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首页> 外文期刊>ACM Transactions on Spatial Algorithms and Systems >Robust Path Matching and Anomalous Route Detection Using Posterior Weighted Graphs
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Robust Path Matching and Anomalous Route Detection Using Posterior Weighted Graphs

机译:后验加权图的鲁棒路径匹配和异常路径检测

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摘要

Understanding movement behaviors is critical for urban mobility and transport problems, including robust path matching, behavior analysis, and anomaly detection. We investigate a graph-based, probabilistic method for matching behaviors of entities operating on networks embedded in some geographic context (e.g., road networks) under different types of uncertainty. Our method uses a decay function that allows network topology and attribute information associated with that topology (geographic or otherwise) to guide generalizations of the activity patterns and model learning process. This allows the system to recognize when two routes within a network are similar, even when those routes share little explicit path information. We demonstrate this method's robust ability to distinguish between fundamentally different behaviors, even when data are both incomplete and subject to noise. The results show good performance when matching behaviors on different sized and attributed synthetic networks, as well as on a real-world road network; it examines situations in which observed entity behavior is noisy, as well as situations in which observed behaviors differ from learned models as a result of systemic noise in the underlying network. Finally, our approach provides a robust method of detecting anomalous activity patterns on the network.
机译:了解运动行为对于城市交通和运输问题至关重要,包括稳健的路径匹配,行为分析和异常检测。我们研究了一种基于图的概率方法,用于在不同类型的不确定性下匹配在某些地理环境中嵌入的网络(例如,道路网络)上运行的实体的行为。我们的方法使用衰减函数,该函数允许网络拓扑和与该拓扑关联的属性信息(地理或其他)来指导活动模式和模型学习过程的概括。这使系统能够识别网络中的两条路由何时相似,即使这些路由共享很少的显式路径信息也是如此。我们证明了该方法的强大能力,可以区分根本不同的行为,即使数据既不完整也不容易受到干扰。结果表明,在不同大小和归属的合成网络以及现实道路网络上匹配行为时,性能良好;它研究了观察到的实体行为嘈杂的情况,以及观察到的行为由于基础网络中的系统噪声而与学习的模型不同的情况。最后,我们的方法提供了一种检测网络上异常活动模式的可靠方法。

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