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Bayesian Inference in the Space of Topological Maps

机译:拓扑图空间中的贝叶斯推断

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摘要

While probabilistic techniques have previously been investigated extensively for performing inference over the space of metric maps, no corresponding general-purpose methods exist for topological maps. We present the concept of probabilistic topological maps (PTMs), a sample-based representation that approximates the posterior distribution over topologies, given available sensor measurements. We show that the space of topologies is equivalent to the intractably large space of set partitions on the set of available measurements. The combinatorial nature of the problem is overcome by computing an approximate, sample-based representation of the posterior. The PTM is obtained by performing Bayesian inference over the space of all possible topologies, and provides a systematic solution to the problem of perceptual aliasing in the domain of topological mapping. In this paper, we describe a general framework for modeling measurements, and the use of a Markov-chain Monte Carlo algorithm that uses specific instances of these models for odometry and appearance measurements to estimate the posterior distribution. We present experimental results that validate our technique and generate good maps when using odometry and appearance, derived from panoramic images, as sensor measurements.
机译:尽管先前已经对概率技术进行了广泛的研究以在度量图的空间上进行推理,但是不存在用于拓扑图的相应的通用方法。我们提出了概率拓扑图(PTM)的概念,这是一个基于样本的表示形式,它在给定可用的传感器测量值的情况下,近似地表示了拓扑的后验分布。我们表明,拓扑空间等于可用度量集上难以置信的大空间。通过计算后验的近似,基于样本的表示,可以克服问题的组合性质。通过在所有可能拓扑的空间上执行贝叶斯推断来获得PTM,并为拓扑映射领域中的感知混叠问题提供了系统的解决方案。在本文中,我们描述了用于对测量进行建模的通用框架,以及使用马尔可夫链蒙特卡洛算法的方法,该算法使用这些模型的特定实例进行里程表和外观测量来估计后验分布。我们提供的实验结果验证了我们的技术,并在使用从全景图像得出的里程表和外观作为传感器测量值时生成了良好的地图。

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