摘要
在汽车智能化进程中,对于道路行人的检测研究是必不可少的,文章基于YOLOv4-tiny提出一种改进的行人检测算法,应用于车载小型摄像头。将空间金字塔池化结构(SPP)引入网络结构,通过SPP模块实现局部特征和全局特征的融合,丰富最终特征图的表达能力;在特征层和上采样引入了坐标注意力(CA)机制,从通道和空间两方面对图像特征进行有效关注;实验采用PASCALVOC-2007数据集进行训练和验证。实验结果表明,改进后的算法在VOC数据集中,平均精度提高了3.84%,F1值为0.80,查准率提高了0.77%,查全率为73.95%,平均准确率均值(mAP)提高了8.79%,在保证算法速率的同时提高了检测精度。该研究为汽车智能化行驶过程中的行人检测提供了建议。
In the process of automobile intelligence,the research of road pedestrian detection is essential.This paper proposes an improved pedestrian detection algorithm based on YOLOv4-tiny,which is applied to the small vehicle camera.The spatial pyramid pooling structure(SPP)is introduced into the network structure,and the integration of local and global features is realized through SPP module to enrich the expression ability of the final feature map;the coordinate attention(CA)mechanism is introduced into the feature layer and upper sampling to pay attention to the image features from the channel and space;the experiment uses PASCALVOC-2007 data set for training and verification.The experimental results show that the average accuracy of the improved algorithm is improved by 3.84%,the F1 value is 0.80,the accuracy by 0.77%,recall by 73.95%,and mean average precision(mAP)by 8.79%,which improves the detection accuracy while ensuring the algorithm rate.This study provides suggestions for pedestrian detection in the process of automobile intelligence driving.
作者
王京
高浩宁
WANG Jing;GAO Haoning(Department of Energy Engineering,Hebei University of Architecture,Zhangjiakou 075000,China)
出处
《汽车实用技术》
2024年第16期40-43,共4页
Automobile Applied Technology