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一种使用低分辨率热传感器、机器学习和深度学习的非侵入式人类活动识别系统。

An Unobtrusive Human Activity Recognition System Using Low Resolution Thermal Sensors, Machine and Deep Learning.

作者信息

Rezaei Ariyamehr, Stevens Michael C, Argha Ahmadreza, Mascheroni Alessandro, Puiatti Alessandro, Lovell Nigel H

出版信息

IEEE Trans Biomed Eng. 2023 Jan;70(1):115-124. doi: 10.1109/TBME.2022.3186313. Epub 2022 Dec 26.

DOI:10.1109/TBME.2022.3186313
PMID:35759592
Abstract

Given the aging population, healthcare systems need to be established to deal with health issues such as injurious falls. Wearable devices can be used to detect falls. However, most wearable devices are obtrusive, and patients generally do not like or may forget to wear them. In this study, we developed an unobtrusive monitoring system using infrared technology to unobtrusively detect locations and recognize human activities such as sitting, standing, walking, lying, and falling. We prototyped a system consisting of two 24×32 thermal array sensors and collected data from healthy young volunteers performing ten different scenarios. A supervised deep learning (DL)-based approach classified activities and detected locations from images. The performance of the DL approach was also compared with the machine learning (ML)-based methods. In addition, we fused the data of two sensors and formed a stereo system, which resulted in better performance compared to a single sensor. Furthermore, to detect critical activities such as falling and lying on floor, we performed a binary classification in which one class was falling plus lying on floor and another class was all the remaining activities. Using the DL-based algorithm on the stereo dataset to recognize activities, overall average accuracy and F1-score were achieved as 97.6%, and 0.935, respectively. These scores for location detection were 97.3%, and 0.927, respectively. These scores for binary classification were 97.9%, and 0.945, respectively. Our results suggest the proposed system recognized human activities, detected locations, and detected critical activities namely falling and lying on floor accurately.

摘要

鉴于人口老龄化,需要建立医疗保健系统来应对诸如跌倒受伤等健康问题。可穿戴设备可用于检测跌倒。然而,大多数可穿戴设备都很显眼,患者通常不喜欢佩戴或可能会忘记佩戴。在本研究中,我们开发了一种使用红外技术的非侵入式监测系统,以非侵入方式检测位置并识别诸如坐、站、走、躺和跌倒等人类活动。我们制作了一个由两个24×32热阵列传感器组成的系统原型,并从健康的年轻志愿者进行的十种不同场景中收集数据。一种基于深度学习(DL)的监督方法对活动进行分类并从图像中检测位置。还将DL方法的性能与基于机器学习(ML)的方法进行了比较。此外,我们融合了两个传感器的数据,形成了一个立体系统,与单个传感器相比,性能更好。此外,为了检测诸如跌倒和躺在地板上之类的关键活动,我们进行了二元分类,其中一类是跌倒加躺在地板上,另一类是所有其余活动。使用基于DL的算法在立体数据集上识别活动,总体平均准确率和F1分数分别达到97.6%和0.935。位置检测的这些分数分别为97.3%和0.927。二元分类的这些分数分别为97.9%和0.945。我们的结果表明,所提出的系统能够准确识别人类活动、检测位置以及检测关键活动,即跌倒和躺在地板上。

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