Geometry matters: Place recognition in 2D range scans using Geometrical Surface Relations

Marian Himstedt, E. Maehle
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引用次数: 12

Abstract

Place recognition is a fundamental requirement for mobile robots. It is particularly needed for detecting loop closures in SLAM and to enable self-localization for mobile robots given a prior map. The multitude of existing approaches rely on appearance based methods, e.g. the extraction of interest points in terms of local extrema. It can be observed that the availability of these features is highly environment specific and the limited descriptiveness causes a large number of false-positive matches. This paper utilizes a generic environment description based on normal surface primitives. The association of different places is done using Geometrical Surface Relations (GSR) of co-occurring primitives. Experimental results obtained from publicly available datasets demonstrate that GSR outperforms state-of-the-art approaches in place recognition for large scale outdoor as well as indoor environments.
几何问题:使用几何表面关系在2D范围扫描中进行位置识别
位置识别是移动机器人的基本要求。在SLAM中检测环路闭合以及在给定先验地图的情况下实现移动机器人的自定位是特别需要的。现有的许多方法依赖于基于外观的方法,例如根据局部极值提取兴趣点。可以观察到,这些特征的可用性是高度特定于环境的,有限的描述性导致了大量的假阳性匹配。本文采用了一种基于法向曲面基元的通用环境描述。不同位置的关联是使用共发生基元的几何表面关系(GSR)来完成的。从公开数据集获得的实验结果表明,在大规模室外和室内环境中,GSR在位置识别方面优于最先进的方法。
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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