基于支持向量机的异常轨迹检测

C. Piciarelli, G. Foresti
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引用次数: 30

摘要

视频序列中最有前途的事件分析方法之一是基于对常见活动模式的自动建模,以便以后检测异常事件。这种方法在那些不一定需要准确识别事件的应用中特别有用,而只需要检测应该报告给人工操作员的异常情况(例如视频监控或交通监控应用)。本文提出一种基于支持向量机的轨迹分析方法;支持向量机模型在给定的一组轨迹上进行训练,随后可以检测到与训练轨迹有很大差异的轨迹。特别强调的是一种估计参数v的新方法,因为它严重影响系统的性能,但不能轻易地估计先验。给出了合成数据和实际数据的实验结果。
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Anomalous trajectory detection using support vector machines
One of the most promising approaches to event analysis in video sequences is based on the automatic modelling of common patterns of activity for later detection of anomalous events. This approach is especially useful in those applications that do not necessarily require the exact identification of the events, but need only the detection of anomalies that should be reported to a human operator (e.g. video surveillance or traffic monitoring applications). In this paper we propose a trajectory analysis method based on Support Vector Machines; the SVM model is trained on a given set of trajectories and can subsequently detect trajectories substantially differing from the training ones. Particular emphasis is placed on a novel method for estimating the parameter v, since it heavily influences the performances of the system but cannot be easily estimated a-priori. Experimental results are given both on synthetic and real-world data.
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