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首页> 外文期刊>Measurement Science & Technology >Accurate human limb angle measurement: sensor fusion through Kalman, least mean squares and recursive least-squares adaptive filtering
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Accurate human limb angle measurement: sensor fusion through Kalman, least mean squares and recursive least-squares adaptive filtering

机译:精确的人肢角度测量:通过卡尔曼,最小均方和递归最小二乘自适应滤波的传感器融合

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摘要

Inertial sensors are widely used in human body motion monitoring systems since they permit us to determine the position of the subject's limbs. Limb angle measurement is carried out through the integration of the angular velocity measured by a rate sensor and the decomposition of the components of static gravity acceleration measured by an accelerometer. Different factors derived from the sensors' nature, such as the angle random walk and dynamic bias, lead to erroneous measurements. Dynamic bias effects can be reduced through the use of adaptive filtering based on sensor fusion concepts. Most existing published works use a Kalman filtering sensor fusion approach. Our aim is to perform a comparative study among different adaptive filters. Several least mean squares (LMS), recursive least squares (RLS) and Kalman filtering variations are tested for the purpose of finding the best method leading to a more accurate and robust limb angle measurement. A new angle wander compensation sensor fusion approach based on LMS and RLS filters has been developed.
机译:惯性传感器广泛用于人体运动监控系统,因为它们使我们能够确定对象四肢的位置。通过对由速率传感器测量的角速度和由加速度计测量的静态重力加速度的分量进行积分,来进行下摆角测量。源自传感器性质的不同因素(例如角度随机游走和动态偏差)会导致错误的测量。通过使用基于传感器融合概念的自适应滤波,可以减少动态偏差效应。现有的大多数出版作品都使用卡尔曼滤波传感器融合方法。我们的目的是在不同的自适应滤波器之间进行比较研究。测试了几个最小均方(LMS),递归最小二乘(RLS)和卡尔曼滤波变量,目的是找到导致更准确,更可靠的肢体角度测量的最佳方法。已经开发了一种基于LMS和RLS滤波器的新型角漂移补偿传感器融合方法。

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