Estimation of Winter Wheat Aboveground Biomass Across Multiple Growth Stages Using UAV Multispectral and RGB Imagery: Feature Selection and Fusion Approaches
Abstract
1. Introduction
2. Materials and Methods
2.1. Experimental Design
2.2. Overview of the Experimental Site
2.3. UAV Data Collection and Preprocessing
2.4. Wheat AGB Data Collection
2.5. Feature Extraction from UAV Multispectral and RGB Imagery
2.5.1. Extraction of Multispectral and Colour Vegetation Index Features
2.5.2. Extraction of Canopy Structure Features
2.6. Feature Optimisation Framework for Winter Wheat AGB Estimation
2.6.1. Multi-Source Feature Optimisation and Selection Based on RFE and EN
2.6.2. Feature Fusion Strategy Based on Hierarchical Progression and Cross-Strategy Combinations
2.7. Model Establishment and Evaluation
3. Results
3.1. Growth-Stage Differences and Treatment Responses of the Winter Wheat AGB Dataset
3.2. Screening Results of SV, CV, and Combined Features Sensitive to Winter Wheat AGB at Different Growth Stages
3.3. Comparison of Winter Wheat AGB Estimation Models Under Different Feature Optimisation Levels
3.3.1. Effects of Single-Source Feature Selection Strategies on Winter Wheat AGB Estimation Models at Different Growth Stages
3.3.2. Effects of Introducing SF on AGB Estimation by Single-Source Selected Models
3.3.3. Synergistic Effects of SV–CV Fusion and SF Extension on Winter Wheat AGB Estimation Models
3.3.4. Effects of Cross-Strategy Deep Fusion on AGB Estimation Models at Different Growth Stages of Winter Wheat
3.3.5. Comprehensive Comparison of the Optimal AGB Estimation Models for the Four Growth Stages of Winter Wheat Under Different Optimisation Levels
4. Discussion
4.1. Temporal Accumulation Characteristics of Winter Wheat AGB and Growth-Stage Differences in Its Remote Sensing Response
4.2. Stage-Specific Effects of Feature Selection Strategies on Winter Wheat AGB Estimation Performance
4.3. Effects of Multi-Source Feature Fusion and Selection Synergy on the Accuracy of Winter Wheat AGB Estimation
4.4. Limitations and Future Perspectives
5. Conclusions
6. Patents
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Treatment | Basal Application | Topdressing | ||||
|---|---|---|---|---|---|---|
| Compound Fertiliser | Urea | Calcium Superphosphate | Potassium Sulfate | Organic Fertiliser | Urea | |
| T0 | 600 | 300 | 250 | 120 | 0 | 196 |
| T1 | 540 | 270 | 250 | 120 | 3000 | 196 |
| T2 | 480 | 240 | 250 | 120 | 6000 | 196 |
| T3 | 420 | 210 | 250 | 120 | 9000 | 196 |
| Year | Organic Matter (g kg−1) | Available Nitrogen (mg kg−1) | Available Phosphorus (mg kg−1) | Available Potassium (mg kg−1) |
|---|---|---|---|---|
| 2022–2023 | 20.71 | 110.74 | 25.25 | 115.34 |
