (l) NDSIR760–R730. Open circles, filled circles, and crosses indicate data from the cv. “Norin 61” in 2006, cv. “Norin 61” in 2007, and cv. “Iwainodaichi” for 2007, respectively. Solid lines indicate the best-fitted lines.
Figure 3. Relationships between LAI and (a) NDVI, (b) EVI, (c) OSAVI, (d) WDRVI, (e) CIred-edge, (f) CIgreen, (g) MSAVI, (h) MTV1, (i) MTV2, (j) DSIR760–R739, (k) RSIR760–R730, and (l) NDSIR760–R730. Open circles, filled circles, and crosses indicate data from the cv. “Norin 61” in 2006, cv. “Norin 61” in 2007, and cv. “Iwainodaichi” for 2007, respectively. Solid lines indicate the best-fitted lines.
Remotesensing 07 05329 g003
Subsequently, we compared the predictive ability of SIs for assessing LAI by RMSEs obtained via the modified bootstrap procedure. Table 5 shows the point-estimated mean values of RMSE and the 95% confidence intervals (95% CI). Lower RMSE values (RMSE ≤ 0.457) were obtained from the three newly explored SIs (DSIR760–R739, RSIR760–R730, and NDSIR760–R730) than those from previously known SIs (RMSE > 0.457). The linear predictive model based on DSIR760–R739 showed the best performance (RMSE = 0.372; 0.280–0.487, 95% CI).
Table 5. Best-fitted parameters, point-estimated mean values of RMSE, and 95% confidence intervals (CIs) of RMSE for narrow-band and broad-band SIs calculated by a modified bootstrap procedure.
Table 5. Best-fitted parameters, point-estimated mean values of RMSE, and 95% confidence intervals (CIs) of RMSE for narrow-band and broad-band SIs calculated by a modified bootstrap procedure.
Spectral indexModel aBest Fitted ParameterRMSE95% CI
Y0ab
NDVInonlinear0.4310.4990.8110.4660.357–0.546
EVInonlinear0.1830.5890.5740.6560.535–0.847
OSAVInonlinear0.2630.4340.6910.4920.404–0.617
WDRVInonlinear−0.6741.3000.4090.4870.378–0.566
CIred-edgenonlinear0.2423.7700.2520.5160.404–0.605
CIgreennonlinear0.9338.4930.2250.5720.442–0.692
MSAVInonlinear0.1740.6330.4750.5820.469–0.753
MTVI1nonlinear0.1650.5450.5550.8240.622–1.046
MTVI2nonlinear0.1440.7530.4740.5410.434–0.687
DSIR760–R739linear0.0030.017NA0.3720.280–0.487
RSIR760–R730nonlinear1.0710.9940.1650.4570.371–0.551
NDSIR760–R730nonlinear0.0390.3000.2240.4550.368–0.553
Broad-band DSIR760–R739linear0.0060.017NA0.3900.302–0.477
a Inverted regression model, LAI = ln ( 1 / ( 1 SI Y 0 a ) ) b , was used for nonlinear models, while the model, LAI = SI Y 0 a , was used for the linear model in the LAI prediction.
On the basis of the sensitivity analysis, we found large differences in sensitivity when LAI value exceeded 3.0 but only minor differences among SIs when LAI values were below 3.0 (Figure 4). Overall, WDRVI, CIred-edge, CIgreen, DSIR760–R739, RSIR760–R730, and NDSIR760–R730 showed higher sensitivities with respect to LAI at moderate to high LAI values (3.0–5.5). DSIR760–R739, in particular, revealed the highest sensitivity when LAI exceeded 1.5, indicating that it is effective in predicting high LAI values.
On the basis of its high predictive ability, high sensitivity, and high degree of linearity, we consider DSIR760–R739 to be the most useful SI for estimating LAI in our dataset.
Figure 4. Sensitivity (NEΔLAI) of the SIs tested in the study.
Figure 4. Sensitivity (NEΔLAI) of the SIs tested in the study.
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4.4. Impact of Bandwidths on Predictive Accuracy

