摘要
针对目前车载双目视觉系统获取行人定位方法精度不高和难以实现跟踪定位的问题,提出了一种基于改进YOLOv5s的行人定位跟踪方法。研究在基于双目视觉的YOLOv5目标检测网络中设计目标定位跟踪功能;在模型主干网络中设计基于Transformer的自适应融合注意力机制以提高目标特征表示能力;修改特征融合模块的网络结构以提高融合精度。将改进的YOLOv5s模型命名为YOLOv5sBCT,相较于基准模型YOLOv5s在训练结果的精确率上提升约4.20%,在mAP@0.5:0.95中提升约2.91%,在实际测量的距离误差率降低约6.19%。因此,文章针对车载行人定位感知方法能够为车载智能系统提供一种有效提升行人跟踪定位精度的方法,以提升驾驶员的驾驶安全性,推动智能交通领域的发展。
To address the issues of low accuracy and difficulty in achieving tracking localization in current vehicular binocular vision systems,a pedestrian localization and tracking method based on improved YOLOv5s is proposed in this study.Target localization and tracking functionalities are designed in the binocular vision-based YOLOv5 object detection network.Additionally,a Transformer-based adaptive fusion attention mechanism is incorporated into the main network to enhance target feature representation.The network structure of the feature fusion module is modified to improve fusion accuracy.The improved YOLOv5s model is named YOLOv5sBCT,which exhibits approximately 4.20% enhancement in precision and about 2.91% improvement in mAP@0.5:0.95compared to the baseline YOLOv5s model.Furthermore,the measured distance error rate is reduced by approximately 6.19%.Consequently,this study provides an effective method for enhancing pedestrian tracking localization accuracy in vehicular intelligent systems,thereby enhancing driver safety and driving performance and promoting advancements in the field of intelligent transportation.
作者
戚俊杰
王洋
许可飞
QI Junjie;WANG Yang;XU Kefei(School of Computer Science,Xijing University,Xi'an 710123,China;School of Electronic Information,Xijing University,Xi'an 710123,China)
出处
《汽车实用技术》
2024年第20期63-68,共6页
Automobile Applied Technology