Dense detection algorithm for ceramic tile defects based on improved YOLOv8
Mei Yu,
Yuxin Li,
Zhilin Li,
Peng Yan,
Xiutong Li,
Qin Tian and
Benliang Xie ()
Additional contact information
Mei Yu: Guizhou University
Yuxin Li: Guizhou University
Zhilin Li: Guizhou University
Peng Yan: Guizhou University
Xiutong Li: Guizhou University
Qin Tian: Guiyang University
Benliang Xie: Guizhou University
Journal of Intelligent Manufacturing, 2025, vol. 36, issue 8, No 18, 5613-5628
Abstract:
Abstract As a common building decoration material, ceramic tiles have been widely used in modern society, and deep learning inspection methods are increasingly employed for tile quality inspection. However, current methods face issues such as slow detection velocity and diminished precision in ceramic tiles detection. To resolve these issues, this study presents a dense detection algorithm for ceramic tile defects with an improved YOLOv8. The model redesigns the CSPLayer (Cross Stage Partial Layer) structure by incorporating the BiFormer architecture, and the SCConv (Spatial and Channel Reconstruction Convolution) is employed to replace the ordinary convolution in the Neck and Head. Furthermore, the MPDIoU + DFL (Distribution Focal Loss) is adopted as the bounding box regression loss function, and the EMA (Efficient Multi-Scale Attention mechanism) attention module is introduced to improve the significance and precision of the defective feature information detection. Experimental results indicate that the final improved model has a size of 58.6 MB, the mAP@0.5 reaches 95.62%, and the FPS is 145.4.
Keywords: Defect detection of ceramic tiles; Deep learning; Image processing; Object detection (search for similar items in EconPapers)
Date: 2025
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DOI: 10.1007/s10845-024-02523-y
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