Surface Defect Identification of Strip Steel Using ViT‐RepVGG
Zhihuan Wang,
Mujun Long,
Pan Sun
et al.
Abstract:In the production of strip steel, surface defect identification is crucial for improving product quality and ensuring smooth subsequent processes. Existing technologies face challenges such as low detection efficiency and susceptibility to environmental noise. This article employs an automated deep learning method without requiring consideration of complex environmental changes and proposes an improved RepVGG (ViT‐RepVGG) model for surface defect identification. The model is based on the RepVGG architecture, a… Show more
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