Research on Dynamic Recognition and Tracking Technology for Complex Scenes of Automatic Driving

Shuai-Wu Zhang Shuai-Wu Zhang, Yu-Mei Zhao Shuai-Wu Zhang, Xiang-Lian Yang Yu-Mei Zhao
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Abstract

With the development of automobile technology, intelligent vehicle and automatic driving technology will make due contributions to reducing traffic accidents. This paper aims to improve the dynamic identification and tracking technology in the current intelligent vehicle and automatic driving. First, it is improved based on the MobileNet V2 backbone network, and then a new tracking model framework is designed combining with the SiamRPN single target tracker. Secondly, it integrates space-time tracking clues to improve the stability and robustness of the algorithm. Finally, it constructs a pedestrian dynamic identification algorithm based on the dynamic pedestrian factors in the driving process. Through the training of data sets and video tracking experiments, the performance of the algorithm in this paper is proved quantitatively and qualitatively.  
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自动驾驶复杂场景动态识别与跟踪技术研究
随着汽车技术的发展,智能汽车和自动驾驶技术将为减少交通事故做出应有的贡献。本文旨在对当前智能汽车和自动驾驶中的动态识别与跟踪技术进行改进。首先基于MobileNet V2骨干网对其进行改进,然后结合SiamRPN单目标跟踪器设计了新的跟踪模型框架。其次,结合时空跟踪线索,提高算法的稳定性和鲁棒性;最后,基于驾驶过程中行人动态因素,构建了行人动态识别算法。通过数据集训练和视频跟踪实验,定量和定性地证明了本文算法的性能。
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