A Multispectral UAV Straw Returning Amount Estimation Method Integrating Novel Spectral Calibration and a Deep Learning Model
Abstract
1. Introduction
2. Materials and Methods
2.1. Overview of the Experimental Area
2.2. Spectral Calibration Framework Based on Ground Reference Sample Area
2.3. UAV Image Acquisition and Ground Data Measurement
2.4. Image Processing and Spectral Indices
2.5. Machine Learning Modeling and Analysis
2.6. Deep Learning Optimization
3. Results
3.1. Straw Weight Distribution
3.2. Feature Correlation Analysis
3.3. Performance of Machine Learning Models
3.3.1. Modeling and Prediction Results in Autumn
3.3.2. Modeling and Prediction Results in Spring
3.3.3. Summary and Comparative Analysis of Evaluation Metrics
3.4. Performance of the Deep Learning Model
3.5. Methodological Framework and Practical Application Scenarios
4. Discussion
4.1. Interpretation of Model Performance and Sources of Uncertainty
4.2. Limitations and Scope of Application
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
- Zhang, G.; Yang, Y.; Liu, Y.; Wang, Z.J. Advances and prospects of soil erosion research in the black soil region of Northeast China. J. Soil Water Conserv. 2022, 36, 1–12. [Google Scholar]
- Xu, X.Z.; Xu, Y.; Chen, S.C.; Xu, S.G.; Zhang, H.J. Soil loss and conservation in the black soil region of Northeast China: A retrospective study. Environ. Sci. Policy 2010, 13, 793–800. [Google Scholar] [CrossRef]
- Zhang, S.; Li, Q.; Zhang, X.; Wei, K.; Chen, L.; Liang, W. Effects of conservation tillage on soil aggregation and aggregate binding agents in black soil of Northeast China. Soil Tillage Res. 2012, 124, 196–202. [Google Scholar] [CrossRef]
- Wang, J.-K.; Xu, X.-R.; Pei, J.-B.; Li, S.-Y. Current situations of black soil quality and facing opportunities and challenges in northeast China. Chin. J. Soil Sci. 2021, 52, 695–701. [Google Scholar]
- Liu, X.; Zhang, X.; Wang, Y.; Sui, Y.; Zhang, S.; Herbert, S.; Ding, G. Soil degradation: A problem threatening the sustainable development of agriculture in Northeast China. Plant Soil Environ. 2010, 56, 87–97. [Google Scholar] [CrossRef]
- Hossain, A.; Krupnik, T.J.; Timsina, J.; Mahboob, M.G.; Chaki, A.K.; Farooq, M.; Bhatt, R.; Fahad, S.; Hasanuzzaman, M. Agricultural land degradation: Processes and problems undermining future food security. In Environment, Climate, Plant and Vegetation Growth; Springer: Berlin/Heidelberg, Germany, 2020; pp. 17–61. [Google Scholar]
- Zhu, F.; Lin, X.; Guan, S.; Dou, S. Deep incorporation of corn straw benefits soil organic carbon and microbial community composition in a black soil of Northeast China. Soil Use Manag. 2022, 38, 1266–1279. [Google Scholar] [CrossRef]
- Wang, Y.-J.; Wang, N.; Huang, G.Q. How do rural households accept straw returning in Northeast China? Resour. Conserv. Recycl. 2022, 182, 106287. [Google Scholar] [CrossRef]
- Li, H.; Dai, M.; Dai, S.; Dong, X. Current status and environment impact of direct straw return in China’s cropland–A review. Ecotoxicol. Environ. Saf. 2018, 159, 293–300. [Google Scholar] [CrossRef]
- Jiang, W.; Yan, T.; Chen, B. Impact of media channels and social interactions on the adoption of straw return by Chinese farmers. Sci. Total Environ. 2021, 756, 144078. [Google Scholar] [CrossRef]
- Hassan, M.A.; Yang, M.; Rasheed, A.; Yang, G.; Reynolds, M.; Xia, X.; Xiao, Y.; He, Z. A rapid monitoring of NDVI across the wheat growth cycle for grain yield prediction using a multi-spectral UAV platform. Plant Sci. 2019, 282, 95–103. [Google Scholar] [CrossRef]
