2024
DOI: 10.1117/1.jei.33.3.033001
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Spiking ViT: spiking neural networks with transformer—attention for steel surface defect classification

Liang Gong,
Hang Dong,
Xinyu Zhang
et al.

Abstract: Throughout the steel production process, a variety of surface defects inevitably occur. These defects can impair the quality of steel products and reduce manufacturing efficiency. Therefore, it is crucial to study and categorize the multiple defects on the surface of steel strips. Vision transformer (ViT) is a unique neural network model based on a self-attention mechanism that is widely used in many different disciplines. Conventional ViT ignores the specifics of brain signaling and instead uses activation fu… Show more

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References 38 publications
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