基于YOLOv5框架的改进手套缺陷检测算法

Huibai Wang, Yuxuan Wang
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引用次数: 2

摘要

针对手工检测效率低、精度差、应用领域狭窄等问题,本文提出了一种精度高、参数数量少、易于部署的手套缺陷检测算法YOLO-G。在准备阶段,进行数据扩充,扩展数据集,减小图像尺寸,增加数据丰富度。使用K-means算法计算锚点。然后使用Ghostnet替换YOLOv5的骨干和颈部部分结构,有效减小了模型的尺寸。增加了注意机制,使模型对关键信息更加敏感,提高了检测效果。实验结果表明,YOLO-G的平均精度达到90.4%,参数个数减少47%,计算量减少49.4%,更适合嵌入式场景的部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved glove defect detection algorithm based on YOLOv5 framework
Aiming at the problems of low efficiency, poor accuracy and narrow application area of manual detection, this paper proposed a glove defect detection algorithm YOLO-G with high accuracy, low number of parameters and easy deployment. In the preparation phase, data augmentation is performed to expand the dataset, reduce the image size, and increase the data richness. The K-means algorithm is used to calculate anchors. Then Ghostnet is used to replace some structures in the YOLOv5 backbone and Neck, which effectively reduces the size of the model. The attention mechanism is added to make the model more sensitive to key information and improve the detection effect. The experimental results show that the mean average precision of YOLO-G reaches 90.4%, the number of parameters decreases by 47%, and the amount of calculation decreases by 49.4%, which is more suitable for the deployment of embedded scenarios.
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