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A defect detection method for industrial aluminum sheet surface based on improved YOLOv8 algorithm

Luyang Wang, Gongxue Zhang, Weijun Wang, Jinyuan Chen, Xuyao Jiang, Hai Yuan, Zucheng Huang

2024Frontiers in Physics24 citationsDOIOpen Access PDF

Abstract

In industrial aluminum sheet surface defect detection, false detection, missed detection, and low efficiency are prevalent challenges. Therefore, this paper introduces an improved YOLOv8 algorithm to address these issues. Specifically, the C2f-DSConv module incorporated enhances the network’s feature extraction capabilities, and a small target detection layer (160 × 160) improves the recognition of small targets. Besides, the DyHead dynamic detection head augments target representation, and MPDIoU replaces the regression loss function to refine detection accuracy. The improved algorithm is named YOLOv8n-DSDM, with experimental evaluations on an industrial aluminum sheet surface defect dataset demonstrating its effectiveness. YOLOv8n-DSDM achieves an average mean average precision (mAP50%) of 94.7%, demonstrating a 3.5% improvement over the original YOLOv8n. With a single-frame detection time of 2.5 ms and a parameter count of 3.77 M, YOLOv8n-DSDM meets the real-time detection requirements for industrial applications.

Topics & Concepts

AluminiumSurface (topology)Computer scienceAlgorithmMaterials scienceMathematicsMetallurgyGeometryIndustrial Vision Systems and Defect DetectionAdvanced Neural Network ApplicationsSurface Roughness and Optical Measurements
A defect detection method for industrial aluminum sheet surface based on improved YOLOv8 algorithm | Litcius