首页> 外文期刊>IEEE transactions on information technology in biomedicine >Detection of Daily Activities and Sports With Wearable Sensors in Controlled and Uncontrolled Conditions
【24h】

Detection of Daily Activities and Sports With Wearable Sensors in Controlled and Uncontrolled Conditions

机译:在可控和不可控条件下使用可穿戴传感器检测日常活动和运动

获取原文
获取原文并翻译 | 示例
           

摘要

Physical activity has a positive impact on people''s well-being, and it may also decrease the occurrence of chronic diseases. Activity recognition with wearable sensors can provide feedback to the user about his/her lifestyle regarding physical activity and sports, and thus, promote a more active lifestyle. So far, activity recognition has mostly been studied in supervised laboratory settings. The aim of this study was to examine how well the daily activities and sports performed by the subjects in unsupervised settings can be recognized compared to supervised settings. The activities were recognized by using a hybrid classifier combining a tree structure containing a priori knowledge and artificial neural networks, and also by using three reference classifiers. Activity data were collected for 68 h from 12 subjects, out of which the activity was supervised for 21 h and unsupervised for 47 h. Activities were recognized based on signal features from 3-D accelerometers on hip and wrist and GPS information. The activities included lying down, sitting and standing, walking, running, cycling with an exercise bike, rowing with a rowing machine, playing football, Nordic walking, and cycling with a regular bike. The total accuracy of the activity recognition using both supervised and unsupervised data was 89% that was only 1% unit lower than the accuracy of activity recognition using only supervised data. However, the accuracy decreased by 17% unit when only supervised data were used for training and only unsupervised data for validation, which emphasizes the need for out-of-laboratory data in the development of activity-recognition systems. The results support a vision of recognizing a wider spectrum, and more complex activities in real life settings.
机译:体育锻炼对人们的福祉有积极的影响,也可能减少慢性疾病的发生。具有可穿戴传感器的活动识别可以向用户提供有关他/她关于体育活动和运动的生活方式的反馈,从而促进更加积极的生活方式。到目前为止,活动识别主要是在有监督的实验室环境中进行的。这项研究的目的是检验与无监督环境相比,无监督环境下受试者的日常活动和体育运动如何被识别。通过使用混合分类器,将包含先验知识的树结构和人工神经网络相结合,并且还使用三个参考分类器,来识别活动。从12名受试者中收集了68小时的活动数据,其中对活动进行了21小时的监督,对未进行47小时的监督。根据臀部和手腕上的3-D加速度计的信号特征以及GPS信息识别活动。这些活动包括躺下,坐着,站着,步行,跑步,骑健身自行车骑行,用划船机划船,踢足球,越野行走以及骑普通自行车骑行。使用监督和非监督数据进行活动识别的总准确度为89%,仅比使用监督数据进行活动识别的准确性低1%。但是,当仅使用监督数据进行训练而仅使用非监督数据进行验证时,准确性降低了17%单位,这强调了在活动识别系统的开发中需要实验室外数据。结果支持在现实生活中认识到更广泛的领域和更复杂的活动的愿景。

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