Aminian K, Robert P, Jéquier E, Schutz Y
Laboratoire de Métrologie, Swiss Federal Institute of Technology, Lausanne.
Med Sci Sports Exerc. 1995 Feb;27(2):226-34.
Body accelerations during human walking were recorded by a portable measuring device. A new method for parameterizing body accelerations and finding the pattern of walking is outlined. Two neural networks were designed to recognize each pattern and estimate the speed and incline of walking. Six subjects performed treadmill walking followed by self-paced walking on an outdoor test circuit involving roads of various inclines. The neural networks were first "trained" by known patterns of treadmill walking. Then the inclines, the speeds, and the distance covered during overground walking (outdoor circuit) were estimated. The results show a good agreement between actual and predicted variables. The standard deviation of estimated incline was less than 2.6% and the maximum of the coefficient of variation of speed estimation is 6%. To the best of our knowledge, these results constitute the first assessment of speed, incline and distance covered during level and slope walking and offer investigators a new tool for assessing levels of outdoor physical activity.
通过一个便携式测量设备记录了人类行走过程中的身体加速度。概述了一种对身体加速度进行参数化并找出行走模式的新方法。设计了两个神经网络来识别每种模式并估计行走速度和坡度。六名受试者先在跑步机上行走,然后在包含各种坡度道路的户外测试路线上进行自定步速行走。神经网络首先通过已知的跑步机行走模式进行“训练”。然后估计户外行走(户外路线)过程中的坡度、速度和行走距离。结果表明实际变量和预测变量之间具有良好的一致性。估计坡度的标准差小于2.6%,速度估计的变异系数最大值为6%。据我们所知,这些结果构成了对水平和斜坡行走过程中的速度、坡度和行走距离的首次评估,并为研究人员提供了一种评估户外身体活动水平的新工具。