Holmes: A Comprehensive Anomaly Detection System for Daily In-home Activities

Enamul Hoque, Robert F. Dickerson, S. Preum, M. Hanson, Adam T. Barth, J. Stankovic
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引用次数: 52

Abstract

Advances in wireless sensor networks have enabled the monitoring of daily activities of elderly people. The goal of these monitoring applications is to learn normal behavior in terms of daily activities and look for any deviation, i.e., Anomalies, so that alerts can be sent to relatives or caregivers. However, human behavior is very complex, and many existing anomaly detection systems are too simplistic which cause many false alarms, resulting in unreliable systems. We present Holmes, a comprehensive anomaly detection system for daily in-home activities. Holmes accurately learns a resident's normal behavior by considering variability in daily activities based not only on a per day basis, but also considering specific days of the week, different time periods such as per week and per month, and collective, temporal, and correlation based features. This approach of learning complicated normal behaviors reduces false alarms. Also, based on resident and expert feedback, Holmes learns semantic rules that explain specific variations of activities in specific scenarios to further reduce false alarms. We evaluate Holmes using data collected from our own deployed system, public data sets, and data collected by a senior safety system provider company from an elderly resident's home. Our evaluation shows that compared to state of the art systems, Holmes reduces false positives and false negatives by at least 46% and 27%, respectively.
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福尔摩斯:一种用于日常家庭活动的综合异常检测系统
无线传感器网络的进步使老年人的日常活动监测成为可能。这些监控应用程序的目标是学习日常活动中的正常行为,并查找任何偏差,即异常,以便向亲属或照顾者发送警报。然而,人类的行为是非常复杂的,现有的许多异常检测系统过于简单,造成了很多误报,导致系统不可靠。我们介绍福尔摩斯,一个全面的异常检测系统的日常家庭活动。福尔摩斯通过考虑居民日常活动的可变性,不仅以每天为基础,而且考虑到一周中的具体日期、不同的时间段(如每周和每月)以及基于集体、时间和相关性的特征,准确地了解居民的正常行为。这种学习复杂正常行为的方法减少了错误警报。此外,基于居民和专家的反馈,福尔摩斯学习语义规则,解释特定场景下活动的特定变化,以进一步减少误报。我们使用从我们自己部署的系统、公共数据集和一家高级安全系统供应商公司从老年居民家中收集的数据来评估福尔摩斯。我们的评估表明,与目前最先进的系统相比,Holmes的假阳性和假阴性分别减少了至少46%和27%。
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An Efficient Agent Location Management for Wireless Sensor Networks The Price of Incorrectly Aggregating Coverage Values in Sensor Selection Holmes: A Comprehensive Anomaly Detection System for Daily In-home Activities An Adaptive Middleware for Opportunistic Mobile Sensing Average Power Consumption Breakdown of Wireless Sensor Network Nodes Using IPv6 over LLNs
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