使用tracklet关联器改进跟踪

R'emi Nahon, Guillaume-Alexandre Bilodeau, G. Pesant
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引用次数: 0

摘要

多目标跟踪(MOT)是计算机视觉中的一项任务,旨在检测视频中各种物体的位置,并将它们与唯一的身份联系起来。我们提出了一种基于约束规划的方法,其目标是将其嫁接到任何现有的跟踪器上,以改善其对象关联结果。我们开发了一个模块化算法,分为三个独立的阶段。第一阶段包括恢复由基础跟踪器提供的跟踪器,并在发现不确定关联的地方切断它们,例如,当跟踪器重叠时,可能导致身份转换。在第二阶段,我们使用信念传播约束规划算法将之前构建的tracklet关联起来,其中我们提出各种约束,根据多个特征(例如它们的动态或它们在时间和空间上的距离)为每个tracklet分配分数。最后,第三阶段是一个基本的插值模型,以填补我们建立的轨迹中剩余的孔。实验表明,我们的模型可以改善我们测试的所有三种最先进的跟踪器的结果(在HOTA和IDF1上获得3到4分)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving tracking with a tracklet associator
Multiple object tracking (MOT) is a task in computer vision that aims to detect the position of various objects in videos and to associate them to a unique identity. We propose an approach based on Constraint Programming $(CP)$ whose goal is to be grafted to any existing tracker in order to improve its object association results. We developed a modular algorithm divided into three independent phases. The first phase consists in recovering the tracklets pro-vided by a base tracker and to cut them at the places where uncertain associations are spotted, for exam-ple, when tracklets overlap, which may cause identity switches. In the second phase, we associate the previ-ously constructed tracklets using a Belief Propagation Constraint Programming algorithm, where we pro-pose various constraints that assign scores to each of the tracklets based on multiple characteristics, such as their dynamics or the distance between them in time and space. Finally, the third phase is a rudimen-tary interpolation model to fill in the remaining holes in the trajectories we built. Experiments show that our model leads to improvements in the results for all three of the state-of-the-art trackers on which we tested it (3 to 4 points gained on HOTA and IDF1).
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