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Design and Implementation of Practical Step Detection Algorithm for Wrist-Worn Devices

机译:腕戴式设备实用步检测算法的设计与实现

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摘要

In recent years, interest in wrist-worn devices has been growing, as market of wearable activity tracking devices have been enlarged. But, many wrist-worn devices have three main problems that activity tracking algorithms for wrist-worn devices should overcome: lack of sensor variety due to power consumption, low computing power, and noise from various sensor-carrying modes and walking velocities. This paper discusses an activity tracking, especially regarding step detection algorithm using three-axis accelerometer for wrist-worn devices. The proposed algorithm consists of three phases, which address the problems of wrist-worn devices. The first data preprocessing phase calculates the Euclidean norm of the acceleration vector. It enables the algorithm to track the movement of a device only with the acceleration data. The second data filtering phase reduces the noise with a simple digital low-pass filter. Then, the third peak detection phase adopts a sign-of-slope method and average threshold method to accurately detect the step peaks under different sensor-carrying modes and velocity conditions. A wrist-worn hardware prototype is designed and realized for algorithm evaluation. The experiment results show that the proposed algorithm is superior to the compared existing algorithm and commercial devices. The averaged detection error is approximately 1% in different test conditions.
机译:近年来,随着可穿戴活动跟踪设备市场的扩大,对腕戴设备的兴趣不断增长。但是,许多腕戴式设备有三个主要问题,腕戴式设备的活动跟踪算法应该克服:由于功耗,缺乏计算能力以及各种传感器携带模式和行走速度产生的噪声,传感器种类不足。本文讨论了活动跟踪,特别是关于使用三轴加速度计的手腕佩戴设备的步检测算法。所提出的算法包括三个阶段,解决了腕戴设备的问题。第一数据预处理阶段计算加速度矢量的欧几里得范数。它使算法仅使用加速度数据即可跟踪设备的运动。第二个数据滤波阶段使用简单的数字低通滤波器降低了噪声。然后,第三峰值检测阶段采用斜率符号法和平均阈值法,以在不同的传感器承载模式和速度条件下准确检测阶跃峰值。设计并实现了腕戴式硬件原型,用于算法评估。实验结果表明,该算法优于现有算法和商用设备。在不同的测试条件下,平均检测误差约为1%。

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