智能住宅中人类异常行为的检测

K. Hara, T. Omori, Reiko Ueno
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引用次数: 57

摘要

本文描述了一个基于马尔可夫过程模型的智能房屋中人类日常行为的模型,其中人类行为是用小型运动检测器观察的。通过矢量量化方法将传感器状态的数量减少到几十个,并观察到这些状态的转换。然后,将状态转移概率和转移持续时间分布作为人类日常活动的模板。通过在三组不同的人类行为数据中检测异常行为来评估这些模板的有效性。在没有任何先验知识的情况下成功检测异常行为,表明了概率人类行为描述在智能房屋中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of unusual human behavior in intelligent house
This paper describes a model, based on a Markov process model, of daily human behavior in an intelligent house where human behavior is observed with small motion detectors. The number of sensor states is reduced to a few dozen by a vector quantization method, and transitions within this reduced set of states are observed. Then, the state transition probability and the transition duration time distribution are used as the templates of daily human activity. The validity of those templates is evaluated by detecting unusual human behavior in three sets of different human behavior data. Successful detection of unusual behavior without any a priori knowledge shows the effectiveness of probabilistic human behavior description in the intelligent house.
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