The impact of bandwidths on predictive accuracy was investigated using DSIR760–R739 with simulated reflectance Rsim. A best predictive accuracy was found to be the narrow-band DSIR760–R739 (i.e., bandwidths are 1 nm for 760 and 739 nm center wavelengths). The predictive accuracy decreased with increases in bandwidths, as shown in Figure 5. The downward trends of predictive accuracy were different in 760 and 739 nm center wavelengths. When the bandwidth at the 760 nm center wavelength was as narrow as 9 nm, the impact of increases in bandwidths was relatively small for the 739 nm center wavelength. Although increases in bandwidths decreased predictive accuracy, the broad-band DSIR760–R739 (e.g., 15 nm for both wavelengths) had higher predictive accuracy (i.e., RMSE < 0.455) than the existing SIs listed in Table 5. The permissible bandwidths determined by the optimal1.05 criterion were found to be 5 nm for 760 and 739 nm center wavelengths (Table 5).
Figure 5. Contour map of RMSE value estimated from predictive model under different bandwidths (1–61 nm) based on the DSIR760–R739.
Figure 5. Contour map of RMSE value estimated from predictive model under different bandwidths (1–61 nm) based on the DSIR760–R739.
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5. Discussion

Using the contour map approach, three SIs (DSIR760–R739, RSIR760–R730, and NDSIR760–R730) were found to be closely related to LAI (Figure 2). In particular, DSIR760–R739 was most significantly related to LAI (R2 = 0.860; RMSE = 0.345). As shown in Figure 2, the wavelengths between 730 and 760 nm showed the most important spectral signatures for LAI assessment. The red-edge-NIR wavelengths are recognized as the most important spectral signatures for the assessment of LAI and canopy chlorophyll content [52,53,54,55]. In general, because of the multiple scattering of light in canopies, the reflectance values of the NIR wavelengths increase as LAI increases [56,57]. First-derivative processing is well known to be effective for enhancing the spectral signature from a target by removing noise. Difference processing of two close wavelengths yields results similar to those of the first-derivative processing. Therefore, we considered the spectral signature of the NIR wavelengths, which are sensitive to changes in LAI, to be enhanced by difference processing. As the canopy reflectance values of red-edge wavelengths are closely related to canopy chlorophyll content [55], and canopy chlorophyll content is strongly related to LAI [58,59], previous studies successfully predicted LAI by using chlorophyll-related SIs such as CIred-edge [10,53]. According to such results, another possible reason for the success of DSIR760R739 for LAI prediction is the high sensitivity of reflectance values at red-edge wavelengths (739 nm in this study) to the canopy chlorophyll content.
The analyses revealed that NDVI, EVI, and OSAVI (normalized difference indexing) are in a nonlinear relationship with LAI (Figure 3a–c) and are less sensitive to changes in LAI at high LAI values (Figure 4). The main reason for the low sensitivity of these SIs could be their normalized-difference processing; this processing of the ρNIR and ρred values makes the SIs insensitive to variations in the ρNIR when ρNIR >> ρred [17]. SIs that take normalized difference processing tend to be insensitive to changes in LAI at high LAI values. In contrast, the WDRVI, a linear transformation of the normalized difference of ρNIR and ρred, is more sensitive to changes in LAI at moderate to high LAI values (Figure 4). Thus, introducing a weight coefficient such as the WDRVI’s “α” is a simple and efficient approach to enhance sensitivity to LAI under moderate to high LAI conditions. Although its sensitivity at high LAI values was slightly inferior to that of DSIR760–R739, the WDRVI is useful for LAI assessment.
We also confirmed the applicability of chlorophyll-related SIs (e.g., CIred-edge and CIgreen) at the leaf scale for LAI assessment (Figure 3e,f and Figure 4). These results are consistent with a previous study [10,53]. When a reflectance value at 760 nm is used as the ρNIR of CIred-edge, the CIred-edge becomes an index similar to RSIR760–R730, which indicates higher predictive accuracy and sensitivity. Therefore, CIred-edge, computed by the red-edge and the shortest part of the NIR wave region, is more useful for LAI assessment than SIs that use the longer part of the NIR wave region. The CIred-edge has been successfully applied to LAI assessment of maize, soybeans [10], and wheat crops [53]. Thus, we believe that the CIred-edge is useful for LAI assessment regardless of crop type. Nevertheless, note that a high spectral resolution was required to observe optimal wavelengths because the optimal bandwidth of this SI was observed to be narrow, as shown in the RSI contour map (Figure 2b).
