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Comparative analysis of different adaptive filters for tracking lower segments of a human body using inertial motion sensors

机译:使用惯性运动传感器跟踪人体下部的不同自适应滤波器的比较分析

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For all segments and tests, a modified Kalman filter and a quasi-static sensor fusion algorithm were equally accurate (precision and accuracy ~2-3°) compared to normalized least mean squares filtering, recursive least-squares filtering and standard Kalman filtering. The aims were to: (1) compare adaptive filtering techniques used for sensor fusion and (2) evaluate the precision and accuracy for a chosen adaptive filter. Motion sensors (based on inertial measurement units) are limited by accumulative integration errors arising from sensor bias. This drift can partly be handled with adaptive filtering techniques. To advance the measurement technique in this area, a new modified Kalman filter is developed. Differences in accuracy were observed during different tests especially drift in the internal/external rotation angle. This drift can be minimized if the sensors include magnetometers.
机译:与归一化最小均方滤波,递归最小二乘滤波和标准卡尔曼滤波相比,在所有细分市场和测试中,改进的卡尔曼滤波器和准静态传感器融合算法均具有相同的精度(精度和精度约为2-3°)。目的是:(1)比较用于传感器融合的自适应滤波技术;(2)评估所选自适应滤波器的精度和准确性。运动传感器(基于惯性测量单位)受传感器偏差引起的累积积分误差的限制。这种漂移可以部分地通过自适应滤波技术来处理。为了提高该领域的测量技术,开发了一种新的改进的卡尔曼滤波器。在不同的测试中观察到精度差异,尤其是内部/外部旋转角度的漂移。如果传感器包括磁力计,则该漂移可以最小化。

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