期刊论文详细信息
Frontiers in Plant Science
A ResNet50-DPA model for tomato leaf disease identification
Plant Science
Jin Liang1  Wenping Jiang1 
[1] School of Electrical and Electronic Engineering, Shanghai Institute of Technology, Shanghai, China;
关键词: tomato leaf image;    disease identification;    deep learning;    convolutional neural network;    feature extraction;   
DOI  :  10.3389/fpls.2023.1258658
 received in 2023-07-14, accepted in 2023-09-18,  发布年份 2023
来源: Frontiers
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【 摘 要 】

Tomato leaf disease identification is difficult owing to the variety of diseases and complex causes, for which the method based on the convolutional neural network is effective. While it is challenging to capture key features or tends to lose a large number of features when extracting image features by applying this method, resulting in low accuracy of disease identification. Therefore, the ResNet50-DPA model is proposed to identify tomato leaf diseases in the paper. Firstly, an improved ResNet50 is included in the model, which replaces the first layer of convolution in the basic ResNet50 model with the cascaded atrous convolution, facilitating to obtaining of leaf features with different scales. Secondly, in the model, a dual-path attention (DPA) mechanism is proposed to search for key features, where the stochastic pooling is employed to eliminate the influence of non-maximum values, and two convolutions with one dimension are introduced to replace the MLP layer for effectively reducing the damage to leaf information. In addition, to quickly and accurately identify the type of leaf disease, the DPA module is incorporated into the residual module of the improved ResNet50 to obtain an enhanced tomato leaf feature map, which helps to reduce economic losses. Finally, the visualization results of Grad-CAM are presented to show that the ResNet50-DPA model proposed can identify diseases more accurately and improve the interpretability of the model, meeting the need for precise identification of tomato leaf diseases.

【 授权许可】

Unknown   
Copyright © 2023 Liang and Jiang

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