隐藏互反链智能目标的多相机跟踪

G. Stamatescu, A. Dick, L. White
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引用次数: 7

摘要

现实世界的目标是聪明的,而且几乎总是在头脑中有目的地移动。提出了一种基于隐互反链(HRC)的多摄像机网络目标跟踪算法,该算法能够以统计的方式捕捉真实世界目标的局部动态和意图。该模型是非因果的,因此与支撑大多数跟踪器(如卡尔曼滤波器)的标准马尔可夫运动模型根本不同。然而,与马尔可夫决策过程等更复杂的模型相比,它的计算成本更低,马尔可夫决策过程可以捕获复杂的行为,但需要近似的推理算法。我们认为,hrc是对现有马尔可夫模型的自然扩展,它提供了精确的在线推理和检测算法,可以很好地随相机和目标的数量进行扩展。最后,我们通过展示跨多个摄像机的多目标跟踪问题的合成数据的结果来展示潜在的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Camera Tracking of Intelligent Targets with Hidden Reciprocal Chains
Real world targets are intelligent and almost always move with a destination in mind. This paper introduces a new target tracking algorithm for multi-camera networks based on a hidden reciprocal chain (HRC), which is able to capture the local dynamics and intention of a real world target in a statistical way. The model is non-causal and therefore fundamentally different to standard Markovian motion models which underpin most trackers, such as the Kalman filter. However it is less computationally expensive than more sophisticated models like Markov decision processes, which can capture complex behaviours but require approximate algorithms for inference. We argue that HRCs are a natural extension to existing Markovian models by presenting exact online inference and detection algorithms which scale well with the number of cameras and targets. Finally we demonstrate the potential benefits by presenting results on synthetic data for the problem of multi-target tracking across multiple cameras.
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