使用不活动来检测异常行为

P. Dickinson, A. Hunter
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引用次数: 12

摘要

我们提出了一种新的方法来检测视频监控数据中的异常行为模式,适用于支持老年患者的家庭护理。我们的方法是基于检测不活动的异常模式。我们首先学习一个被观察场景的正常不活动空间图,用二维混合高斯函数表示。映射组件用于构建表示正常行为模式的隐马尔可夫模型。还推断了阈值模型,并通过比较模型可能性来检测异常行为。我们的学习过程是无监督的,并产生了一个高度透明的场景活动模型。我们对我们的方法进行了评估,并表明它可以有效地检测一系列参数设置中的异常行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Inactivity to Detect Unusual behavior
We present a novel method for detecting unusual modes of behavior in video surveillance data, suitable for supporting home-based care of elderly patients. Our approach is based on detecting unusual patterns of inactivity. We first learn a spatial map of normal inactivity for an observed scene, expressed as a two-dimensional mixture of Gaussians. The map components are used to construct a Hidden Markov Model representing normal patterns of behavior. A threshold model is also inferred, and unusual behavior detected by comparing the model likelihoods. Our learning procedures are unsupervised, and yield a highly transparent model of scene activity. We present an evaluation of our approach, and show that it is effective in detecting unusual behavior across a range of parameter settings.
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