基于智能手机加速度计的家庭活动识别及智能手机位置影响的可行性研究

V. Della Mea, Omar Quattrin, M. Parpinel
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引用次数: 12

摘要

背景:肥胖和缺乏运动是慢性疾病最重要的危险因素。本研究旨在(i)开发和测试一种基于智能手机加速度计的家庭活动分类方法;(ii)评估智能手机位置的影响;(三)评估佩戴智能手机进行活动识别的可接受性。方法:开发Android应用程序,记录加速度计数据并计算5秒时间块上的描述特征,然后使用9种算法进行分类。家庭活动包括:坐着、在电脑前工作、走路、熨衣服、扫地、提着购物袋下楼、提着大箱子走路、提着购物袋爬楼梯。10名志愿者进行了三次活动,每人将智能手机放在不同的位置(口袋、手臂和手腕)。然后要求用户回答一份问卷。结果:共收集时间块1440个。三种算法显示,所有智能手机位置的准确率都超过80%。虽然对一些受试者来说,智能手机让他们感到不舒服,但它似乎并没有真正影响他们的活动。结论:智能手机可以用于识别家庭活动。进一步的发展是仅从加速度计数据开始测量代谢当量任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A feasibility study on smartphone accelerometer-based recognition of household activities and influence of smartphone position
ABSTRACT Background: Obesity and physical inactivity are the most important risk factors for chronic diseases. The present study aimed at (i) developing and testing a method for classifying household activities based on a smartphone accelerometer; (ii) evaluating the influence of smartphone position; and (iii) evaluating the acceptability of wearing a smartphone for activity recognition. Methods: An Android application was developed to record accelerometer data and calculate descriptive features on 5-second time blocks, then classified with nine algorithms. Household activities were: sitting, working at the computer, walking, ironing, sweeping the floor, going down stairs with a shopping bag, walking while carrying a large box, and climbing stairs with a shopping bag. Ten volunteers carried out the activities for three times, each one with a smartphone in a different position (pocket, arm, and wrist). Users were then asked to answer a questionnaire. Results: 1440 time blocks were collected. Three algorithms demonstrated an accuracy greater than 80% for all smartphone positions. While for some subjects the smartphone was uncomfortable, it seems that it did not really affect activity. Conclusions: Smartphones can be used to recognize household activities. A further development is to measure metabolic equivalent tasks starting from accelerometer data only.
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