基于全局数据关联的统一分层多目标跟踪

M. Hofmann, M. Haag, G. Rigoll
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引用次数: 44

摘要

提出了一种统一的分层多目标跟踪方案。将多目标同时跟踪问题转化为一个全局MAP问题,其目标是在给定每帧观测值的情况下最大化轨迹的概率。由于计算上的考虑和难以可靠地估计必要的转移概率,直接解决这个问题是不可行的。在不破坏MAP公式的前提下,我们提出了一个三阶段分层跟踪框架,使求解MAP成为可能。此外,使用分层框架可以对对象间遮挡进行建模。因此,遮挡处理平滑而隐式地集成到所提出的框架中,而不需要任何显式的遮挡推理。最后,我们在公开可用的PETS 2009跟踪数据上评估了所提出的方法,并显示了对大多数序列的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unified hierarchical multi-object tracking using global data association
This paper presents a unified hierarchical multi-object tracking scheme. The problem of simultaneously tracking multiple objects is cast as a global MAP problem which aims at maximizing the probability of trajectories given the observations in each frame. Directly solving this problem is infeasible, due to computational considerations and the difficulty of reliably estimate necessary transition probabilities. Without breaking the MAP formulation, we propose a three stage hierarchical tracking framework which makes solving the MAP feasible. In addition, using a hierarchical framework allows for modeling inter-object occlusions. Occlusion handling thus smoothly and implicitly integrates into the proposed framework without any explicit occlusion reasoning. Finally, we evaluate the proposed method on the publicly available PETS 2009 tracking data and show improvements over the current state of the art for most sequences.
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