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Kalman-Filter-Based Walking Distance Estimation for a Smart-Watch

机译:Kalman-筛选的智能手表的步行距离估计

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摘要

A novel walking distance estimation algorithm using the inertial sensors of the smart-watch is proposed. Firstly, the peaks of the norm of the accelerometer and gyroscope signals are detected. Due to arm swing, walking step detection using these peaks are not reliable. A Kalman filter is used to combine with the peak detection algorithm applied on the accelerometer and gyroscope norm peaks and robustly detect walking steps even if there is large arm swing. Walking distance is estimated using walking step time and walking length relationship. The proposed algorithm was tested on 25 subjects: each subject walked 50 m six times with different walking speed and different arm swing speed. The standard deviation of walking distance estimation error is 3.9 m (without person dependent calibration) and 1.9 m (with person dependent calibration) for a 50m distance.
机译:提出了一种新颖的步行距离估计算法,使用智能手表的惯性传感器。首先,检测到加速度计和陀螺仪信号的规范的峰。由于臂摇摆,使用这些峰值的步行步骤检测不可靠。卡尔曼滤波器用于与加速度计和陀螺仪规范峰上施加的峰值检测算法组合,即使有大的臂摆动,也能够鲁棒地检测行走步骤。步行距离估计使用行走步骤时间和行走长度关系。该算法在25个科目上进行了测试:每个受试者以不同的步行速度和不同的臂摇摆速度走了50米六次。步行距离估计误差的标准偏差为3.9米(无人依赖校准)和1.9米(具有人依赖校准)50米的距离。

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