- Alckmin, G.T.; Lucieer, A.; Rawnsley, R.; Kooistra, L. Perennial ryegrass biomass retrieval through multispectral UAV data. Comput. Electron. Agric. 2022, 193, 106574. [Google Scholar] [CrossRef]
- Bai, Y.; Shi, L.; Zha, Y.; Liu, S.; Nie, C.; Xu, H.; Yang, H.; Shao, M.; Yu, X.; Cheng, M.; et al. Estimating leaf age of maize seedlings using UAV-based RGB and multispectral images. Comput. Electron. Agric. 2023, 215, 108349. [Google Scholar] [CrossRef]
- Fu, Z.; Jiang, J.; Gao, Y.; Krienke, B.; Wang, M.; Zhong, K.; Cao, Q.; Tian, Y.; Zhu, Y.; Cao, W. Wheat growth monitoring and yield estimation based on multi-rotor unmanned aerial vehicle. Remote Sens. 2020, 12, 508. [Google Scholar] [CrossRef]
- Su, X.; Wang, J.; Ding, L.; Lu, J.; Zhang, J.; Yao, X.; Cheng, T.; Zhu, Y.; Cao, W.; Tian, Y. Grain yield prediction using multi-temporal UAV-based multispectral vegetation indices and endmember abundance in rice. Field Crop. Res. 2023, 299, 108992. [Google Scholar] [CrossRef]
- Zhang, B.; Gu, L.; Dai, M.; Bao, X.; Sun, Q.; Qu, X.; Zhang, M.; Liu, X.; Fan, C.; Gu, X. Estimation of grain filling rate and thousand-grain weight of winter wheat (Triticum aestivum L.) using UAV-based multispectral images. Eur. J. Agron. 2024, 159, 127258. [Google Scholar] [CrossRef]
- Maimaitijiang, M.; Sagan, V.; Sidike, P.; Daloye, A.M.; Erkbol, H.; Fritschi, F.B. Crop monitoring using satellite/UAV data fusion and machine learning. Remote Sens. 2020, 12, 1357. [Google Scholar] [CrossRef]
- Bian, C.; Shi, H.; Wu, S.; Zhang, K.; Wei, M.; Zhao, Y.; Sun, Y.; Zhuang, H.; Zhang, X.; Chen, S. Prediction of field-scale wheat yield using machine learning method and multi-spectral UAV data. Remote Sens. 2022, 14, 1474. [Google Scholar] [CrossRef]
- Alabi, T.R.; Abebe, A.T.; Chigeza, G.; Fowobaje, K.R. Estimation of soybean grain yield from multispectral high-resolution UAV data with machine learning models in West Africa. Remote Sens. Appl. Soc. Environ. 2022, 27, 100782. [Google Scholar] [CrossRef]
- Sharifi, A. Yield prediction with machine learning algorithms and satellite images. J. Sci. Food Agric. 2021, 101, 891–896. [Google Scholar] [CrossRef] [PubMed]
- Yang, M.-D.; Hsu, Y.-C.; Tseng, W.-C.; Tseng, H.-H.; Lai, M.-H. Precision assessment of rice grain moisture content using UAV multispectral imagery and machine learning. Comput. Electron. Agric. 2025, 230, 109813. [Google Scholar] [CrossRef]
- Kumar, C.; Mubvumba, P.; Huang, Y.; Dhillon, J.; Reddy, K. Multi-stage corn yield prediction using high-resolution UAV multispectral data and machine learning models. Agronomy 2023, 13, 1277. [Google Scholar] [CrossRef]
- Iniyan, S.; Varma, V.A.; Naidu, C.T. Crop yield prediction using machine learning techniques. Adv. Eng. Softw. 2023, 175, 103326. [Google Scholar] [CrossRef]
- Fan, J.; Bai, J.; Li, Z.; Ortiz-Bobea, A.; Gomes, C.P. A GNN-RNN approach for harnessing geospatial and temporal information: Application to crop yield prediction. In Proceedings of the AAAI conference on artificial intelligence, Vancouver, Canada, 22 February–1 March 2022; pp. 11873–11881. [Google Scholar]
- Han, D.; Wang, P.; Tansey, K.; Zhang, Y.; Li, H. A graph-based deep learning framework for field scale wheat yield estimation. Int. J. Appl. Earth Obs. Geoinf. 2024, 129, 103834. [Google Scholar] [CrossRef]
- Chu, Z.; Yu, J. An end-to-end model for rice yield prediction using deep learning fusion. Comput. Electron. Agric. 2020, 174, 105471. [Google Scholar] [CrossRef]
- Nevavuori, P.; Narra, N.; Lipping, T. Crop yield prediction with deep convolutional neural networks. Comput. Electron. Agric. 2019, 163, 104859. [Google Scholar] [CrossRef]
