High accuracy human activity recognition using machine learning and wearable devices’ raw signals

IF 2.7 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Information and Telecommunication Pub Date : 2021-11-10 DOI:10.1080/24751839.2021.1987706
Andonis Papaleonidas, A. Psathas, L. Iliadis
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引用次数: 3

Abstract

ABSTRACT Human activity recognition (HAR) is vital in a wide range of real-life applications such as health monitoring of olderly people, abnormal behaviour detection and smart home management. HAR systems can employ smart human-computer interfaces and be parts of active, intelligent surveillance systems. The increasing use of high-tech mobile and wearable devices, such as smart phones, smart watches and smart bands, can be the key elements in building high accuracy models, as they can provide a tremendous number of signals. This research aims to develop and test a machine learning (ML) model, which can successfully recognize a performed activity using raw signals obtained by wearable devices. Photoplethysmography – Daily Life Activities (PPG-DaLiA) dataset contains data related to 15 individuals wearing physiological and motion sensors. PPG-DaLiA was used as an input to a custom data segmentation model to obtain the respective training and testing dataset. Overall, 23 ML well-established models were employed. The weighted and the fine k-nearest neighbours, the fine Gaussian support vector machines and the bagged trees were the algorithms that achieved the best performance with a very high accuracy level.
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利用机器学习和可穿戴设备的原始信号进行高精度的人类活动识别
人体活动识别(HAR)在老年人健康监测、异常行为检测和智能家居管理等广泛的现实应用中至关重要。HAR系统可以采用智能人机界面,并成为主动智能监控系统的一部分。越来越多地使用高科技移动和可穿戴设备,如智能手机,智能手表和智能手环,可以成为建立高精度模型的关键因素,因为它们可以提供大量的信号。本研究旨在开发和测试一种机器学习(ML)模型,该模型可以使用可穿戴设备获得的原始信号成功识别已执行的活动。光电容积脉搏图-日常生活活动(PPG-DaLiA)数据集包含与15个佩戴生理和运动传感器的个体相关的数据。使用PPG-DaLiA作为自定义数据分割模型的输入,获得相应的训练和测试数据集。总的来说,采用了23 ML成熟模型。其中,加权和精细k近邻、精细高斯支持向量机和袋装树算法的性能最好,准确率很高。
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来源期刊
CiteScore
7.50
自引率
0.00%
发文量
18
审稿时长
27 weeks
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