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Detecting Abnormal Patterns of Daily Activities for the Elderly Living Alone

机译:检测老人的日常活动异常模式

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In order to reduce the potential risks associated with physically and cognitively impaired ability of the elderly living alone, in this work, we develop an automated method that is able to detect abnormal patterns of the elderly's entering and exiting behaviors collected from simple sensors equipped in home-based setting. With spatiotemporal data left by the elderly when they carrying out daily activities, a Markov Chains Model (MCM) based method is proposed to classify abnormal sequences via analyzing the probability distribution of the spatiotemporal activity data. The experimental evaluation conducted on a 128-day activity data of an elderly user shows a high detection ratio of 92.80% for individual activity and of 92.539% for the sequence consisting of a series of activities.
机译:为了减少与独自居住的老年人的身体和认知能力受损相关的潜在风险,在这项工作中,我们开发了一种自动化方法,该方法能够检测从在家中配备的简单传感器收集的老年人进出行为的异常模式基于的设置。针对老年人进行日常活动时留下的时空数据,提出了一种基于马尔可夫链模型(MCM)的方法,通过分析时空活动数据的概率分布来对异常序列进行分类。对老年用户的128天活动数据进行的实验评估显示,个人活动的检出率为92.80%,由一系列活动组成的序列的检出率为92.539%。

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