- Cao, J.; Zhang, Z.; Luo, Y.; Zhang, L.; Zhang, J.; Li, Z.; Tao, F. Wheat yield predictions at a county and field scale with deep learning, machine learning, and google earth engine. Eur. J. Agron. 2021, 123, 126204. [Google Scholar] [CrossRef]
- Yang, Q.; Shi, L.; Han, J.; Zha, Y.; Zhu, P. Deep convolutional neural networks for rice grain yield estimation at the ripening stage using UAV-based remotely sensed images. Field Crop. Res. 2019, 235, 142–153. [Google Scholar] [CrossRef]
- Tanabe, R.; Matsui, T.; Tanaka, T.S. Winter wheat yield prediction using convolutional neural networks and UAV-based multispectral imagery. Field Crop. Res. 2023, 291, 108786. [Google Scholar] [CrossRef]
- Sun, B.; Qin, P.; Yue, W.; Guo, Y.; Gao, Z.; Wang, Y.; Li, Y.; Yan, Z. High temporal and spatial estimation of grass yield by applying an improved Carnegie-Ames-Stanford approach (CASA)-NPP transformation method: A case study of Zhenglan Banner, Inner Mongolia, China. Comput. Electron. Agric. 2024, 224, 109134. [Google Scholar] [CrossRef]
- Zhou, Y.; Liu, T.; Batelaan, O.; Duan, L.; Wang, Y.; Li, X.; Li, M. Spatiotemporal fusion of multi-source remote sensing data for estimating aboveground biomass of grassland. Ecol. Indic. 2023, 146, 109892. [Google Scholar] [CrossRef]
- Patel, M.K.; Padarian, J.; Western, A.W.; Fitzgerald, G.J.; McBratney, A.B.; Perry, E.M.; Suter, H.; Ryu, D. Retrieving canopy nitrogen concentration and aboveground biomass with deep learning for ryegrass and barley: Comparing models and determining waveband contribution. Field Crop. Res. 2023, 294, 108859. [Google Scholar] [CrossRef]
- Muro, J.; Linstädter, A.; Magdon, P.; Wöllauer, S.; Männer, F.A.; Schwarz, L.-M.; Ghazaryan, G.; Schultz, J.; Malenovský, Z.; Dubovyk, O. Predicting plant biomass and species richness in temperate grasslands across regions, time, and land management with remote sensing and deep learning. Remote Sens. Environ. 2022, 282, 113262. [Google Scholar] [CrossRef]
- Togeiro de Alckmin, G.; Kooistra, L.; Rawnsley, R.; De Bruin, S.; Lucieer, A. Retrieval of hyperspectral information from multispectral data for perennial ryegrass biomass estimation. Sensors 2020, 20, 7192. [Google Scholar] [CrossRef] [PubMed]
- Liu, W.; Liu, Y.; Liu, G.; Xie, R.; Ming, B.; Yang, Y.; Guo, X.; Wang, K.; Xue, J.; Wang, Y.; et al. Estimation of maize straw production and appropriate straw return rate in China. Agric. Ecosyst. Environ. 2022, 328, 107865. [Google Scholar] [CrossRef]
- Bi, Y.; Gao, C.; Wang, Y.; Li, B. Estimation of straw resources in China. Trans. Chin. Soc. Agric. Eng. 2009, 25, 211–217. [Google Scholar]
- Zhou, D.; Li, M.; Li, Y.; Qi, J.; Liu, K.; Cong, X.; Tian, X. Detection of ground straw coverage under conservation tillage based on deep learning. Comput. Electron. Agric. 2020, 172, 105369. [Google Scholar] [CrossRef]
- Wang, L.; Xu, L.; Wei, S.; Wei, C.; Zhao, B.; Yuan, Y.; Fan, J. Straw coverage detection method based on sauvola and otsu segmentation algorithm. Agric. Eng. 2017, 7, 29–35. [Google Scholar]
- Wang, F.; Lv, C.; Jiang, H.; Pan, Y.; Guo, P.; Li, F.; Zhou, L. Efficient detection of corn straw coverage in complex agricultural scenarios. Comput. Electron. Agric. 2025, 235, 110338. [Google Scholar] [CrossRef]
- An, X.; Wang, P.; Luo, C.; Meng, Z.; Chen, L.; Zhang, A. Corn straw coverage calculation algorithm based on K-means clustering and zoning optimization method. Nongye Jixie Xuebao/Trans. Chin. Soc. Agric. Mach. 2021, 52. [Google Scholar] [CrossRef]
- Zhou, J.; Gu, X.; Gong, H.; Yang, X.; Sun, Q.; Guo, L.; Pan, Y. Intelligent classification of maize straw types from UAV remote sensing images using DenseNet201 deep transfer learning algorithm. Ecol. Indic. 2024, 166, 112331. [Google Scholar] [CrossRef]
