2023
DOI: 10.3389/fpls.2023.1276728
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MS-Net: a novel lightweight and precise model for plant disease identification

Siyu Quan,
Jiajia Wang,
Zhenhong Jia
et al.

Abstract: The rapid development of image processing technology and the improvement of computing power in recent years have made deep learning one of the main methods for plant disease identification. Currently, many neural network models have shown better performance in plant disease identification. Typically, the performance improvement of the model needs to be achieved by increasing the depth of the network. However, this also increases the computational complexity, memory requirements, and training time, which will b… Show more

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