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评估传感器和特征选择在基于智能鞋垫的人体活动识别中的影响。

Assessing Impact of Sensors and Feature Selection in Smart-Insole-Based Human Activity Recognition.

作者信息

D'Arco Luigi, Wang Haiying, Zheng Huiru

机构信息

School of Computing, Ulster University, York Street, Belfast BT15 1ED, UK.

出版信息

Methods Protoc. 2022 May 31;5(3):45. doi: 10.3390/mps5030045.

Abstract

Human Activity Recognition (HAR) is increasingly used in a variety of applications, including health care, fitness tracking, and rehabilitation. To reduce the impact on the user's daily activities, wearable technologies have been advanced throughout the years. In this study, an improved smart insole-based HAR system is proposed. The impact of data segmentation, sensors used, and feature selection on HAR was fully investigated. The Support Vector Machine (SVM), a supervised learning algorithm, has been used to recognise six ambulation activities: downstairs, sit to stand, sitting, standing, upstairs, and walking. Considering the impact that data segmentation can have on the classification, the sliding window size was optimised, identifying the length of 10 s with 50% of overlap as the best performing. The inertial sensors and pressure sensors embedded into the smart insoles have been assessed to determine the importance that each one has in the classification. A feature selection technique has been applied to reduce the number of features from 272 to 227 to improve the robustness of the proposed system and to investigate the importance of features in the dataset. According to the findings, the inertial sensors are reliable for the recognition of dynamic activities, while pressure sensors are reliable for stationary activities; however, the highest accuracy (94.66%) was achieved by combining both types of sensors.

摘要

人类活动识别(HAR)在包括医疗保健、健身追踪和康复等各种应用中越来越多地被使用。为了减少对用户日常活动的影响,多年来可穿戴技术不断进步。在本研究中,提出了一种改进的基于智能鞋垫的HAR系统。全面研究了数据分割、所使用的传感器以及特征选择对HAR的影响。支持向量机(SVM),一种监督学习算法,已被用于识别六种行走活动:下楼、从坐到站、坐着、站立、上楼和行走。考虑到数据分割对分类可能产生的影响,对滑动窗口大小进行了优化,确定重叠率为50%的10秒长度为表现最佳的。对嵌入智能鞋垫的惯性传感器和压力传感器进行了评估,以确定它们各自在分类中的重要性。应用了一种特征选择技术将特征数量从272个减少到227个,以提高所提出系统的鲁棒性,并研究数据集中特征的重要性。根据研究结果,惯性传感器对于动态活动的识别是可靠的,而压力传感器对于静态活动是可靠的;然而,通过结合这两种类型的传感器实现了最高准确率(94.66%)。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bb95/9230734/233b78bb6dcd/mps-05-00045-g001.jpg

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