Where are my colleagues?: Tracking and Counting Multiple Persons using Lifted Marginal Filtering

S. Lüdtke, Max Schröder, Frank Krüger, T. Kirste
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引用次数: 1

Abstract

Tracking multiple targets with anonymous sensors (e.g. presence sensors) leads to a combinatorial explosion in the number of possible siuations (hypotheses) that need to be tracked, due to the uncertainty of the association of identities to observed tracks. We propose a novel Bayesian filtering algorithm that can solve this problem by employing a compact state representation. A single lifted state represents a uniform distribution over all possible identity-track associations. The state representation and dynamics is based on Multiset Rewriting Systems and Lifted Probabilistic Inference. We show that Bayesian filtering using this representation is possible without resorting to ground states. This is demonstrated for a person tracking scenario in an office environment where up to seven persons are observed with presence sensors. Our approach naturally allows to simultaneously track persons and estimate their total number. The number of hypotheses is several orders of magnitude smaller than using a ground state representation.
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我的同事呢?:使用提升边缘滤波对多人进行跟踪和计数
使用匿名传感器(例如存在传感器)跟踪多个目标会导致需要跟踪的可能情况(假设)数量的组合爆炸,因为身份与观察到的轨迹之间的关联存在不确定性。我们提出了一种新的贝叶斯滤波算法,该算法可以通过采用紧凑的状态表示来解决这个问题。单个提升状态表示所有可能的身份-轨迹关联的均匀分布。状态表示和动态是基于多集重写系统和提升概率推理。我们证明使用这种表示的贝叶斯滤波是可能的,而不需要诉诸基态。这在办公环境中的人员跟踪场景中进行了演示,在该场景中,通过存在感测器最多可以观察到7个人。我们的方法自然可以同时跟踪人员并估计其总数。假设的数量比使用基态表示少几个数量级。
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