Among the SIs tested in this study, DSIR760–R739 was the most linearly and closely related SI to LAI and demonstrated the best performance for the ground-based dataset. The advantage demonstrated by DSIR760–R739 was its higher sensitivity in detecting changes in LAI at moderate to high LAI values (3.0–5.5). The ground-based dataset was collected at multiple growth stages during the two-year experiment (Table 3). In spite of the clear differences in ground and canopy conditions, DSIR760–R739 could accurately predict the LAI.
In monitoring the crop nitrogen status of rice and wheat, Wang et al. [36] reported that the relatively wide bandwidths (36, 15, and 21 nm for 924, 703, and 423 nm wavelengths, respectively) in their three broad-band vegetation index are ideal for sensor design. However, our study found rapid decreases in predictive accuracy, especially for the 760 nm center wavelength. The permissible bandwidths for DSIR760–R739 determined by the optimal1.05 criterion were found to be 5 nm at both the 760 nm and 739 nm center wavelengths. The result of this study is consistent with previous studies showing that narrow-band SIs from hyperspectral remote sensing are suitable for monitoring crop growth (e.g., [33,60]). However, even though the bandwidths of DSIR760–R739 are wider (e.g., 15 nm for both wavelengths), the predictive accuracy of the model was still higher than existing SIs (Figure 5). Therefore, like the narrow-band DSIR760–R739, which is suitable for LAI assessment, the broad-band DSIR760–R739 may also prove to be useful for LAI assessment.
Le Maire et al. [61] conducted a systematic study aimed at finding efficient hyperspectral indices for the estimation of forest sun leaf chlorophyll content, sun leaf mass per area, LAI, and leaf canopy biomass using radiative transfer models, canopy reflectance data, and Hyperion images. They found a reliable index that uses difference of reflectance value at 1725 and 970 nm (i.e., R 1725 R 970 ). In the spectral range that we tested, and in the form of normalized difference, they reported that the combination of NIR and blue reflectance is the most useful spectral region for LAI estimation. However, the results of the present study suggested that the combination of NIR and blue reflectance are not useful for LAI assessment of winter wheat. A possible reason for this significant difference is the difference in ranges in LAI values because le Maire et al. estimated LAI in ranges >3.0 in their study. Although this study was site-specific and did not include wavelengths longer than 1000 nm, the ranges of LAI in the datasets were 0.3–5.5, sufficiently broad to evaluate the predictive ability of SIs (Table 4). The DSIR760–R739 developed for the wide ranges of LAI values in this study would therefore be reliable for LAI assessment of wheat crops.
Similar to our study, some previous studies have reported that the first-derivative reflectance of red-edge wavelengths or SIs using red-edge wavelengths and wavelengths at 730–760 nm are closely related to the LAI of paddy rice [40], wheat [26,53], and pasture biomass [35]. Another study suggested that the first-derivative reflectance at 740 nm has high sensitivity to the difference in LAI of paddy rice at the panicle-formation stage [6]. The results of further studies investigating the spectral response of DSIR760–R739 for LAI assessment of multiple crops or vegetation types would be interesting and significant to confirm the robustness of the DSIR760–R739 predictive model because of the differing spectral responses among crops [32,42,43]. For example, an analysis comparing wheat and paddy rice, which are the two major gramineous crops that have relatively similar canopy structures, would be very interesting and required to determine the suitability of DSIR760–R739 for remotely assessing LAI. In addition, since all the ground datasets in our study were pooled and then used for statistical analysis, this study could not clarify the applicability of DSIR760R739 for determining differences in wheat varieties and fertilization. In the future, we will examine other fields with different wheat varieties and fertilizer management techniques by using a larger dataset with a wider range of LAI values.

