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Average Step Length Estimation Models’ Evaluation Using Inertial Sensors: A Review

机译:使用惯性传感器的平均步长估计模型评估:回顾

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摘要

Inertial sensors of smartphones and other Internet-of-Things devices present a very promising tool to monitor users’ activity including their step length. In this review paper, we deal with an in-depth analysis and comparison of 13 representative step length estimation models using smartphone inertial sensors: step-frequency-based, acceleration-based, angle-based, and multiparameter. Hereby, we have studied the influence of different walking speeds and four typical sensor positions on the models’ performance. Results indicate that smartphone position affected the performance of most acceleration-based models derived from a gait model. Their performance deteriorated if smartphone was carried in hand or pocket. Walking speed affected the performance of models that include step frequency when tuned with personalized sets of constants. Most of them performed better for fast and normal walking speeds. During this research, we also established an open-source dataset that contains over 22 km of gait measurements obtained from a group of 15 healthy adults.
机译:智能手机和其他物联网设备的惯性传感器是监视用户活动(包括步长)的非常有前途的工具。在这篇综述文章中,我们使用智能手机惯性传感器对13种代表性步长估计模型进行了深入的分析和比较:基于步频的,基于加速度的,基于角度的和多参数的。因此,我们研究了不同步行速度和四个典型传感器位置对模型性能的影响。结果表明,智能手机的位置会影响大多数基于步态模型的基于加速度的模型的性能。如果用手或口袋携带智能手机,其性能会下降。步行速度会影响模型的性能,其中包括使用个性化常量集进行调整时的阶跃频率。他们大多数人在快速和正常的步行速度下表现更好。在这项研究中,我们还建立了一个开源数据集,其中包含从15名健康成年人中获得的22公里以上步态测量值。

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