- Zhang, Y.; Du, J. Improving maize residue cover estimation with the combined use of optical and SAR remote sensing images. Int. Soil Water Conserv. Res. 2024, 12, 578–588. [Google Scholar] [CrossRef]
- Liu, Y.; Sun, Y.; Wang, Y.; Wang, J.; Gao, X.; Wang, L.; Liu, M. Model Optimization and Application of Straw Mulch Quantity Using Remote Sensing. Agronomy 2024, 14, 2352. [Google Scholar] [CrossRef]
- Wang, Y.; Gao, X.; Sun, Y.; Liu, Y.; Wang, L.; Liu, M. Sh-DeepLabv3+: An Improved Semantic Segmentation Lightweight Network for Corn Straw Cover Form Plot Classification. Agriculture 2024, 14, 628. [Google Scholar] [CrossRef]
- Wu, Z.; Wang, B.; Feng, X.; Liang, J.; Zhong, Y.; Yan, Q.; Wu, Z. Mapping Soil Organic Carbon in High-standard Farmland Construction Areas Using Machine Learning Algorithms: Threshold and Interaction Effects of Environmental Variables. Land Degrad. Dev. 2025, 36, 4770–4782. [Google Scholar] [CrossRef]
- Qu, Y.; Pan, C.; Guo, H. Factors affecting the promotion of conservation tillage in black soil—The case of Northeast China. Sustainability 2021, 13, 9563. [Google Scholar] [CrossRef]
- Zhu, H.; Huang, Y.; An, Z.; Zhang, H.; Han, Y.; Zhao, Z.; Li, F.; Zhang, C.; Hou, C. Assessing radiometric calibration methods for multispectral UAV imagery and the influence of illumination, flight altitude and flight time on reflectance, vegetation index and inversion of winter wheat AGB and LAI. Comput. Electron. Agric. 2024, 219, 108821. [Google Scholar] [CrossRef]
- Csillik, O.; Belgiu, M.; Asner, G.P.; Kelly, M. Object-based time-constrained dynamic time warping classification of crops using Sentinel-2. Remote Sens. 2019, 11, 1257. [Google Scholar] [CrossRef]
- Reynolds, M.R.; Amin, R.W.; Arnold, J.C.; Nachlas, J.A. Charts with variable sampling intervals. Technometrics 1988, 30, 181–192. [Google Scholar] [CrossRef]
- Qanbari, S.; Strom, T.M.; Haberer, G.; Weigend, S.; Gheyas, A.A.; Turner, F.; Burt, D.W.; Preisinger, R.; Gianola, D.; Simianer, H. A high resolution genome-wide scan for significant selective sweeps: An application to pooled sequence data in laying chickens. PLoS ONE 2012, 7, e49525. [Google Scholar] [CrossRef]
- Luscier, J.D.; Thompson, W.L.; Wilson, J.M.; Gorham, B.E.; Dragut, L.D. Using digital photographs and object-based image analysis to estimate percent ground cover in vegetation plots. Front. Ecol. Environ. 2006, 4, 408–413. [Google Scholar] [CrossRef]
- Pettorelli, N.; Vik, J.O.; Mysterud, A.; Gaillard, J.-M.; Tucker, C.J.; Stenseth, N.C. Using the satellite-derived NDVI to assess ecological responses to environmental change. Trends Ecol. Evol. 2005, 20, 503–510. [Google Scholar] [CrossRef] [PubMed]
- Boiarskii, B.; Hasegawa, H. Comparison of NDVI and NDRE indices to detect differences in vegetation and chlorophyll content. J. Mech. Contin. Math. Sci. 2019, 4, 20–29. [Google Scholar] [CrossRef]
- Naji, T.A. Study of vegetation cover distribution using DVI, PVI, WDVI indices with 2D-space plot. J. Phys. Conf. Ser. 2018, 1003, 012083. [Google Scholar] [CrossRef]
- Morel, A.; Gentili, B. A simple band ratio technique to quantify the colored dissolved and detrital organic material from ocean color remotely sensed data. Remote Sens. Environ. 2009, 113, 998–1011. [Google Scholar] [CrossRef]
- Verstraete, M.M.; Pinty, B. Designing optimal spectral indexes for remote sensing applications. IEEE Trans. Geosci. Remote Sens. 2002, 34, 1254–1265. [Google Scholar] [CrossRef]
