Using a Hidden Markov Model for Resident Identification

Aaron S. Crandall, D. Cook
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引用次数: 48

Abstract

In smart home environments, it is highly desirable to know who is performing what actions. This knowledge allows the system to accurately build individuals' histories and to take personalized action based on the current resident. Without a good handle on identity, multi-resident smart homes are less effective when used for medical and assistive applications. Most smart home systems either have a single occupancy requirement, or rely on a wireless or video device to identify individuals. These requirements are too burdensome in some situations, which can limit the deployment of smart home technologies in environments that would derive benefits from them. This research work introduces the use of passive sensors and a Hidden Markov Model as a means to identify individuals. The result is a passive, low profile means to attribute individual events to unique residents. For this work, two different pairs of individuals living in a smart home testbed are used to evaluate the tools. The data used is from unscripted, full time occupancy and annotated by the residents themselves for accuracy. Lastly, the Hidden Markov Model approach is compared and contrasted against a prior Naive Bayes solution on the same data sets.
基于隐马尔可夫模型的居民身份识别
在智能家居环境中,非常希望知道谁在执行什么操作。这种知识使系统能够准确地建立个人的历史,并根据当前居民采取个性化的行动。如果不能很好地处理身份,多居民智能家居在用于医疗和辅助应用时就不那么有效。大多数智能家居系统要么有单一的占用要求,要么依靠无线或视频设备来识别个人。在某些情况下,这些要求过于繁重,这可能会限制智能家居技术在可以从中获益的环境中的部署。这项研究工作介绍了使用无源传感器和隐马尔可夫模型作为识别个体的手段。其结果是一种被动、低调的方式,将个别事件归因于独特的居民。在这项工作中,两对生活在智能家居测试台上的不同个体被用来评估这些工具。所使用的数据来自于无脚本的全职入住,并由居民自己注释以确保准确性。最后,将隐马尔可夫模型方法与相同数据集上的先验朴素贝叶斯解决方案进行比较和对比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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