...
首页> 外文期刊>Journal of applied physiology >Automatic identification of physical activity types and sedentary behaviors from triaxial accelerometer: laboratory-based calibrations are not enough
【24h】

Automatic identification of physical activity types and sedentary behaviors from triaxial accelerometer: laboratory-based calibrations are not enough

机译:通过三轴加速度计自动识别身体活动类型和久坐行为:基于实验室的校准是不够的

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

"Objective" methods to monitor physical activity and sedentary patterns in free-living conditions are necessary to further our understanding of their impacts on health. In recent years, many software solutions capable of automatically identifying activity types from portable accelerometry data have been developed, with promising results in controlled conditions, but virtually no reports on field tests. An automatic classification algorithm initially developed using laboratory-acquired data (59 subjects engaging in a set of 24 standardized activities) to discriminate between 8 activity classes (lying, slouching, sitting, standing, walking, running, and cycling) was applied to data collected in the field. Twenty volunteers equipped with a hip-worn triaxial accelerometer performed at their own pace an activity set that included, among others, activities such as walking the streets, running, cycling, and taking the bus. Performances of the laboratory-calibrated classification algorithm were compared with those of an alternative version of the same model including field-collected data in the learning set. Despite good results in laboratory conditions, the performances of the laboratory-calibrated algorithm (assessed by confusion matrices) decreased for several activities when applied to free-living data. Recalibrating the algorithm with data closer to real-life conditions and from an independent group of subjects proved useful, especially for the detection of sedentary behaviors while in transports, thereby improving the detection of overall sitting (sensitivity: laboratory model = 24.9%; recalibrated model = 95.7%). Automatic identification methods should be developed using data acquired in free-living conditions rather than data from standardized laboratory activity sets only, and their limits carefully tested before they are used in field studies.
机译:监视我们在自由生活条件下的身体活动和久坐模式的“客观”方法对于增进我们对其对健康的影响的了解是必要的。近年来,已经开发了许多能够从便携式加速度计数据中自动识别活动类型的软件解决方案,在受控条件下取得了可喜的结果,但实际上没有现场测试的报告。最初使用实验室获得的数据(59名受试者参与一组24项标准化活动)开发的一种自动分类算法,用于区分8种活动类别(躺着,懒散,坐着,站立,行走,跑步和骑自行车),将其应用于收集的数据在该领域。二十名配备了髋关节磨损三轴加速度计的志愿者按照自己的步调进行了一系列活动,其中包括步行街,跑步,骑自行车和乘公交车等活动。将实验室校准分类算法的性能与相同模型的替代版本(包括学习集中的现场收集数据)的性能进行了比较。尽管在实验室条件下取得了良好的结果,但将实验室校准算法(由混淆矩阵评估)的性能在应用于自由活动数据时的几种活动却有所下降。用更接近实际情况的数据和来自独立对象组的数据重新校准算法被证明是有用的,特别是对于在运输途中久坐行为的检测,从而改善了整体坐姿的检测(灵敏度:实验室模型= 24.9%;重新校准的模型= 95.7%)。自动识别方法应使用在自由活动条件下获得的数据开发,而不是仅从标准化实验室活动集中获得的数据开发,并且在将其限制用于现场研究之前,应仔细测试其限制。

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