On motion-sensor behavior analysis for human-activity recognition via smartphones

Chao Shen, Yufei Chen, Gengshan Yang
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引用次数: 32

Abstract

A wealth of sensors on smartphones has greatly facilitated people's life, which may also provide great potential for accurate human activity recognition. This paper presents an empirical study of analyzing the behavioral characteristics of smartphone inertial sensors for human activity recognition. The rationale behind is that different human activities would cause different levels of posture and motion change of smartphone. In this work, an Android application was run as a background job to monitor data of motion sensors. Sensory data from motion sensors (mainly including accelerometer and gyroscope data) were analyzed to extracted time-, frequency-, and wavelet-domain features for accurate and fine-grained characterization of human activities. Classification technique were applied to build both personalized model and generalized model for discriminating five daily human activities: going downstairs, going upstairs, walking, running, and jumping. Analyses conducted on 18 subjects showed that these human activities can be accurately recognized from smartphone-sensor behavior, with recognition rates expressed by the area under the ROC curve ranging from 84.97% to 90.65%. We also discuss a number of avenues for additional research to advance the state of the art in this area.
基于智能手机的人体活动识别的运动传感器行为分析
智能手机上丰富的传感器极大地便利了人们的生活,这也为准确识别人类活动提供了巨大的潜力。本文对智能手机惯性传感器在人体活动识别中的行为特征进行了实证研究。其背后的原理是,不同的人类活动会导致智能手机的姿势和动作变化程度不同。在这项工作中,运行一个Android应用程序作为后台作业来监控运动传感器的数据。对来自运动传感器的感官数据(主要包括加速度计和陀螺仪数据)进行分析,提取时间、频率和小波域特征,以准确和细致地表征人类活动。采用分类技术建立个性化模型和广义模型,对下楼、上楼、步行、跑步、跳跃五种人类日常活动进行区分。对18名受试者的分析表明,智能手机传感器的行为可以准确地识别出这些人类活动,ROC曲线下面积表示的识别率为84.97% ~ 90.65%。我们还讨论了一些进一步研究的途径,以推进这一领域的最新技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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