Simultaneous localization and mapping based on particle filter for sparse environment

Jian-Hua Chen, K. Lum
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引用次数: 2

Abstract

This paper presents a method for solving simulation localization and mapping (SLAM) in sparse-feature environment, by adopting a concept of particle filter with multiple extended Kalman filters (EKF). Compared with common FastSLAM where each particle is a sample of one vehicle path whereas each EKF is solely a feature estimator, the proposed algorithm includes the vehicle-pose estimate in each EKF whereas the particle is a sample of vehicle motion. Thus, the proposed algorithm ensures dead reckoning in the absence of features. Map construction is based on line features which are extracted from observation of the environment. Finally, simulation results demonstrate the feasibility and performance of the proposed SLAM algorithm.
稀疏环境下基于粒子滤波的同步定位与映射
本文提出了一种稀疏特征环境下求解仿真定位与映射(SLAM)的方法,该方法采用了带有多个扩展卡尔曼滤波器(EKF)的粒子滤波概念。与FastSLAM中每个粒子是一个车辆路径样本,而每个EKF仅是一个特征估计器相比,该算法在每个EKF中包含车辆姿态估计,而粒子是车辆运动的样本。因此,该算法保证了在没有特征的情况下进行航位推算。地图的构建是基于从环境观测中提取的线特征。最后,仿真结果验证了所提SLAM算法的可行性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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