| 2023–2024 | 19.65 | 106.87 | 27.45 | 117.65 |
| Component | Variable | Equation | References |
|---|---|---|---|
| Spectral VIs | NDVI | [36] | |
| GNDVI | [37] | ||
| NDRE | [38] | ||
| CI | [39] | ||
| OSAVI | [40] | ||
| RVI | [41] | ||
| SR Red Edge | [42] | ||
| MSR | [43] | ||
| RTVI core | [44] | ||
| TCARI | [45] | ||
| SAVI | [46] | ||
| MCARI | [47] | ||
| REGDVI | [48] | ||
| REOSAVI | [49] | ||
| MTCI | [50] | ||
| NLI | [51] | ||
| GRVI | [52] | ||
| Colour VIs | ExG | [53] | |
| ExR | [54] | ||
| ExGR | [55] | ||
| VARI | [56] | ||
| NGRDI | [57] | ||
| GLI | [58] | ||
| TGI | [59] | ||
| MGRVI | [57] | ||
| RGRI | [60] | ||
| RGBVI | [61] |
| Stage | Dataset | N | Min | Mean | Max | SD |
|---|---|---|---|---|---|---|
| Jointing | Calibration | 36 | 0.77 | 1.83 | 3.47 | 0.63 |
| Validation | 36 | 0.42 | 1.95 | 4.35 | 0.88 | |
| Booting | Calibration | 36 | 3.08 | 7.78 | 11.88 | 2.84 |
| Validation | 36 | 3.33 | 7.43 | 11.24 | 2.63 | |
| Flowering | Calibration | 36 | 3.69 | 9.07 | 17.85 | 3.54 |
| Validation | 36 | 3.69 | 8.96 | 14.72 | 3.25 | |
| Grain filling | Calibration | 36 | 4.26 | 13.63 | 24.96 | 5.98 |
| Validation | 36 | 5.61 | 12.93 | 22.19 | 4.71 |
| Stage | Feature Set | N | Selected Feature |
|---|---|---|---|
| Jointing | R-SV | 4 | LCI, SR Red Edge, TCARI, REGDVI |
| R-CV | 6 | ExG, ExR, ExGR, GLI, TGI, RGBVI | |
| E-SV | 5 | GNDVI, TCARI, MCARI, INT, MTCI | |
| E-CV | 4 | ExR, ExGR, NGRDI, RGBVI | |
| R-SVCV | 10 | NDVI, NDRE, OSAVI, RTVIcore, REOSAVI, MTCI, GRVI, ExGR, NGRDI, MGRVI | |
| E-SVCV | 12 | NDRE, OSAVI, RVI, MSR, RTVIcore, SAVI, ExG, ExGR, VARI, NGRDI, MGRVI, RGRI | |
| Booting | R-SV | 6 | GNDVI, TCARI, MCARI, INT, MTCI, GRVI |
| R-CV | 9 | ExG, ExR, ExGR, VARI, NGRDI, GLI, TGI, MGRVI, RGBVI | |
| E-SV | 15 | NDVI, GNDVI, NDRE, LCI, OSAVI, RVI, SRRedEdge, TCARI, SAVI, MCARI, INT, REOSAVI, MTCI, NLI, GRVI | |
| E-CV | 8 | ExR, ExGR, VARI, NGRDI, GLI, MGRVI, RGRI, RGBVI | |
| R-SVCV | 9 | GNDVI, CI, RVI, MCARI, INT, REOSAVI, MTCI, GRVI, ExR | |
| E-SVCV | 11 | GNDVI, CI, OSAVI, RVI, SRRedEdge, SAVI, MTCI, NLI, GVI, MGRVI, RGBVI | |
| Flowering | R-SV | 5 | GNDVI, REOSAVI, MTCI, GRVI, REGDVI |
| R-CV | 8 | ExG, ExR, ExGR, VARI, NGRDI, GLI, TGI, MGRVI | |
| E-SV | 13 | GNDVI, NDRE, CI, OSAVI, SRRedEdge, TCARI, SAVI, MCARI, INT, REOSAVI, MTCI, NLI, GRVI | |
| E-CV | 9 | ExG, ExR, ExGR, VARI, NGRDI, GLI, TGI, RGRI, RGBVI | |
| R-SVCV | 5 | MCARI, NLI, ExR, GLI, RGRI | |
| E-SVCV | 16 | GNDVI, TCARI, MCARI, INT, MTCI, NLI, GRVI, ExR, ExGR, VARI, NGRDI, GLI, TGI, MGRVI, RGRI, RGBVI | |
| Grain filling | R-SV | 8 | GNDVI, REOSAVI, MTCI, GRVI, REGDVI |
| R-CV | 8 | ExG, ExR, ExGR, VARI, NGRDI, GLI, TGI, RGRI | |
| E-SV | 11 | CI, RVI, SRRedEdge, MSR, TCARI, SAVI, MCARI, REGDVI, REOSAVI, MTCI, GRVI | |
