基于四元数的MARG传感器方向估计的扩展卡尔曼滤波

J. L. Marins, X. Yun, E. Bachmann, R. McGhee, M. Zyda
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引用次数: 559

摘要

提出了一种扩展的卡尔曼滤波器,用于使用新开发的MARG(磁、角速率和重力)传感器实时估计刚体方向。每个MARG传感器包含一个三轴磁强计、一个三轴角速率传感器和一个三轴加速度计。该滤波器使用四元数而不是欧拉角表示旋转,从而消除了与姿态估计相关的长期存在的奇异性问题。定义了刚体角运动和角速度测量的过程模型。该过程模型将角速率转换为四元数速率,并对其进行积分得到四元数。利用高斯-牛顿迭代算法寻找将物体坐标系中加速度和地磁场的测量值与地球坐标系中计算值联系起来的最佳四元数。将最佳四元数作为卡尔曼滤波测量的一部分。该方法使卡尔曼滤波的测量方程变为线性,大大减少了计算量,使实时估计方向成为可能。用合成数据和实际传感器数据对该滤波器进行了广泛的测试,证明它是令人满意的。测试用例包括大的初始错误和高噪声水平的存在。在所有情况下,滤波器都能够收敛并准确地跟踪旋转运动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An extended Kalman filter for quaternion-based orientation estimation using MARG sensors
Presents an extended Kalman filter for real-time estimation of rigid body orientation using the newly developed MARG (magnetic, angular rate, and gravity) sensors. Each MARG sensor contains a three-axis magnetometer, a three-axis angular rate sensor, and a three-axis accelerometer. The filter represents rotations using quaternions rather than Euler angles, which eliminates the long-standing problem of singularities associated with attitude estimation. A process model for rigid body angular motions and angular rate measurements is defined. The process model converts angular rates into quaternion rates, which are integrated to obtain quaternions. The Gauss-Newton iteration algorithm is utilized to find the best quaternion that relates the measured accelerations and earth magnetic field in the body coordinate frame to calculated values in the earth coordinate frame. The best quaternion is used as part of the measurements for the Kalman filter. As a result of this approach, the measurement equations of the Kalman filter become linear, and the computational requirements are significantly reduced, making it possible to estimate orientation in real time. Extensive testing of the filter with synthetic data and actual sensor data proved it to be satisfactory. Test cases included the presence of large initial errors as well as high noise levels. In all cases the filter was able to converge and accurately track rotational motions.
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