Leveraging single for multi-target tracking using a novel trajectory overlap affinity measure

Santiago Manén, R. Timofte, Dengxin Dai, L. Gool
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引用次数: 15

Abstract

Multi-target tracking (MTT) is the task of localizing objects of interest in a video and associating them through time. Accurate affinity measures between object detections is crucial for MTT. Previous methods use simple affinity measures, based on heuristics, that are unable to track through occlusions and missing detections. To address this problem, this paper proposes a novel affinity measure by leveraging the power of single-target visual tracking (VT), which has proven reliable to locally track objects of interest given a bounding-box initialization. In particular, given two detections at different frames, we perform VT starting from each of them and towards the frame of the other. We then learn a metric with features extracted from the behaviours (e.g. overlaps and distances) of the two tracking trajectories. By plugging our learned affinity into the standard MTT framework, we are able to cope with occlusions and large amounts of missing or inaccurate detections. We evaluate our method on public datasets, including the popular MOT benchmark, and show improvements over previously published methods.
利用一种新的轨迹重叠亲和度量,利用单目标进行多目标跟踪
多目标跟踪(MTT)是定位视频中感兴趣的对象并将它们随时间关联起来的任务。目标检测之间精确的亲和度量对于MTT至关重要。以前的方法使用基于启发式的简单亲和力度量,无法通过闭塞和缺失检测进行跟踪。为了解决这一问题,本文提出了一种利用单目标视觉跟踪(VT)功能的新型亲和度量,该方法已被证明可以在给定边界盒初始化的情况下可靠地局部跟踪感兴趣的目标。特别是,给定在不同帧的两个检测,我们从它们中的每一个开始,向另一个帧执行VT。然后,我们学习从两个跟踪轨迹的行为(例如重叠和距离)中提取特征的度量。通过将我们学到的亲和力插入到标准的MTT框架中,我们能够处理闭塞和大量缺失或不准确的检测。我们在公共数据集上评估了我们的方法,包括流行的MOT基准,并显示了比以前发布的方法的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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