| E-CV | 6 | ExR, ExGR, VARI, NGRDI, MGRVI, RGRI | |
| R-SVCV | 12 | NDVI, GNDVI, NDRE, CI, OSAVI, RVI, SRRedEdge, SAVI, MCARI, REGDVI, MTCI, MGRVI | |
| E-SVCV | 9 | NDVI, NDRE, CI, RVI, SRRedEdge, NLI, GRVI, TGI, MGRVI |
| Growth Stage | Feature Set | Algorithm | Calibration | Validation | ||||
|---|---|---|---|---|---|---|---|---|
| R2 | RMSE | RRMSE (%) | R2 | RMSE | RRMSE (%) | |||
| Jointing | R-SV + SF | PLSR | 0.762 | 0.337 | 18.3 | 0.678 | 0.539 | 27.5 |
| RF | 0.853 | 0.364 | 18.6 | 0.718 | 0.367 | 20.0 | ||
| XGBoost | 0.829 | 0.322 | 16.4 | 0.679 | 0.351 | 19.1 | ||
| SVR | 0.926 | 0.234 | 12.8 | 0.872 | 0.244 | 12.5 | ||
| Booting | E-SV + R-CV + SF | PLSR | 0.887 | 0.804 | 11.0 | 0.850 | 1.090 | 14.7 |
| RF | 0.861 | 1.137 | 15.4 | 0.687 | 1.693 | 23.3 | ||
| XGBoost | 0.868 | 1.113 | 15.1 | 0.747 | 1.547 | 21.3 | ||
| SVR | 0.945 | 0.707 | 9.1 | 0.898 | 0.899 | 12.1 | ||
| Flowering | R-SV + E-CV + SF | PLSR | 0.884 | 1.199 | 13.3 | 0.783 | 1.839 | 20.2 |
| RF | 0.761 | 1.774 | 19.8 | 0.757 | 1.997 | 21.9 | ||
| XGBoost | 0.801 | 1.633 | 18.1 | 0.741 | 2.037 | 22.4 | ||
| SVR | 0.922 | 1.099 | 12.1 | 0.867 | 1.285 | 14.3 | ||
| Grain filling | R-SV + E-CV + SF | PLSR | 0.816 | 2.760 | 20.6 | 0.694 | 2.658 | 21.3 |
| RF | 0.715 | 3.449 | 25.8 | 0.548 | 3.155 | 25.3 | ||
| XGBoost | 0.717 | 3.434 | 25.7 | 0.538 | 3.146 | 25.2 | ||
| SVR | 0.916 | 1.856 | 13.6 | 0.895 | 1.552 | 12.0 | ||
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Yue, Z.; Zhou, L.; Shu, C.; Li, K.; Huang, W.; Ren, L.; Shao, Q. Estimation of Winter Wheat Aboveground Biomass Across Multiple Growth Stages Using UAV Multispectral and RGB Imagery: Feature Selection and Fusion Approaches. Agronomy 2026, 16, 1167. https://doi.org/10.3390/agronomy16121167
Yue Z, Zhou L, Shu C, Li K, Huang W, Ren L, Shao Q. Estimation of Winter Wheat Aboveground Biomass Across Multiple Growth Stages Using UAV Multispectral and RGB Imagery: Feature Selection and Fusion Approaches. Agronomy. 2026; 16(12):1167. https://doi.org/10.3390/agronomy16121167
Chicago/Turabian StyleYue, Zihan, Lin Zhou, Chenhui Shu, Kaiwei Li, Weijie Huang, Lantian Ren, and Qingqin Shao. 2026. "Estimation of Winter Wheat Aboveground Biomass Across Multiple Growth Stages Using UAV Multispectral and RGB Imagery: Feature Selection and Fusion Approaches" Agronomy 16, no. 12: 1167. https://doi.org/10.3390/agronomy16121167
APA StyleYue, Z., Zhou, L., Shu, C., Li, K., Huang, W., Ren, L., & Shao, Q. (2026). Estimation of Winter Wheat Aboveground Biomass Across Multiple Growth Stages Using UAV Multispectral and RGB Imagery: Feature Selection and Fusion Approaches. Agronomy, 16(12), 1167. https://doi.org/10.3390/agronomy16121167