- Shi, M.; Ma, Z.; Tian, Y.; Zhang, X.; Shan, H. Effects of maize straw treated with various levels of CaO and moisture on composition, structure, and digestion by in vitro gas production. Anim. Biosci. 2021, 34, 1940. [Google Scholar] [CrossRef]
- Pauly, M.; Keegstra, K. Cell-wall carbohydrates and their modification as a resource for biofuels. Plant J. 2008, 54, 559–568. [Google Scholar] [CrossRef]
- Asner, G.P. Biophysical and biochemical sources of variability in canopy reflectance. Remote Sens. Environ. 1998, 64, 234–253. [Google Scholar] [CrossRef]
- Curran, P.J. Remote sensing of foliar chemistry. Remote Sens. Environ. 1989, 30, 271–278. [Google Scholar] [CrossRef]
- Gitelson, A.; Merzlyak, M.N. Spectral reflectance changes associated with autumn senescence of Aesculus hippocastanum L. and Acer platanoides L. leaves. Spectral features and relation to chlorophyll estimation. J. Plant Physiol. 1994, 143, 286–292. [Google Scholar] [CrossRef]
- Josse, J.; Chen, J.M.; Prost, N.; Varoquaux, G.; Scornet, E. On the consistency of supervised learning with missing values. Stat. Pap. 2024, 65, 5447–5479. [Google Scholar] [CrossRef]
- Ma’arif, A.; Rahmaniar, W.; Fathurrahman, H.I.K.; Frisky, A.Z.K. Understanding of Convolutional Neural Network (CNN): A Review. Int. J. Robot. Control. Syst. 2022, 2, 739–748. [Google Scholar] [CrossRef]
- Chen, L.; Gu, L.; Li, L.; Yan, C.; Fu, Y. Frequency Dynamic Convolution for Dense Image Prediction. In Proceedings of the Computer Vision and Pattern Recognition Conference, Seattle, WA, USA, 16–21 June 2025; pp. 30178–30188. [Google Scholar]
- Feng, K.; Zeng, H.; Zhao, Y.; Kong, S.G.; Bu, Y. Unsupervised spectral demosaicing with lightweight spectral attention networks. IEEE Trans. Image Process. 2024, 33, 1655–1669. [Google Scholar] [CrossRef]
- Fernandez, A. TeLU Activation Function for Fast and Stable Deep Learning. Master’s thesis, University of South Florida, Tampa, FL, USA, 2024. [Google Scholar]
- Srivastava, N.; Hinton, G.; Krizhevsky, A.; Sutskever, I.; Salakhutdinov, R. Dropout: A simple way to prevent neural networks from overfitting. J. Mach. Learn. Res. 2014, 15, 1929–1958. [Google Scholar]
- Semádeni-Davies, A. Monthly snowmelt modelling for large-scale climate change studies using the degree day approach. Ecol. Model. 1997, 101, 303–323. [Google Scholar] [CrossRef]
- Benesty, J.; Chen, J.; Huang, Y. On the importance of the Pearson correlation coefficient in noise reduction. IEEE Trans. Audio Speech Lang. Process. 2008, 16, 757–765. [Google Scholar] [CrossRef]
- Huang, S.; Tang, L.; Hupy, J.P.; Wang, Y.; Shao, G. A commentary review on the use of normalized difference vegetation index (NDVI) in the era of popular remote sensing. J. For. Res. 2021, 32, 1–6. [Google Scholar] [CrossRef]
- Ge, X.; Ding, J.; Jin, X.; Wang, J.; Chen, X.; Li, X.; Liu, J.; Xie, B. Estimating agricultural soil moisture content through UAV-based hyperspectral images in the arid region. Remote Sens. 2021, 13, 1562. [Google Scholar] [CrossRef]
- Keenan, T.F.; Richardson, A.D. The timing of autumn senescence is affected by the timing of spring phenology: Implications for predictive models. Glob. Change Biol. 2015, 21, 2634–2641. [Google Scholar] [CrossRef]
- Zhu, H.; Lin, C.; Liu, G.; Wang, D.; Qin, S.; Li, A.; Xu, J.-L.; He, Y. Intelligent agriculture: Deep learning in UAV-based remote sensing imagery for crop diseases and pests detection. Front. Plant Sci. 2024, 15, 1435016. [Google Scholar] [CrossRef]
- Song, B.; Min, S.; Yang, H.; Wu, Y.; Wang, B. A Fourier frequency domain convolutional neural network for remote sensing crop classification considering global consistency and edge specificity. Remote Sens. 2023, 15, 4788. [Google Scholar] [CrossRef]
