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An Extended Kalman Filter-Based Attitude Tracking Algorithm for Star Sensors

机译:基于扩展卡尔曼滤波的恒星传感器姿态跟踪算法

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Efficiency and reliability are key issues when a star sensor operates in tracking mode. In the case of high attitude dynamics, the performance of existing attitude tracking algorithms degenerates rapidly. In this paper an extended Kalman filtering-based attitude tracking algorithm is presented. The star sensor is modeled as a nonlinear stochastic system with the state estimate providing the three degree-of-freedom attitude quaternion and angular velocity. The star positions in the star image are predicted and measured to estimate the optimal attitude. Furthermore, all the cataloged stars observed in the sensor field-of-view according the predicted image motion are accessed using a catalog partition table to speed up the tracking, called star mapping. Software simulation and night-sky experiment are performed to validate the efficiency and reliability of the proposed method.
机译:当星形传感器以跟踪模式运行时,效率和可靠性是关键问题。在高姿态动力学的情况下,现有姿态跟踪算法的性能会迅速退化。本文提出了一种扩展的基于卡尔曼滤波的姿态跟踪算法。星型传感器被建模为非线性随机系统,其状态估计提供了三个自由度的姿态四元数和角速度。预测并测量星形图像中的星形位置,以估计最佳姿态。此外,使用目录分区表访问在传感器视场中根据预测图像运动观察到的所有分类星,以加快跟踪速度,这称为星图。通过软件仿真和夜空实验,验证了该方法的有效性和可靠性。

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