Abstract

A fast and nondestructive method for recognizing the severity of wheat Fusarium head blight (FHB) can effectively reduce fungicide use and associated costs in wheat production. This study proposed a feature fusion method based on deep convolution and shallow features derived from the high-resolution digital Red-green-blue (RGB) images of wheat FHB at different disease severity levels. To test the robustness of the proposed method, the RGB images were taken under different influence factors including light condition, camera shooting angle, image resolution, and crop growth period. All images were preprocessed to eliminate background noises to improve recognition accuracy. The AlexNet model parameters trained by the ImageNet 2012 dataset were transferred to the test dataset to extract the deep convolution feature of wheat FHB. Next, the color and texture features of wheat ears were extracted as shallow features. Then, the Relief-F algorithm was used to fuse the deep convolution feature and shallow features as the final FHB features. Finally, the random forest was used to classify and identify the features of different FHB severity levels. Results show that the recognition accuracy of the proposed fusion feature model was higher than those of models using other features in all conditions. The highest recognition accuracy of severity levels was obtained when images were taken under indoor conditions, with high resolution (12 MB pixels), at 90° shooting angle during the crop filling period. The Relief-F algorithm assigned different weights to the features under different influence factors; it made the fused feature model more robust and improved the ability to recognize wheat FHB severity levels using RGB images.

Highlights

  • Fusarium head blight (FHB) mainly caused by Fusarium graminearum is a devastating disease of wheat and has a serious impact on wheat production worldwide, especially in China (Huang and Mcbeath, 2010)

  • The deep convolution feature of the preprocessed images was extracted based on the AlexNet transfer learning, and the color and texture features of the preprocessed images were extracted as shallow features

  • The proposed fusion method had stronger robustness, and model accuracy was greater than 90%, which was 2– 5% higher than the recognition accuracy of deep convolution feature or shallow features

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Summary

Introduction

Fusarium head blight (FHB) mainly caused by Fusarium graminearum is a devastating disease of wheat and has a serious impact on wheat production worldwide, especially in China (Huang and Mcbeath, 2010). Recognition of wheat FHB was usually performed visually by experienced plant protectors in fields (Fernando et al, 2017). Hyperspectral technology has high-level technical requirements and high costs. Image processing technologies have strong generality, high efficiency, low cost, and low operating requirements in disease recognition (Mohd et al, 2019; Pantazi et al, 2019). Some valuable progress has been made (Jin et al, 2017; Aarju and Sumit, 2018), there is still a need to improve rating FHB severity level accurately by utilizing RGB images

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