- Dangi, S.; Mullapudi, S.K.; Raghaw, C.S.; Dar, S.S.; Rehman, M.Z.U.; Kumar, N. A multi-temporal multi-spectral attention-augmented deep convolution neural network with contrastive learning for crop yield prediction. Comput. Electron. Agric. 2025, 239, 110895. [Google Scholar] [CrossRef]
- Sullivan, D.; Shaw, J.; Mask, P.; Rickman, D.; Guertal, E.; Luvall, J.; Wersinger, J. Evaluation of multispectral data for rapid assessment of wheat straw residue cover. Soil Sci. Soc. Am. J. 2004, 68, 2007–2013. [Google Scholar] [CrossRef]
- Joshi, A.; Pradhan, B.; Gite, S.; Chakraborty, S. Remote-sensing data and deep-learning techniques in crop mapping and yield prediction: A systematic review. Remote Sens. 2023, 15, 2014. [Google Scholar] [CrossRef]
- Joshi, A.; Pradhan, B.; Chakraborty, S.; Varatharajoo, R.; Gite, S.; Alamri, A. Deep-Transfer-Learning Strategies for Crop Yield Prediction Using Climate Records and Satellite Image Time-Series Data. Remote Sens. 2024, 16, 4804. [Google Scholar] [CrossRef]
- Osco, L.P.; Nogueira, K.; Marques Ramos, A.P.; Faita Pinheiro, M.M.; Furuya, D.E.G.; Gonçalves, W.N.; de Castro Jorge, L.A.; Marcato Junior, J.; dos Santos, J.A. Semantic segmentation of citrus-orchard using deep neural networks and multispectral UAV-based imagery. Precis. Agric. 2021, 22, 1171–1188. [Google Scholar] [CrossRef]
- Xu, J.; Zhu, Y.; Zhong, R.; Lin, Z.; Xu, J.; Jiang, H.; Huang, J.; Li, H.; Lin, T. DeepCropMapping: A multi-temporal deep learning approach with improved spatial generalizability for dynamic corn and soybean mapping. Remote Sens. Environ. 2020, 247, 111946. [Google Scholar] [CrossRef]
- Lian, Z.; Zhan, Y.; Zhang, W.; Wang, Z.; Liu, W.; Huang, X. Recent Advances in Deep Learning-Based Spatiotemporal Fusion Methods for Remote Sensing Images. Sensors 2025, 25, 1093. [Google Scholar] [CrossRef]
- Azimi, F.; Jung, J. Automated Crop Residue Estimation via Unsupervised Techniques Using High-Resolution UAS RGB Imagery. Remote Sens. 2024, 16, 1135. [Google Scholar] [CrossRef]
- Yang, L.; Lu, B.; Schmidt, M.; Natesan, S.; McCaffrey, D. Applications of remote sensing for crop residue cover mapping. Smart Agric. Technol. 2025, 100880. [Google Scholar] [CrossRef]
- Radočaj, D.; Radočaj, P.; Plaščak, I.; Jurišić, M. Evolution of Deep Learning Approaches in UAV-Based Crop Leaf Disease Detection: A Web of Science Review. Appl. Sci. 2025, 15, 10778. [Google Scholar] [CrossRef]
- Zhang, P.; Sun, X.; Zhang, D.; Yang, Y.; Wang, Z. Lightweight deep learning models for high-precision rice seedling segmentation from UAV-based multispectral images. Plant Phenomics 2023, 5, 0123. [Google Scholar] [CrossRef] [PubMed]














| Bands Name | Central Wavelength (nm) | Bandwidth (nm) | Band Introduction | Main Applications in Experiments |
|---|---|---|---|---|
| Blue (B) | 450 | 30 | Located at the short-wavelength end of the visible light spectrum, it exhibits significant absorption of chlorophyll a and b. | Distinguishing between living vegetation and straw or stubble; Responding to the cellulose content in straw. |
| Green (G) | 555 | 27 | Chlorophyll absorbs this wavelength weakly; healthy vegetation reflects this wavelength highly. | Differentiate between healthy crops, senescent crops, and straw; used for determining farmland surface mulch types. |
| Red (R) | 660 | 22 | The region with strong chlorophyll absorption is extremely sensitive to changes in biomass and leaf area index. | The core band of classic vegetation indices such as NDVI, crop growth status; changes in aboveground biomass. |
