DDT: Decentralized event Detection and Tracking using an ensemble of vertex-reinforced walks on a graph

Tamal Batabyal
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Abstract

Automated detection of decentralized event dynamics together with the identification of irregular topology on which the event propagates is a challenging task, which has its application in areas such as geomorphology and video surveillance. The problem becomes severe when the underlying topology is time-varying and multiple events with varied scales exist on the same topology. Conventional research works separately to deal with the problems of detecting events and identifying topology. On one hand, the methodologies for event detection involving the graph-spectral response fail to perform spatiotemporal localization of events if the underlying topology is unknown. On the other hand, the algorithms which estimate the underlying graph topology assume only static nature of the events. In this work, we utilize vertex reinforcement based walks on the topology to simultaneously perform both the tasks by using a scalable and tractable algorithm. An ensemble of such walks recursively updates the event membership of each location in the topology followed by associating a spatial support of each event. Our approach shows improvement over state-of-the-art methods in terms of the spatiotemporal localization of decentralized events.
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分布式事件检测和跟踪,使用图形上的顶点增强行走集合
分散事件动态的自动检测和事件传播的不规则拓扑识别是一项具有挑战性的任务,在地貌学和视频监控等领域都有应用。当底层拓扑是时变的,并且同一拓扑上存在多个不同规模的事件时,问题就变得严重了。传统的研究分别处理事件检测和拓扑识别问题。一方面,如果底层拓扑未知,则涉及图谱响应的事件检测方法无法对事件进行时空定位。另一方面,估计底层图拓扑的算法只假设事件的静态性质。在这项工作中,我们利用基于顶点强化的拓扑行走,通过使用可扩展和可处理的算法同时执行这两个任务。这种遍历的集合递归地更新拓扑中每个位置的事件成员关系,然后关联每个事件的空间支持。我们的方法在分散事件的时空定位方面比最先进的方法有所改进。
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