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Automatic grading evaluation of winter wheat lodging based on deep learning.

Hecang Zang1,2, Xinqi Su1,3, Yanjing Wang4

  • 1Institute of Agricultural Information Technology, Henan Academy of Agricultural Sciences, Zhengzhou, China.

Frontiers in Plant Science
|May 10, 2024
PubMed
Summary

A new deep learning model, MLP_U-Net, accurately grades winter wheat lodging using UAV imagery. This technology offers a reliable and efficient method for assessing crop damage and aiding agricultural insurance.

Keywords:
UAV imagedeep learninglodging arealodging degreewinter wheat

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Area of Science:

  • Agricultural Engineering
  • Remote Sensing
  • Computer Vision
  • Machine Learning

Background:

  • Winter wheat lodging significantly impacts crop yield and quality, necessitating accurate assessment for agricultural insurance and seed selection.
  • Traditional methods for evaluating lodging are labor-intensive, subjective, and lack reliability, hindering efficient loss assessment.

Purpose of the Study:

  • To develop and validate a novel deep learning model for accurate and automated grading of winter wheat lodging.
  • To quantitatively assess lodging degree and area using unmanned aerial vehicle (UAV) remote sensing data.

Main Methods:

  • A classification-semantic segmentation multitasking neural network, MLP_U-Net, was designed based on the U-Net architecture with improved MLP modules.
  • The model employed a common encoder for robustness and utilized winter wheat lodging images captured by UAVs at varying altitudes.
  • Datasets were created from images of 82 winter wheat varieties, enabling segmentation and classification of lodging severity and extent.

Main Results:

  • MLP_U-Net demonstrated superior performance, achieving high accuracies in grading winter wheat lodging degree (96.1%) and lodging area (92.2%) at a UAV flight height of 30m.
  • At a UAV flight height of 50m, the model still provided accurate grading, with accuracies of 84.1% for lodging degree and 84.7% for lodging area.
  • The model proved robust and efficient, especially in small sample datasets, outperforming traditional methods.

Conclusions:

  • The MLP_U-Net model offers a highly accurate, robust, and efficient solution for winter wheat lodging grading using UAV remote sensing.
  • This technology provides valuable technical references for assessing winter wheat disaster severity and agricultural losses, improving insurance claim processing and seed selection.