基于姿态的多目标跟踪

Xiangbin Shi, Xiaoyu Yang, Deyuan Zhang, Jing Bi, Zhaokui Li, Fang Liu
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引用次数: 0

摘要

视频中人体多目标跟踪是计算机视觉领域的一个重要问题。需要对每一帧的目标进行检测,并将所有帧的目标连接成一个目标序列。针对不同帧间的目标匹配问题,提出了一种基于Openpose的目标姿态序列(cop)跟踪算法。将目标姿态的位置状态和ORB特征动态加权并融合为新的特征。通过比较序列中的目标姿态与当前帧中的每个姿态之间的新特征,在相应的目标姿态序列中搜索目标姿态。当目标姿态匹配时,通过对目标运动的连续检测,可以增强位置特征对姿态相似度的影响。当目标尺度变化过大时,该方法可以扩大ORB特征对姿态相似度比较的贡献。在PoseTrack和MOT数据集上进行了人体多目标跟踪算法实验,实验结果表明,本文提出的多目标跟踪算法克服了帧间目标匹配问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pose-Based Multi-Target Tracking
Human multi-target tracking in video is an important issue in the field of computer vision. It is necessary to detect the target on each frame, and to connect the targets of all frames into a target sequence. For target matching among different frames, we propose a tracking algorithm for constructing object pose sequence(COPS) based on Openpose. The position status and the ORB feature of the target pose are dynamically weighted and fused into new features. Target pose is searched in the corresponding target pose sequence by comparing the new features between the target pose in the sequence and every pose in current frame. When the target pose is matched, the influence of the position feature on the pose similarity could be enhanced when the target motion is continuously detected. When the target scale changes too much, the method can expand the contribution of the ORB feature to the pose similarity comparison. The experiments of human multitarget tracking algorithm are carried out on the PoseTrack and MOT datasets, and the results show that the proposed tracking algorithm overcomes the problem of target matching between frames.
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