| Red edge (RE) | 720 | 10 | Located in the transition region from red to near-infrared light, this is the area where the vegetation spectral curve changes most dramatically. | It can effectively distinguish between physiologically active vegetation and inactive straw residues. |
| Near-infrared spectrum (NIR) | 840 | 30 | Dominated by the internal structure of plant leaves (cell walls, air cells), vegetation typically has high reflectivity in this wavelength range. | High response to non-photosynthetic plant tissues (straw). |
| RGB | - | 2048 × 1536 (resolution) | Used for location positioning and image information retrieval. | Assist in spatial positioning and registration. |
| Data | Weather | Flight Data | Sample Size |
|---|---|---|---|
| 13 June 2024 | Partly cloudy, 21 °C, west wind | Flight speed: 3.6 m/s, altitude: 40 m, side overlap: 70%, flight overlap: 70% | 32 |
| 1 November 2024 | Sunny, 13 °C, west wind | Flight speed: 3.6 m/s, altitude: 40 m, side overlap: 70%, flight overlap: 70% | 64 |
| 2 November 2024 | Partly cloudy, 7 °C, east wind | Flight speed: 3.6 m/s, altitude: 40 m, side overlap: 70%, flight overlap: 70% | 64 |
| 13 November 2024 | Sunny, 7–9 °C, southeast wind | Flight speed: 3.6 m/s, altitude: 40 m, side overlap: 70%, flight overlap: 70% | 64 |
| 8 April 2025 | Sunny, 14 °C, northwest wind | Flight speed: 3.6 m/s, altitude: 40 m, side overlap: 70%, flight overlap: 70% | 32 |
| 10 April 2025 | Partly cloudy, 16 °C, west wind | Flight speed: 3.6 m/s, altitude: 40 m, side overlap: 70%, flight overlap: 70% | 32 |
| Spectral Index | Abbreviation | Formula | Common Uses | Reference |
|---|---|---|---|---|
| Normalized difference vegetation index | NDVI | (NIR − R)/(NIR + R) | The most commonly used remote sensing vegetation index for assessing vegetation activity and biomass levels. | [53] |
| Normalized difference red edge index | NDRE | (NIR − RE)/(NIR + RE) | Sensitive to medium- and low-density vegetation and can be used to estimate the early growth status of crops. | [54] |
| Difference vegetation index | DVI | NIR-R | Simply reflects the differences in the intensity of vegetation reflection, but is prone to interference from light and background. | [55] |
| Simple ratio using blue band | SRblue | RE/B | Used to distinguish between living vegetation and non-photosynthetic vegetation, such as straw, dead branches, fallen leaves, etc. | [56] |
| Red-edge simple ratio index | SRRE | RE/NIR | Sensitive to plant water content, stress responses and structural changes. | [57] |
| Straw index | SI | (NIR − G)/(NIR + G + R) | Proposed custom index to enhance the spectral response characteristics of the straw. | [57] |
| Model Type | Model Name | Main Features and Functions |
|---|---|---|
| Linear model | Multiple linear regression | Establishes a baseline linear relationship between spectral characteristics and the weight of the straw, which is used to verify the degree of linear fitting between the variables. |
| Regularization model | Ridge regression, lasso regression, ElasticNet regression | By using L1/L2 regularization terms, overfitting is suppressed, model stability is enhanced, and feature selection is achieved. |
| Nonlinear model | Support vector regression | A nonlinear mapping is established using the radial basis function (RBF), which is suitable for modeling complex relationships with small samples. |
| Integrating model | Decision tree, random forest, extreme gradient boosting, LightGBM | Through the multi-tree structure, feature interaction modeling is achieved, enhancing the nonlinear fitting and generalization ability of the model. |
