论文标题

多对象跟踪的联合计数,检测和重新识别

Joint Counting, Detection and Re-Identification for Multi-Object Tracking

论文作者

Ren, Weihong, Wu, Denglu, Cao, Hui, Chen, Xi'ai, Han, Zhi, Liu, Honghai

论文摘要

2D多个对象跟踪(MOT)的最新趋势是共同求解检测和跟踪,其中对象检测和外观特征(或运动)同时学习。尽管竞争性能,但在拥挤的场景中,联合检测和跟踪通常由于错过或虚假检测而无法找到准确的对象关联。在本文中,我们在一个端到端的框架中共同对模型进行计数,检测和重新识别,该框架名为CountingMot,量身定制,以拥挤的场景量身定制。通过在检测和计数之间施加相互的对象计数约束,CountingMot试图在对象检测和人群密度映射估计之间找到平衡,这可以帮助其恢复丢失的检测或拒绝错误的检测。我们的方法是试图弥合物体检测,计数和重新识别的差距。这与先前的MOT方法相反,后者要么忽略人群密度,因此很容易在拥挤的场景中失败,或者依靠局部相关性来建立用于匹配目标的图形关系。拟议的MOT跟踪器可以在线和实时跟踪执行,并在公共基准MOT16(79.7),MOT17(MOTA为81.3%)和MOT20(MOTA 20)(MOTA(78.9%)上实现最先进的结果。

The recent trend in 2D multiple object tracking (MOT) is jointly solving detection and tracking, where object detection and appearance feature (or motion) are learned simultaneously. Despite competitive performance, in crowded scenes, joint detection and tracking usually fail to find accurate object associations due to missed or false detections. In this paper, we jointly model counting, detection and re-identification in an end-to-end framework, named CountingMOT, tailored for crowded scenes. By imposing mutual object-count constraints between detection and counting, the CountingMOT tries to find a balance between object detection and crowd density map estimation, which can help it to recover missed detections or reject false detections. Our approach is an attempt to bridge the gap of object detection, counting, and re-Identification. This is in contrast to prior MOT methods that either ignore the crowd density and thus are prone to failure in crowded scenes,or depend on local correlations to build a graphical relationship for matching targets. The proposed MOT tracker can perform online and real-time tracking, and achieves the state-of-the-art results on public benchmarks MOT16 (MOTA of 79.7), MOT17 (MOTA of 81.3%) and MOT20 (MOTA of 78.9%).

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