A quaternion-based orientation estimation algorithm using an inertial measurement unit

Anthony Kim, M. F. Golnaraghit
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引用次数: 106

Abstract

This paper presents a real-time orientation estimation algorithm based on signals from a low-cost inertial measurement unit (IMU). The IMU consists of three MEMS accelerometers and three MEMS rate gyros. This approach is based on relationships between the quaternion representing the platform orientation, the measurement of gravity from the accelerometers, and the angular rate measurement from the gyros. Process and measurement models are developed, based on these relations, in order to implement them into an extended Kalman filter. The performance of each filter is evaluated in terms of the roll, pitch, and yaw angles. These are derived from the filter output since this orientation representation is more intuitive than the quaternion representation. Extensive testing of the filters with simulated and experimental data show that the filters perform very accurately in the roll and pitch angles, and even significantly corrects the yaw angle error drift.
一种基于四元数的惯性测量单元方位估计算法
提出了一种基于低成本惯性测量单元(IMU)信号的实时方位估计算法。IMU由三个MEMS加速度计和三个MEMS速率陀螺仪组成。该方法基于表示平台方向的四元数、来自加速度计的重力测量和来自陀螺仪的角速度测量之间的关系。基于这些关系建立了过程和测量模型,以便将它们实现为扩展的卡尔曼滤波器。每个滤波器的性能是根据滚转、俯仰角和偏航角来评估的。这些是从过滤器输出中派生出来的,因为这种方向表示比四元数表示更直观。对该滤波器进行了大量的仿真和实验测试,结果表明,该滤波器在横摇角和俯仰角上的表现非常准确,甚至可以显著地纠正偏航角误差漂移。
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