| Feature optimization model | Stepwise regression | By gradually selecting key characteristic variables, the interpretability of the model can be enhanced. |
| Evaluation Indicators | Abbreviation | Effect | Computational Formula |
|---|---|---|---|
| Determination coefficient | (R2) | Measuring the explanatory power of the model for the observed values | |
| Error of mean square | (MSE) | The square average of the errors between the predicted values and the actual values | |
| Mean absolute error | (MAE) | The average of the absolute values of the differences between the predicted values and the actual values | |
| Mean absolute percentage error | (MAPE) | Used to measure the relative error ratio, suitable for multi-scale comparison |
| Season | Ground Sampling Plots | Training | Validation | Testing |
|---|---|---|---|---|
| Autumn | 192 | 70% | 20% | 10% |
| Spring | 64 | 70% | 20% | 10% |
| Name of Parameter | Parameter Setting |
|---|---|
| Optimizer | Adam (learning rate = 1 × 10−4, β1 = 0.9, β2 = 0.999) |
| Loss function | data |
| Batch size | 16 |
| Number of training rounds | 200 |
| Dropout | 0.3 |
| Weight initialization method | Normal |
| Data enhancement | Random rotation (±15°), horizontal flip, brightness perturbation (±10%) |
| Seasons and Algorithms | R2 | MSE | MAE | Anticipate the Effect |
|---|---|---|---|---|
| Autumn MLP | 0.78 | 7610 | 58 | Good |
| Autumn SVR | 0.83 | 5993 | 53 | Excellent |
| Autumn XGBoost | 0.80 | 7133 | 55 | Excellent |
| Autumn RF | 0.79 | 7294 | 51 | Good |
| Spring MLP | 0.84 | 3651 | 49 | Good |
| Spring ridge | 0.85 | 3524 | 49 | Excellent |
| Spring RF | 0.83 | 3912 | 48 | Excellent |
| Spring lasso | 0.85 | 3572 | 49 | Good |
| Model Name | Autumn R2 | MSE | MAE | Spring R2 | MSE | MAE |
|---|---|---|---|---|---|---|
| RF | 0.79 | 7294 | 51 | 0.83 | 3912 | 48 |
| XGBoost | 0.80 | 7133 | 55 | 0.82 | 4153 | 52 |
| CNN | 0.81 | 6872 | 50 | 0.74 | 6041 | 54 |
| ResNet-18 | 0.83 | 6523 | 48 | 0.77 | 5573 | 50 |
| CNN-Straw | 0.85 | 5892 | 43 | 0.80 | 5212 | 46 |
| Model Configuration | R2 | RMSE | MAE |
|---|---|---|---|
| No FDConv module | 0.80 | 69.8 | 54 |
| No LSA module | 0.81 | 67.5 | 50 |
| No PTeLU module | 0.82 | 65.3 | 48 |
| CNN-Straw | 0.85 | 58.9 | 43 |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2026 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.
Share and Cite
Liu, Y.; Tong, X.; Zhang, J.; Zhao, X.; Chen, J.; Du, Y.; Li, F.; Wang, Y.; Wang, J.; Wang, L.; et al. A Multispectral UAV Straw Returning Amount Estimation Method Integrating Novel Spectral Calibration and a Deep Learning Model. Agronomy 2026, 16, 416. https://doi.org/10.3390/agronomy16040416
Liu Y, Tong X, Zhang J, Zhao X, Chen J, Du Y, Li F, Wang Y, Wang J, Wang L, et al. A Multispectral UAV Straw Returning Amount Estimation Method Integrating Novel Spectral Calibration and a Deep Learning Model. Agronomy. 2026; 16(4):416. https://doi.org/10.3390/agronomy16040416
Chicago/Turabian StyleLiu, Yuanyuan, Xin Tong, Jiaxin Zhang, Xuan Zhao, Junhui Chen, Yuxin Du, Fuxuan Li, Yueyong Wang, Jun Wang, Libin Wang, and et al. 2026. "A Multispectral UAV Straw Returning Amount Estimation Method Integrating Novel Spectral Calibration and a Deep Learning Model" Agronomy 16, no. 4: 416. https://doi.org/10.3390/agronomy16040416
APA StyleLiu, Y., Tong, X., Zhang, J., Zhao, X., Chen, J., Du, Y., Li, F., Wang, Y., Wang, J., Wang, L., Yu, M., Sui, P., & Liu, X. (2026). A Multispectral UAV Straw Returning Amount Estimation Method Integrating Novel Spectral Calibration and a Deep Learning Model. Agronomy, 16(4), 416. https://doi.org/10.3390/agronomy16040416

