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Intelligent Wireless Walls for Contactless In-Home Monitoring

Engineering and Technology

Intelligent Wireless Walls for Contactless In-Home Monitoring

M. Usman, J. Rains, et al.

Discover how Intelligent Wireless Walls (IWW) can revolutionize human activity monitoring for the elderly and disabled, utilizing cutting-edge reconfigurable intelligent surfaces (RIS) and machine learning. Conducted by a team from the University of Glasgow and Southeast University, this research showcases a remarkable accuracy improvement in non-line-of-sight environments, enhancing privacy-preserving solutions in contactless monitoring.

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~3 min • Beginner • English
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.
Publisher
Light: Science & Applications
Published On
Nov 22, 2022
Authors
Muhammad Usman, James Rains, Tie Jun Cui, Muhammad Zakir Khan, Jalil ur Rehman Kazim, Muhammad Ali Imran, Qammer H. Abbasi
Tags
human activity monitoring
reconfigurable intelligent surfaces
machine learning
microwave sensing
non-line-of-sight
privacy-preserving
independent living
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