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Estimating Maize Leaf Area Index Using Multi-Source Features Derived from UAV Multispectral Imagery and Machine

Hongyan Li1,2, Caixia Huang1,2, Yuze Zhang1,2

  • 1College of Water Conservancy and Hydropower Engineering, Gansu Agricultural University, Lanzhou 730070, China.

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|November 27, 2025
PubMed
Summary
This summary is machine-generated.

This study developed a new method using drone imagery to estimate maize Leaf Area Index (LAI). Combining various data features significantly improved the accuracy of crop growth monitoring for precision agriculture.

Keywords:
UAV multispectral imageryleaf area indexmachine learningmaizetexture featuresvegetation indices

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Area of Science:

  • Agricultural Remote Sensing
  • Plant Physiology
  • Machine Learning in Agriculture

Background:

  • Leaf Area Index (LAI) is crucial for assessing crop health and yield.
  • UAV multispectral imagery offers rich data but has limitations in LAI estimation using single features.
  • Accurate LAI estimation is vital for precision agriculture and effective crop management.

Purpose of the Study:

  • To develop and evaluate a multi-source feature fusion framework for estimating maize LAI using UAV multispectral imagery.
  • To integrate vegetation indices (VIs), texture features (TFs), and texture indices (TIs) for enhanced LAI estimation.
  • To assess the performance of stacked ensemble machine learning models (PLSR, SVM, RF, GBDT) for maize LAI prediction.

Main Methods:

  • Conducted field experiments with varying maize planting densities and nitrogen rates.
  • Acquired UAV multispectral imagery to extract VIs, TFs, and TIs.
  • Employed a stacked ensemble approach combining PLSR with SVM, RF, and GBDT algorithms for feature fusion and LAI estimation.

Main Results:

  • The integrated framework significantly improved LAI estimation accuracy compared to using VIs alone.
  • Fusion of VIs, TFs, and TIs with PLSR+GBDT achieved the highest R² (0.844) and lowest RMSE (0.436).
  • Independent validation confirmed the robustness of the multi-model fusion framework (PLSR+GBDT) with R² values of 0.859 and 0.794.

Conclusions:

  • Multi-source feature integration using machine learning enhances the accuracy and robustness of maize LAI estimation.
  • The developed framework provides a valuable tool for precision agriculture and real-time crop growth monitoring.
  • This approach overcomes limitations of single-feature analysis in remote sensing-based crop assessment.