4.7 Article

Multi-Plant Disease Identification Based on Lightweight ResNet18 Model

期刊

AGRONOMY-BASEL
卷 13, 期 11, 页码 -

出版社

MDPI
DOI: 10.3390/agronomy13112702

关键词

computer vision; deep learning; image processing; disease identification; convolutional neural networks

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This article proposes an improved residual-network-based model for plant disease recognition, achieving good experimental results. The model maintains a smaller number of parameters and computational requirements while improving the average recognition accuracy. Therefore, this model has significant potential for widespread application.
Deep-learning-based methods for plant disease recognition pose challenges due to their high number of network parameters, extensive computational requirements, and overall complexity. To address this issue, we propose an improved residual-network-based multi-plant disease recognition method that combines the characteristics of plant diseases. Our approach introduces a lightweight technique called maximum grouping convolution to the ResNet18 model. We made three enhancements to adapt this method to the characteristics of plant diseases and ultimately reduced the convolution kernel requirements, resulting in the final model, Model_Lite. The experimental dataset comprises 20 types of plant diseases, including 13 selected from the publicly available Plant Village dataset and seven self-constructed images of apple leaves with complex backgrounds containing disease symptoms. The experimental results demonstrated that our improved network model, Model_Lite, contains only about 1/344th of the parameters and requires 1/35th of the computational effort compared to the original ResNet18 model, with a marginal decrease in the average accuracy of only 0.34%. Comparing Model_Lite with MobileNet, ShuffleNet, SqueezeNet, and GhostNet, our proposed Model_Lite model achieved a superior average recognition accuracy while maintaining a much smaller number of parameters and computational requirements than the above models. Thus, the Model_Lite model holds significant potential for widespread application in plant disease recognition and can serve as a valuable reference for future research on lightweight network model design.

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