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首页> 外文期刊>Journal of Intelligent & Robotic Systems >Dual FastSLAM: Dual Factorization of the Particle Filter Based Solution of the Simultaneous Localization and Mapping Problem
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Dual FastSLAM: Dual Factorization of the Particle Filter Based Solution of the Simultaneous Localization and Mapping Problem

机译:Dual FastSLAM:基于粒子滤波的双重分解同时定位和映射问题的解决方案

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The process of building a map with a mobile robot is known as the Simultaneous Localization and Mapping (SLAM) problem, and is considered essential for achieving true autonomy. The best existing solutions to the SLAM problem are based on probabilistic techniques, mainly derived from the basic Bayes Filter. A recent approach is the use of Rao-Blackwellized particle filters. The FastSLAM solution factorizes the Bayes SLAM posterior using a particle filter to estimate over the possible paths of the robot and several independent Kalman Filters attached to each particle to estimate the location of landmarks conditioned to the robot path. Although there are several successful implementations of this idea, there is a lack of applications to indoor environments where the most common feature is the line segment corresponding to straight walls. This paper presents a novel factorization, which is the dual of the existing FastSLAM one, that decouples the SLAM into a map estimation and a localization problem, using a particle filter to estimate over maps and a Kalman Filter attached to each particle to estimate the robot pose conditioned to the given map. We have implemented and tested this approach, analyzing and comparing our solution with the FastSLAM one, and successfully building feature based maps of indoor environments.
机译:使用移动机器人构建地图的过程被称为同时定位和地图绘制(SLAM)问题,被认为是实现真正自治的必要条件。 SLAM问题的现有最佳解决方案是基于概率技术的,主要是从基本贝叶斯滤波器中得出的。最近的方法是使用Rao-Blackwellized粒子过滤器。 FastSLAM解决方案使用粒子滤波器对机器人的可能路径进行估计,并使用多个独立的卡尔曼滤波器(附加到每个粒子上)估计适应机器人路径的路标位置,从而对贝叶斯SLAM进行分解。尽管此想法有几种成功的实现方式,但缺乏对室内环境的应用,在室内环境中,最常见的特征是对应于直墙的线段。本文提出了一种新颖的因式分解,它是现有FastSLAM的对偶分解,它将SLAM解耦为地图估计和定位问题,使用粒子滤波器对地图进行估计,并使用附加到每个粒子的卡尔曼滤波器来估计机器人以给定地图为条件的姿势。我们已经实施并测试了这种方法,将我们的解决方案与FastSLAM解决方案进行了分析和比较,并成功构建了基于特征的室内环境地图。

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