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A probabilistic exclusion principle for tracking multiple objects

机译:跟踪多个对象的概率排除原理

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Tracking multiple targets is a challenging problem, especially when the targets are "identical", in the sense that the same model is used to describe each target. In this case, simply instantiating several independent 1-body trackers is not an adequate solution, because the independent trackers tend to coalesce onto the best-fitting target. This paper presents an observation density for tracking which solves this problem by exhibiting a probabilistic exclusion principle. Exclusion arises naturally from a systematic derivation of the observation density, without relying on heuristics. Another important contribution of the paper is the presentation of partitioned sampling, a new sampling method for multiple object tracking. Partitioned sampling avoids the high computational load associated with fully coupled trackers, while retaining the desirable properties of coupling. [References: 36]
机译:跟踪多个目标是一个具有挑战性的问题,尤其是在目标“相同”的情况下,就某种意义而言,就是使用相同的模型来描述每个目标。在这种情况下,仅实例化几个独立的1体跟踪器是不合适的解决方案,因为独立的跟踪器倾向于合并到最合适的目标上。本文提出了一种用于跟踪的观测密度,它通过展现概率排除原理解决了该问题。排除是自然产生的,无需依赖启发式方法即可对观测密度进行系统的推导。本文的另一个重要贡献是介绍了分区采样,这是一种用于多对象跟踪的新采样方法。分区采样避免了与完全耦合的跟踪器相关的高计算量,同时保留了耦合的理想特性。 [参考:36]

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