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A Rao-Blackwellisation Approach to GDM-SLAM - Integrating SLAM and Gas Distribution Mapping (GDM)

机译:GDM-SLAM的Rao-Blackwellisation方法-集成SLAM和气体分布图(GDM)

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In this paper we consider the problem of creating a two dimensional spatial representation of gas distribution with a mobile robot. In contrast to previous approaches to the problem of gas distribution mapping (GDM) we do not assume that the robot has perfect knowledge about its position. Instead we develop a probabilistic framework for simultaneous localisation and occupancy and gas distribution mapping (GDM-SLAM) that allows to account for the uncertainty about the robot's position when computing the gas distribution map. Considering the peculiarities of gas sensing in real-world environments, we show which dependencies in the posterior over occupancy and gas distribution maps can be neglected under certain practical assumptions. We develop a Rao-Blackwellised particle filter formulation of the GDM-SLAM problem that allows to plug in any algorithm to compute a gas distribution map from a sequence of gas sensor measurements and a known trajectory. In this paper we use the Kernel Based Gas Distribution Mapping (Kernel-GDM) method. As a first step towards outdoor gas distribution mapping we present results obtained in a large, uncontrolled, partly open indoor environment.
机译:在本文中,我们考虑了使用移动机器人创建气体分布的二维空间表示的问题。与以前解决气体分配映射(GDM)问题的方法相反,我们不认为机器人具有关于其位置的完美知识。相反,我们开发了同时定位,占用和气体分布图(GDM-SLAM)的概率框架,该框架可在计算气体分布图时考虑到机器人位置的不确定性。考虑到现实世界中气体传感的特殊性,我们显示了在某些实际假设下可以忽略后方占用率和气体分布图中的哪些相关性。我们针对GDM-SLAM问题开发了Rao-Blackwellised粒子过滤器公式,该公式允许插入任何算法来根据一系列气体传感器测量值和已知轨迹来计算气体分布图。在本文中,我们使用基于内核的气体分布图(Kernel-GDM)方法。作为迈向室外气体分布图的第一步,我们介绍了在一个大型,不受控制的,部分开放的室内环境中获得的结果。

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