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YOLOv5-AC:基于注意力机制的轻量级 YOLOv5 用于跟踪行人检测。

YOLOv5-AC: Attention Mechanism-Based Lightweight YOLOv5 for Track Pedestrian Detection.

机构信息

School of Automation, Chengdu University of Information Technology, Chengdu 610225, China.

出版信息

Sensors (Basel). 2022 Aug 7;22(15):5903. doi: 10.3390/s22155903.

DOI:10.3390/s22155903
PMID:35957461
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9371428/
Abstract

In response to the dangerous behavior of pedestrians roaming freely on unsupervised train tracks, the real-time detection of pedestrians is urgently required to ensure the safety of trains and people. Aiming to improve the low accuracy of railway pedestrian detection, the high missed-detection rate of target pedestrians, and the poor retention of non-redundant boxes, YOLOv5 is adopted as the baseline to improve the effectiveness of pedestrian detection. First of all, L1 regularization is deployed before the BN layer, and the layers with smaller influence factors are removed through sparse training to achieve the effect of model pruning. In the next moment, the context extraction module is applied to the feature extraction network, and the input features are fully extracted using receptive fields of different sizes. In addition, both the context attention module CxAM and the content attention module CnAM are added to the FPN part to correct the target position deviation in the process of feature extraction so that the accuracy of detection can be improved. What is more, DIoU_NMS is employed to replace NMS as the prediction frame screening algorithm to improve the problem of detection target loss in the case of high target coincidence. Experimental results show that compared with YOLOv5, the AP of our YOLOv5-AC model for pedestrians is 95.14%, the recall is 94.22%, and the counting frame rate is 63.1 FPS. Among them, AP and recall increased by 3.78% and 3.92%, respectively, while the detection speed increased by 57.8%. The experimental results verify that our YOLOv5-AC is an effective and accurate method for pedestrian detection in railways.

摘要

针对无人监管的火车轨道上行人自由漫游的危险行为,需要实时检测行人,以确保火车和人员的安全。为了提高铁路行人检测的准确率低、目标行人的高漏检率和非冗余框的保留效果差的问题,采用 YOLOv5 作为基线来提高行人检测的有效性。首先,在 BN 层前部署 L1 正则化,通过稀疏训练去除影响因子较小的层,从而达到模型剪枝的效果。接下来,将上下文提取模块应用于特征提取网络,使用不同大小的感受野充分提取输入特征。此外,在 FPN 部分添加上下文注意力模块 CxAM 和内容注意力模块 CnAM,以纠正特征提取过程中目标位置的偏差,从而提高检测的准确率。此外,采用 DIoU_NMS 代替 NMS 作为预测框筛选算法,以解决在高目标重合度的情况下检测目标丢失的问题。实验结果表明,与 YOLOv5 相比,我们的 YOLOv5-AC 模型对行人的 AP 提高了 3.78%,召回率提高了 3.92%,计数帧率提高了 57.8%。实验结果验证了我们的 YOLOv5-AC 是一种有效的铁路行人检测方法。

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