6. Conclusions

To identify simple and accurate SIs for LAI assessment of winter wheat, this study evaluated the predictive ability and sensitivity of several SIs with respect to LAI assessment. Hyperspectral and ground data collected at the middle and late growing stages were used to identify useful SIs in the present study.
During the study, three new SIs (DSIR760–R739, RSIR760–R730, and NDSIR760–R730) were developed based on the empirical relationships between LAIs and SIs of all available two-waveband combinations from hyperspectral data. Of the 12 SIs that were tested, DSIR760–R739 was the most linearly and closely related to LAI and the most sensitive to changes in LAI at moderate to high LAI conditions. The permissible bandwidths for broad-band DSIR760–R739 were identified as 5 nm at both center wavelengths. The narrow-band and broad-band DSIR760–R739 could be used for LAI assessment with portable spectroradiometers, thus providing useful information for farmers to conduct improved site-specific crop management and sustainable agricultural decisions.
Since all the ground datasets in our study were pooled and then used for statistical analysis, this study could not clarify the applicability of DSIR760R739 for determining differences in wheat varieties and fertilization. In the future, we will examine other fields with different wheat varieties and fertilizer management techniques by using a larger dataset with a wider range of LAI values. In addition, we will also examine the response of the DSIR760–R739 for LAI assessments for multiple crops or vegetation types to confirm the robustness of the predictive model based on DSIR760–R739.

Acknowledgments

All data used in this study were collected when the first author was a graduate student at the River Basin Research Center, Gifu University. We are grateful to the members of this center for their encouragement. Comments from G. Takao, M. Takahashi, T. Nishizono, and T. Takahashi (FFPRI), and from anonymous reviewers served to greatly improve the early drafts of this manuscript. This study was partially supported by a grant from the Ministry of Education, Culture, Sports, Science and Technology, Japan (“Satellite Ecology”, the 21st Century COE Program at Gifu University), and the Forestry and Forest Products Research Institute (FFPRI).

Author Contributions

Shinya Tanaka designed this study, collected field data, and performed all statistical analyses, with the co-authors providing mentorship throughout the study. Shinya Tanaka and Kensuke Kawamura jointly wrote the manuscript. Masayasu Maki collected the reflectance data on 10 April 2007 and helped interpretation of results. Yasunori Muramoto and Kazuaki Yoshida managed wheat growth. Tsuyoshi Akiyama conceived the present study. All authors have read and approved the final manuscript.

Conflicts of Interest

The authors declare no conflict of interest.

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MDPI and ACS Style

Tanaka, S.; Kawamura, K.; Maki, M.; Muramoto, Y.; Yoshida, K.; Akiyama, T. Spectral Index for Quantifying Leaf Area Index of Winter Wheat by Field Hyperspectral Measurements: A Case Study in Gifu Prefecture, Central Japan. Remote Sens. 2015, 7, 5329-5346. https://doi.org/10.3390/rs70505329

AMA Style

Tanaka S, Kawamura K, Maki M, Muramoto Y, Yoshida K, Akiyama T. Spectral Index for Quantifying Leaf Area Index of Winter Wheat by Field Hyperspectral Measurements: A Case Study in Gifu Prefecture, Central Japan. Remote Sensing. 2015; 7(5):5329-5346. https://doi.org/10.3390/rs70505329

Chicago/Turabian Style

Tanaka, Shinya, Kensuke Kawamura, Masayasu Maki, Yasunori Muramoto, Kazuaki Yoshida, and Tsuyoshi Akiyama. 2015. "Spectral Index for Quantifying Leaf Area Index of Winter Wheat by Field Hyperspectral Measurements: A Case Study in Gifu Prefecture, Central Japan" Remote Sensing 7, no. 5: 5329-5346. https://doi.org/10.3390/rs70505329

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