Abstract

The extraction of wheat lodging is of great significance to post-disaster agricultural production management, disaster assessment and insurance subsidies. At present, the recognition of lodging wheat in the actual complex field environment still has low accuracy and poor real-time performance. To overcome this gap, first, four-channel fusion images, including RGB and DSM (digital surface model), as well as RGB and ExG (excess green), were constructed based on the RGB image acquired from unmanned aerial vehicle (UAV). Second, a Mobile U-Net model that combined a lightweight neural network with a depthwise separable convolution and U-Net model was proposed. Finally, three data sets (RGB, RGB + DSM and RGB + ExG) were used to train, verify, test and evaluate the proposed model. The results of the experiment showed that the overall accuracy of lodging recognition based on RGB + DSM reached 88.99%, which is 11.8% higher than that of original RGB and 6.2% higher than that of RGB + ExG. In addition, our proposed model was superior to typical deep learning frameworks in terms of model parameters, processing speed and segmentation accuracy. The optimized Mobile U-Net model reached 9.49 million parameters, which was 27.3% and 33.3% faster than the FCN and U-Net models, respectively. Furthermore, for RGB + DSM wheat lodging extraction, the overall accuracy of Mobile U-Net was improved by 24.3% and 15.3% compared with FCN and U-Net, respectively. Therefore, the Mobile U-Net model using RGB + DSM could extract wheat lodging with higher accuracy, fewer parameters and stronger robustness.

Highlights

  • Wheat is the main food source in the world, the quality and yield of which are related to food security [1]

  • For RGB + digital surface model (DSM) wheat lodging extraction, the overall accuracy of Mobile U-Net was improved by 24.3% and 15.3% compared with

  • DSM and Excess green (ExG) Images Derived from RGB

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Summary

Introduction

Wheat is the main food source in the world, the quality and yield of which are related to food security [1]. Previous studies have shown that lodging affects protein synthesis and nutrient transport, and causes a sharp decline in photosynthetic rate and dry matter production capacity [3]. It is of great significance for production management, prevention and control guidance, as well as disaster assessment for agricultural departments and agricultural insurance departments, to accurately and quickly obtain information, such as the location and area of wheat lodging. The rapid development based on remote sensing technology provides a practical means for large-scale and rapid monitoring of lodging information [5], such as near-ground remote sensing, satellite remote sensing and unmanned aerial vehicle (UAV) remote sensing monitoring. The low efficiency of nearground remote sensing technology limits its further application on the farmland scale [6]

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