Improved Pedestrian Detection Algorithm of Yolov4 Network Structure

Xiujun Zhu, Yujie Bai, Yijian Pei
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Abstract

When the YOLOV4 network detects pedestrians alone, the small target pedestrians will be missed, resulting in the reduction of P (Precision) and AP (Average Precision) values. This paper improves the YOLOV4 network structure. In order to improve the feature extraction capability of the network for small targets, a shallower feature layer is added to the original three output feature layers of the YOLOV4 backbone network to build PANet (Path Aggregation Network) together. And two SPP (Spatial Pyramid Pooling) structures are added to expand the receptive field. The channel attention mechanism module is added and some convolutional layers of the original network are deleted. Finally, transfer learning is used to make the detection effect better. The P value of the pedestrian on the PASCAL VOC data set increased from 84.43% to 91.37%, and the AP value increased from 74.78% to 87.39%, and the P value on the commonly used pedestrian detection data set INRIA (INRIA Person Dataset) increased from 93.20% increased to 98.02%, AP value increased from 91.08% to 94.02%. Experimental results show that the network has a better effect on pedestrian detection, and the accuracy and average precision are improved.
改进的Yolov4网络结构行人检测算法
当YOLOV4网络单独检测行人时,会遗漏小目标行人,导致P (Precision)和AP (Average Precision)值降低。本文对YOLOV4网络结构进行了改进。为了提高网络对小目标的特征提取能力,在YOLOV4骨干网原有的三个输出特征层基础上增加一个较浅的特征层,共同构建PANet (Path Aggregation network)。并增加了两个SPP(空间金字塔池)结构来扩大感受野。增加了通道注意机制模块,删除了原有网络的部分卷积层。最后,采用迁移学习的方法提高检测效果。PASCAL VOC数据集上行人的P值从84.43%增加到91.37%,AP值从74.78%增加到87.39%,常用行人检测数据集INRIA (INRIA Person Dataset)上的P值从93.20%增加到98.02%,AP值从91.08%增加到94.02%。实验结果表明,该网络对行人检测效果较好,准确率和平均精度均有提高。
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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