首页> 外文期刊>Information >Computer Vision-Based Unobtrusive Physical Activity Monitoring in School by Room-Level Physical Activity Estimation: A Method Proposition
【24h】

Computer Vision-Based Unobtrusive Physical Activity Monitoring in School by Room-Level Physical Activity Estimation: A Method Proposition

机译:通过室内水平体育活动估计对学校中基于计算机视觉的不干扰体育活动进行监视:一种方法主张

获取原文
           

摘要

As sedentary lifestyles and childhood obesity are becoming more prevalent, research in the field of physical activity (PA) has gained much momentum. Monitoring the PA of children and adolescents is crucial for ascertaining and understanding the phenomena that facilitate and hinder PA in order to develop effective interventions for promoting physically active habits. Popular individual-level measures are sensitive to social desirability bias and subject reactivity. Intrusiveness of these methods, especially when studying children, also limits the possible duration of monitoring and assumes strict submission to human research ethics requirements and vigilance in personal data protection. Meanwhile, growth in computational capacity has enabled computer vision researchers to successfully use deep learning algorithms for real-time behaviour analysis such as action recognition. This work analyzes the weaknesses of existing methods used in PA research; gives an overview of relevant advances in video-based action recognition methods; and proposes the outline of a novel action intensity classifier utilizing sensor-supervised learning for estimating ambient PA. The proposed method, if applied as a distributed privacy-preserving sensor system, is argued to be useful for monitoring the spatio-temporal distribution of PA in schools over long periods and assessing the efficiency of school-based PA interventions.
机译:随着久坐的生活方式和儿童肥胖日益普遍,体育锻炼(PA)领域的研究获得了很大的发展势头。监测儿童和青少年的PA对确定和理解促进和阻碍PA的现象至关重要,以便开发出有效的干预措施来促进体育锻炼习惯。流行的个人层面的措施对社会期望偏差和主体反应敏感。这些方法的侵入性,特别是在研究儿童时,也限制了监视的持续时间,并假定严格遵守人类研究道德要求和对个人数据保护的警惕。同时,计算能力的增长使计算机视觉研究人员能够成功地将深度学习算法用于动作行为等实时行为分析。这项工作分析了PA研究中使用的现有方法的缺点;概述了基于视频的动作识别方法的相关进展;并提出了一种新颖的动作强度分类器的概述,该分类器利用传感器监督的学习来估计环境功率放大器。所提出的方法如果用作分布式隐私保护传感器系统,则被认为对于长期监视学校中PA的时空分布以及评估基于学校的PA干预的效率很有用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号