Lightweight Real-time Detection Method for Dress Code of Anti-static Equipment

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Abstract

Detection of dress code for anti-static equipment is an important management link in clean workshops. To address the issue of difficulty in deploying multi-scale dress code detection methods for anti-static equipment in embedded systems, a lightweight real-time detection method for dress code of anti-static equipment is proposed. This article uses the MobileNetV3-small backbone network to extract features of anti-static equipment, making the model lightweight and easy to deploy. Adopting BiFPN structure to enhance the feature fusion ability of anti-static equipment at multiple scales, and using CIoU Loss and DIoU-NMS to accurately locate anti-static equipment targets, and improving the problem of missed detection of anti-static equipment when people are crowded, and improving the accuracy of dress code detection for anti-static equipment. The experimental results show that the algorithm improves accuracy by 2.1%, reduces parameter count by 43.8%, and reduces model size by 40.6% compared to YOLOv5s. The recognition speed on the Jeston Xavier NX system is 27FPS, and the recognition accuracy of wearing anti-static hats, anti-static clothing, and anti-static shoes is 98.1%, 96.2%, 95.8%, 94.2%, and 94.1%, respectively. It meets the requirements of real-time detection of anti-static equipment dress code.
防静电设备着装规范轻量化实时检测方法
防静电设备着装规范检测是洁净车间的重要管理环节。针对嵌入式系统中防静电设备多尺度着装码检测方法难以部署的问题,提出了一种轻量级的防静电设备着装码实时检测方法。本文采用mobilenetv3小型骨干网提取防静电设备的特征,使模型轻量化,易于部署。采用BiFPN结构增强防静电设备多尺度特征融合能力,利用CIoU Loss和DIoU-NMS精确定位防静电设备目标,改善人员拥挤时防静电设备漏检问题,提高防静电设备着装码检测精度。实验结果表明,与YOLOv5s相比,该算法的准确率提高了2.1%,参数数量减少了43.8%,模型尺寸减少了40.6%。在Jeston Xavier NX系统上的识别速度为27FPS,佩戴防静电帽、防静电服和防静电鞋的识别准确率分别为98.1%、96.2%、95.8%、94.2%和94.1%。满足防静电设备着装规范实时检测的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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