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用于非接触式家庭监测的智能无线墙

Intelligent wireless walls for contactless in-home monitoring.

作者信息

Usman Muhammad, Rains James, Cui Tie Jun, Khan Muhammad Zakir, Kazim Jalil Ur Rehman, Imran Muhammad Ali, Abbasi Qammer H

机构信息

University of Glasgow, James Watt School of Engineering, Glasgow, G12 8QQ, UK.

State Key Laboratory of Millimetre Waves, Southeast University, Nanjing, China.

出版信息

Light Sci Appl. 2022 Jul 7;11(1):212. doi: 10.1038/s41377-022-00906-5.

Abstract

Human activity monitoring is an exciting research area to assist independent living among disabled and elderly population. Various techniques have been proposed to recognise human activities, such as exploiting sensors, cameras, wearables, and contactless microwave sensing. Among these, the microwave sensing has recently gained significant attention due to its merit to solve the privacy concerns of cameras and discomfort caused by wearables. However, the existing microwave sensing techniques have a basic disadvantage of requiring controlled and ideal settings for high-accuracy activity detections, which restricts its wide adoptions in non-line-of-sight (Non-LOS) environments. Here, we propose a concept of intelligent wireless walls (IWW) to ensure high-precision activity monitoring in complex environments wherein the conventional microwave sensing is invalid. The IWW is composed of a reconfigurable intelligent surface (RIS) that can perform beam steering and beamforming, and machine learning algorithms that can automatically detect the human activities with high accuracy. Two complex environments are considered: one is a corridor junction scenario with transmitter and receiver in separate corridor sections and the other is a multi-floor scenario wherein the transmitter and receiver are placed on two different floors of a building. In each of the aforementioned environments, three distinct body movements are considered namely, sitting, standing, and walking. Two subjects, one male and one female perform these activities in both environments. It is demonstrated that IWW provide a maximum detection gain of 28% in multi-floor scenario and 25% in corridor junction scenario as compared to traditional microwave sensing without RIS.

摘要

人类活动监测是一个令人兴奋的研究领域,有助于残疾人和老年人独立生活。人们已经提出了各种技术来识别人类活动,例如利用传感器、摄像头、可穿戴设备和非接触式微波传感。其中,微波传感最近因其在解决摄像头隐私问题和可穿戴设备带来的不适感方面的优点而受到广泛关注。然而,现有的微波传感技术存在一个基本缺点,即需要在受控和理想的设置下进行高精度的活动检测,这限制了其在非视距(Non-LOS)环境中的广泛应用。在此,我们提出了一种智能无线墙(IWW)的概念,以确保在传统微波传感无效的复杂环境中进行高精度的活动监测。IWW由一个可执行波束转向和波束形成的可重构智能表面(RIS)以及能够自动高精度检测人类活动的机器学习算法组成。考虑了两种复杂环境:一种是发射器和接收器位于不同走廊区域的走廊交叉场景,另一种是发射器和接收器放置在建筑物不同楼层的多层场景。在上述每种环境中,考虑了三种不同的身体动作,即坐着、站着和行走。两名受试者,一男一女,在这两种环境中进行这些活动。结果表明,与没有RIS的传统微波传感相比,IWW在多层场景中提供了28%的最大检测增益,在走廊交叉场景中提供了25%的最大检测增益。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8639/9262883/625949d308e9/41377_2022_906_Fig1_HTML.jpg

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