一个轻量级的YOLOv5垃圾检测和分类方法

Mei Huang, Yongxin Chang, Liangbao Zhang, Shuaifeng Jiao
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摘要

针对传统人工垃圾分类不清晰、分类困难、分类效率低以及现有大型垃圾分类网络模型难以部署的问题,基于YOLOv5s设计了一种轻量级的垃圾检测分类网络S-YOLOv5。首先,根据垃圾分类原则,构建包含18种常见生活垃圾的垃圾数据集,并对其进行标注;其次,引入shufflenetv2和coordination attention相结合的模块取代YOLOv5s骨干网,并将shufflenet模块中的ReLU激活功能替换为FReLU;最后将PANet结构替换为BiFPN结构,在保持高mAP的同时降低模型复杂度,实现轻量化。实验结果表明,S-YOLOv5的大小仅为2.6MB,约为原始网络大小的1/6,mAP为80.2%。所提出的网络在保持高精度的同时减少了规模,使其更适合在智能设备中部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A lightweight YOLOv5 garbage detection and classification method
Aiming at the problems of unclear, difficult, and inefficient classification of traditional manual waste, and the difficulty of deploying large existing garbage classification network models, a lightweight garbage detection and classification network S-YOLOv5 is designed based on YOLOv5s. First, a garbage dataset containing 18 types of common household garbage is constructed and labeled according to the principles of garbage classification; secondly, a module combining shufflenetv2 and CoordAttention was introduced to replace the YOLOv5s backbone network, and the ReLU activation function in the shufflenet module was substituted by FReLU; finally the PANet structure was replaced by the BiFPN structure, so as to reduce the model complexity and achieve lightweight while maintaining a high mAP. The experimental results show that the size of S-YOLOv5 is only 2.6MB, which is about 1/6 of the original network size, and the mAP is 80.2%. The size of the proposed network is reduced while maintaining high accuracy, making it more suitable for deployment in smart devices.
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