钢铁表面缺陷检测的进展:集成 EfficientNet 的增强型 YOLOv5 算法

Fei Ren, ZiAng Zhang, Jiajie Fei, Hongsheng Li, B. Doma Jr
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引用次数: 0

摘要

钢材表面缺陷检测对于确保产品质量、降低成本、提高安全性和客户满意度至关重要。传统的钢材表面缺陷检测算法往往检测结果单一,而且漏检率较高,针对这种局限性,我们提出了一种增强型 Yolov5 钢材表面缺陷检测算法。在这种方法中,本文使用 EfficientNet 网络来替代 Yolov5 骨干网络。随后,我们在钢材表面缺陷数据集上对这一改进网络进行了训练和测试,以缓解高漏检率和评估指标表现不佳带来的挑战。我们的实验结果凸显了改进算法的优越性,尤其是与 Yolov5 相比。该改进算法在精确度、召回率、mAP@0.5、参数数和 pt 文件大小等多个关键性能指标上都有大幅提升。值得注意的成绩包括:Yolov5-EfficientNetB4 的精确度提高了 6.39%;Yolov5-EfficientNetB0 的召回率显著提高了 7.75%;Yolov5-EfficientNetB6 的 mAP@0.5 提高了 5.57%。此外,Yolov5-EfficientNetB0 的 pt 文件大小大幅减少了 39.65%,但值得注意的是,改进算法的推理时间有所增加。在这些模型中,Yolov5-EfficientNetB6 在性能方面取得了最佳平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancements in Steel Surface Defect Detection: An Enhanced YOLOv5 Algorithm with EfficientNet Integration
Steel surface defect detection is of utmost importance for ensuring product quality, cost reduction, enhanced safety, and heightened customer satisfaction. To address the limitations of traditional steel surface defect detection algorithms, which often yielded singular detection results and suffered from high miss detection rates, we proposed an enhanced Yolov5 steel surface defect detection algorithm. In this approach, this paper employed the EfficientNet network as a replacement for the Yolov5 backbone network. Subsequently, we trained and tested this modified network on a steel surface defect dataset to mitigate the challenges associated with high miss detection rates and underperforming evaluation metrics. Our experimental findings underscored the superiority of the improved algorithm, particularly when compared to Yolov5. This enhanced algorithm exhibited substantial improvements across several key performance metrics, including Precision, Recall, mAP@0.5, parameter count, and pt file size. Noteworthy achievements included a 6.39% increase in Precision for Yolov5-EfficientNetB4, a remarkable 7.75% improvement in Recall for Yolov5-EfficientNetB0, and a 5.57% boost in mAP@0.5 for Yolov5-EfficientNetB6. Additionally, the pt file size for Yolov5-EfficientNetB0 saw a substantial 39.65% reduction, although it was important to note that the inference time for the improved algorithm increased. Among the models, Yolov5-EfficientNetB6 struck the best balance in terms of performance.
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CiteScore
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