Multiscale Tea Disease Detection with Channel–Spatial Attention
Yange Sun,
Mingyi Jiang,
Huaping Guo
et al.
Abstract:Tea disease detection is crucial for improving the agricultural circular economy. Deep learning-based methods have been widely applied to this task, and the main idea of these methods is to extract multiscale coarse features of diseases using the backbone network and fuse these features through the neck for accurate disease detection. This paper proposes a novel tea disease detection method that enhances feature expression of the backbone network and the feature fusion capability of the neck: (1) constructing … Show more
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