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A Visual Analytics Approach for Detecting and Understanding Anomalous Resident Behaviors in Smart Healthcare

机译:用于检测和了解智能医疗保健中异常居民行为的可视化分析方法

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With the development of science and technology, it is possible to analyze residents’ daily behaviors for the purpose of smart healthcare in the smart home environment. Many researchers have begun to detect residents’ anomalous behaviors and assess their physical condition, but these approaches used by the researchers are often caught in plight caused by a lack of ground truth, one-sided analysis of behavior, and difficulty of understanding behaviors. In this paper, we put forward a smart home visual analysis system (SHVis) to help analysts detect and comprehend unusual behaviors of residents, and predict the health information intelligently. Firstly, the system classifies daily activities recorded by sensor devices in smart home environment into different categories, and discovers unusual behavior patterns of residents living in this environment by using various characteristics extracted from those activities and appropriate unsupervised anomaly detection algorithm. Secondly, on the basis of figuring out the residents’ anomaly degree of every date, we explore the daily behavior patterns and details with the help of several visualization views, and compare and analyze residents’ activities of various dates to find the reasons why residents act unusually. In the case study of this paper, we analyze residents’ behaviors that happened over two months and find unusual indoor behaviors and give health advice to the residents.
机译:随着科学技术的发展,可以在智能家居环境中分析居民的日常行为,以实现智能医疗。许多研究人员已经开始检测居民的异常行为并评估其身体状况,但是由于缺乏实地事实,对行为的单方面分析以及对行为的理解困难,研究人员使用的这些方法常常陷入困境。在本文中,我们提出了一个智能家庭视觉分析系统(SHVis),以帮助分析人员发现和理解居民的异常行为,并智能地预测健康信息。首先,系统将传感器设备在智能家居环境中记录的日常活动分为不同类别,并利用从这些活动中提取的各种特征和适当的无监督异常检测算法,发现居住在该环境中的居民的异常行为模式。其次,在弄清居民每个日期的异常程度的基础上,借助几种可视化视图探索日常行为模式和细节,并比较和分析居民在各个日期的活动,以找出居民行为的原因。异常。在本文的案例研究中,我们分析了两个月内居民的行为,发现了异常的室内行为,并向居民提供了健康建议。

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