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Signature Inspired Home Environments Monitoring System Using IR-UWB Technology

机译:采用IR-UWB技术的受灵感启发的家庭环境监控系统

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摘要

Home monitoring and remote care systems aim to ultimately provide independent living care scenarios through non-intrusive, privacy-protecting means. Their main aim is to provide care through appreciating normal habits, remotely recognizing changes and acting upon those changes either through informing the person themselves, care providers, family members, medical practitioners, or emergency services, depending on need. Care giving can be required at any age, encompassing young to the globally growing aging population. A non-wearable and unobtrusive architecture has been developed and tested here to provide a fruitful health and wellbeing-monitoring framework without interfering in a user’s regular daily habits and maintaining privacy. This work focuses on tracking locations in an unobtrusive way, recognizing daily activities, which are part of maintaining a healthy/regular lifestyle. This study shows an intelligent and locally based edge care system (ECS) solution to identify the location of an occupant’s movement from daily activities using impulse radio-ultra wide band (IR-UWB) radar. A new method is proposed calculating the azimuth angle of a movement from the received pulse and employing radar principles to determine the range of that movement. Moreover, short-term fourier transform (STFT) has been performed to determine the frequency distribution of the occupant’s action. Therefore, STFT, azimuth angle, and range calculation together provide the information to understand how occupants engage with their environment. An experiment has been carried out for an occupant at different times of the day during daily household activities and recorded with time and room position. Subsequently, these time-frequency outcomes, along with the range and azimuth information, have been employed to train a support vector machine (SVM) learning algorithm for recognizing indoor locations when the person is moving around the house, where little or no movement indicates the occurrence of abnormalities. The implemented framework is connected with a cloud server architecture, which enables to act against any abnormality remotely. The proposed methodology shows very promising results through statistical validation and achieved over 90% testing accuracy in a real-time scenario.
机译:家庭监控和远程护理系统旨在通过非侵入性的隐私保护手段最终提供独立的生活护理方案。他们的主要目的是通过了解正常习惯,远程识别变化并根据需要通过通知个人本人,护理提供者,家庭成员,医生或急诊服务来对这些变化采取行动,以提供护理。在任何年龄段都可能需要提供护理,包括年轻人到全球不断增长的老龄人口。我们在这里开发并测试了一种非穿戴式且不显眼的架构,以提供有益的健康和健康监控框架,而不会干扰用户的日常习惯并维护隐私。这项工作着重于以一种不显眼的方式跟踪位置,识别日常活动,这些活动是维持健康/有规律的生活方式的一部分。这项研究显示了一种智能的,基于本地的边缘护理系统(ECS)解决方案,可以使用脉冲无线电超宽带(IR-UWB)雷达从日常活动中识别乘客的活动位置。提出了一种新方法,该方法根据接收到的脉冲来计算运动的方位角,并利用雷达原理确定该运动的范围。此外,已经执行了短期傅立叶变换(STFT)来确定乘员动作的频率分布。因此,STFT,方位角和范围计算共同提供信息,以了解乘员如何与周围环境互动。在日常的家庭活动中,每天的不同时间对居住者进行了一项实验,并记录了时间和房间位置。随后,这些时频结果以及范围和方位角信息已被用于训练支持向量机(SVM)学习算法,以在人在房屋中移动时识别室内位置,其中很少或没有移动指示发生异常。所实现的框架与云服务器体系结构连接,该云服务器体系结构能够远程处理任何异常情况。所提出的方法通过统计验证显示出非常有希望的结果,并且在实时情况下达到了90%以上的测试准确性。

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