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Multi-Target Tracking - Linking Identities using Bayesian Network Inference

机译:多目标跟踪 - 使用贝叶斯网络推理链接标识

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Multi-target tracking requires locating the targets and labeling their identities. The latter is a challenge when many targets, with indistinct appearances, frequently occlude one another, as in football and surveillance tracking. We present an approach to solving this labeling problem. When isolated, a target can be tracked and its identity maintained. While, if targets interact this is not always the case. This paper assumes a track graph exists, denoting when targets are isolated and describing how they interact. Measures of similarity between isolated tracks are defined. The goal is to associate the identities of the isolated tracks, by exploiting the graph constraints and similarity measures. We formulate this as a Bayesian network inference problem, allowing us to use standard message propagation to find the most probable set of paths in an efficient way. The high complexity inevitable in large problems is gracefully reduced by removing dependency links between tracks. We apply the method to a 10 min sequence of an international football game and compare results to ground truth.
机译:多目标跟踪需要定位目标并标记其身份。当许多目标具有模糊外观时,后者是一个挑战,经常互相阻塞,如足球和监视跟踪。我们提出了一种解决这个标签问题的方法。当隔离时,可以跟踪目标并保持其身份。虽然,如果目标交互,则不总是如此。本文假设存在轨道图,表示何时隔离目标并描述它们的交互方式。定义了隔离轨道之间的相似度。目标是通过利用图形约束和相似度测量来关联隔离轨道的身份。我们将其作为贝叶斯网络推理问题制定,允许我们使用标准消息传播以有效的方式查找最可能的路径集。通过删除轨道之间的依赖关系链接,在大问题中不可避免的高复杂性。我们将该方法应用于10分钟的国际足球比赛顺序,并将结果与​​地面真相进行比较。

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