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A linear fusion algorithm for attitude determination using low cost MEMS-based sensors

机译:使用低成本基于MEMS的传感器进行姿态确定的线性融合算法

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This paper presents a novel sensing methodology with an extended Kalman-based fusion algorithm for attitude estimation, using inexpensive micromachined gyroscopes, accelerometers and magnetometers. Unlike conventional methodology using quaternions and Euler angles, in the proposed fusion algorithm the state vector is defined to be a 6 X 1 vector containing sensing components of earth gravity and magnetic field in the body frame. By this way, the Kalman model can be represented by linear equations, which makes the iterative computations easy to be implemented at a faster rate using inexpensive microprocessors. The computation of the filter is further simplified by updating gravity and magnetic vectors respectively in smaller dimension. Experiments are performed to validate the effectiveness of the proposed approach.
机译:本文介绍了一种新颖的传感方法,该方法采用了基于卡尔曼的扩展融合算法进行姿态估计,并使用了廉价的微机械陀螺仪,加速度计和磁力计。与使用四元数和欧拉角的常规方法不同,在提出的融合算法中,状态矢量定义为6 X 1矢量,其中包含人体框架中地球重力和磁场的感应分量。通过这种方式,卡尔曼模型可以由线性方程式表示,这使得使用廉价的微处理器易于以更快的速率实现迭代计算。通过分别以较小的尺寸更新重力和磁矢量,进一步简化了滤波器的计算。进行实验以验证所提出方法的有效性。

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