2024
DOI: 10.1371/journal.pone.0292082
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Swin-Transformer -YOLOv5 for lightweight hot-rolled steel strips surface defect detection algorithm

Qiuyan Wang,
Haibing Dong,
Haoyue Huang

Abstract: An essential industrial application is the examination of surface flaws in hot-rolled steel strips. While automatic visual inspection tools must meet strict real-time performance criteria for inspecting hot-rolled steel strips, their capabilities are constrained by the accuracy and processing speed of the algorithm used to identify defects. To solve the problems of poor detection accuracy, low detection efficiency, and unsuitability of low computing power platforms of the hot-rolled strip surface defect detect… Show more

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Cited by 1 publication
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“…The improved model reduced FLOPs by 59.4% and params by 47.9%, with a slight 0.3% decrease in the mAP. Wang et al 16 employed GhostNet and achieved both a lightweight model design and guaranteed detection accuracy. After lightweight optimization, the model's parameter count, GFLOPs, and weight distribution decreased by 36.6%, 40%, and 34.7%, respectively.…”
Section: Introductionmentioning
confidence: 99%
“…The improved model reduced FLOPs by 59.4% and params by 47.9%, with a slight 0.3% decrease in the mAP. Wang et al 16 employed GhostNet and achieved both a lightweight model design and guaranteed detection accuracy. After lightweight optimization, the model's parameter count, GFLOPs, and weight distribution decreased by 36.6%, 40%, and 34.7%, respectively.…”
Section: Introductionmentioning
confidence: 99%