SLAM Based on Double Layer Cubature Kalman Filter

Feng Yang, Bo Jin, Mengting Yan, Yujuan Luo
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Abstract

In the simultaneous localization and mapping (SLAM), the challenge is the large computational cost, low accuracy and instability. In SLAM system, cubature Kalman filter (CKF) has shown good performance. However, in terms of algorithm accuracy and stability, double layer cubature Kalman filter (DLCKF) is better than CKF. It calculates the predicted state at next moment through the inner layer CKF, which is more accurate than the predicted value obtained directly through motion model. The outer layer CKF then updates the predicted state with the measurement to obtain a more accurate estimate. Combined with the advantages of DLCKF, an innovative filter-based SLAM algorithm based on double layer cubature Kalman filter was established in this paper to solve the above problems. Simulation results are presented that the positioning error of the proposed algorithm is significantly reduced and the accuracy of mapping is greatly improved compared with traditional EKF-SLAM, UKF-SLAM and CKF-SLAM.
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基于双层培养卡尔曼滤波的SLAM
同时定位与制图(SLAM)存在计算成本大、精度低、不稳定等问题。在SLAM系统中,培养卡尔曼滤波器(CKF)表现出了良好的性能。但在算法精度和稳定性方面,双层培养卡尔曼滤波(DLCKF)优于CKF。它通过内层CKF计算下一时刻的预测状态,比直接通过运动模型得到的预测值更准确。然后,外层CKF用测量更新预测状态,以获得更准确的估计。结合DLCKF的优点,本文建立了一种基于双层cubature Kalman滤波器的基于滤波器的SLAM算法,解决了上述问题。仿真结果表明,与传统的EKF-SLAM、UKF-SLAM和CKF-SLAM相比,该算法的定位误差显著减小,映射精度显著提高。
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