2024
DOI: 10.1049/ell2.13292
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A lightweight transformer with linear self‐attention for defect recognition

Yuwen Zhai,
Xinyu Li,
Liang Gao
et al.

Abstract: Visual defect recognition techniques based on deep learning models are crucial for modern industrial quality inspection. The backbone, serving as the primary feature extraction component of the defect recognition model, has not been thoroughly exploited. High‐performance vision transformer (ViT) is less adopted due to high computational complexity and limitations of computational resources and storage hardware in industrial scenarios. This paper presents LSA‐Former, a lightweight transformer architectural back… Show more

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