基于强跟踪平方根中心差分卡尔曼滤波的自动驾驶汽车FastSLAM改进算法

Jianmin Duan, Dan Liu, Hongxiao Yu, Hui Shi
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引用次数: 5

摘要

快速同时定位与映射(FastSLAM)是一种基于rao - blackwelzed粒子滤波的流行算法,用于解决自动驾驶汽车大规模同时定位与映射(SLAM)问题,但存在两个严重缺陷:一是雅可比矩阵的计算以及非线性车辆运动学模型和非线性环境测量模型的线性逼近问题;二是粒子滤波建议分布不准确导致的粒子集退化问题。为此,本文提出了一种基于强跟踪平方根中心差分卡尔曼滤波(STSRCDKF)的改进FastSLAM算法来克服这些问题。在该算法中,STSRCDKF是基于强跟踪滤波器(STF)和平方根中心差分卡尔曼滤波器(SRCDKF)的组合,STSRCDKF用于设计粒子滤波器的自适应调整建议分布和估计特征地标的高斯密度。通过仿真和实验测试,将所提算法的性能与UFastSLAM和FastSLAM2.0进行了比较,结果验证了所提算法具有更好的自适应性和鲁棒性。降低了计算成本,提高了状态估计的准确性和一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved FastSLAM Algorithm for Autonomous Vehicle Based on the Strong Tracking Square Root Central Difference Kalman Filter
Fast simultaneous localization and mapping (FastSLAM), a popular algorithm based on the Rao-Blackwellized Particle Filter, has been used to solve the large-scale simultaneous localization and mapping (SLAM) problem for autonomous vehicle, but it suffers from two serious shortcomings: one is the calculation of Jacobian matrices and the linear approximations of the nonlinear vehicle kinematics model and the nonlinear environment measurement model, the other is particle set degeneracy due to inaccurate proposal distribution of particle filter. Hence an improved FastSLAM algorithm based on the strong tracking square root central difference Kalman filter (STSRCDKF) is proposed in this paper to overcome these problems. In the proposed algorithm, STSRCDKF is based on the combination of a strong tracking filter (STF) and a square root central difference Kalman filter (SRCDKF), STSRCDKF is used to design an adaptive adjustment proposal distribution of the particle filter and to estimate the Gaussian densities of the feature landmarks. The performance of the proposed algorithm is compared with that of UFastSLAM and FastSLAM2.0 in simulations and experimental tests, the results verify that the proposed algorithm has better adaptability and robustness. Furthermore, it reduces computational cost and improves state estimation accuracy and consistency.
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