2023
DOI: 10.3390/agriculture13081513
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Semantic Segmentation of Cucumber Leaf Disease Spots Based on ECA-SegFormer

Ruotong Yang,
Yaojiang Guo,
Zhiwei Hu
et al.

Abstract: Accurate semantic segmentation of disease spots is critical in the evaluation and treatment of cucumber leaf damage. To solve the problem of poor segmentation accuracy caused by the imbalanced feature fusion of SegFormer, the Efficient Channel Attention SegFormer (ECA-SegFormer) is proposed to handle the semantic segmentation of cucumber leaf disease spots under natural acquisition conditions. First, the decoder of SegFormer is modified by inserting the Efficient Channel Attention and adopting the Feature Pyra… Show more

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