基于一阶概率模型的轨迹-人关联

T. Geier, Susanne Biundo-Stephan, Stephan Reuter, K. Dietmayer
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引用次数: 9

摘要

这项工作解决了个人跟踪中的轨迹关联问题。我们提出了一个基于马尔可夫逻辑网络的概率模型,旨在将人跟踪算法中出现的个人轨迹与正确的人联系起来。为此,跟踪算法获得的目标位置的连续估计被映射到离散的空间区域,这些区域基于环境的平面图。实验表明,所描述的模型能够利用所提供的平面图中包含的附加信息,并且与最先进的人员跟踪算法相比,尽管存在有损离散化步骤,但仍能提供良好的结果。我们详细讨论了工程模型,并在室内环境下进行了实证评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Track-Person Association Using a First-Order Probabilistic Model
This work addresses the problem of track association in person tracking. We propose a probabilistic model, based on Markov Logic Networks, that aims at associating the individual tracks emerging from a person tracking algorithm to the correct persons. For this purpose the continuous estimates of the object positions acquired by the tracking algorithm are mapped into discrete spatial regions, which are based on a floor plan of the environment. Experiments show that the described model is able to exploit the additional information contained inside the provided floor plan, and deliver good results compared to a state of the art person tracking algorithm despite the lossy discretization step. We discuss the engineered model in detail and give an empirical evaluation using an indoor setting.
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