Context-aware Human Activity Recognition and decision making

A. Khattak, L. Vinh, D. V. Hung, P. Truc, L. X. Hung, D. Guan, Zeeshan Pervez, Manhyung Han, Sungyoung Lee, Young-Koo Lee
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引用次数: 38

Abstract

Ubiquitous Life Care (u-Life care) nowadays becomes more attractive to computer science researchers due to a demand on a high quality and low cost of care services at anytime and anywhere. Many works exploit sensor networks to monitor patient's health status, movements, and real-time daily life activities to provide care services to them. Context information with real-time daily life activities can help in better services, service suggestions, and change in system behavior for better healthcare. Our proposed Secured Wireless Sensor Network - integrated Cloud Computing for ubiquitous - Life Care (SC3) monitors human health as well as activities. In this paper we focus on Human Activity Recognition Engine (HARE) framework architecture, backbone of SC3 and discussed it in detail. Camera-based and sensor-based activity recognition engines are discussed in detail along with the manipulation of recognized activities using Context-aware Activity Manipulation Engine (CAME) and Intelligent Life Style Provider (i-LiSP). Preliminary results of CAME showed robust and accurate response to medical emergencies. We have deployed five different activity recognition engines on Cloud to identify different set of activities of Alzheimer's disease patients.
情境感知人类活动识别和决策
由于人们对随时随地、高质量、低成本的护理服务的需求,无处不在的生命护理(u-Life Care)越来越受到计算机科学研究者的关注。许多工作利用传感器网络来监测病人的健康状况、运动和实时的日常生活活动,为他们提供护理服务。具有实时日常生活活动的上下文信息可以帮助提供更好的服务、服务建议和改变系统行为,从而实现更好的医疗保健。我们提出的安全无线传感器网络-无处不在的集成云计算-生命护理(SC3)监测人类健康和活动。本文重点研究了SC3的核心——人体活动识别引擎(Human Activity Recognition Engine, HARE)框架结构,并对其进行了详细的讨论。详细讨论了基于摄像头和基于传感器的活动识别引擎,以及使用上下文感知活动操作引擎(CAME)和智能生活方式提供商(i-LiSP)对识别活动的操作。CAME的初步结果显示对医疗紧急情况的反应稳健而准确。我们在云端部署了五种不同的活动识别引擎,以识别阿尔茨海默病患者的不同活动集。
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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