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Comparison of Varied 2D Mapping Approaches by Using Practice-Oriented Evaluation Criteria

2022-10-19 07:12:17
Justin Ziegenbein, Manuel Schrick, Marko Thiel, Johannes Hinckeldeyn, Jochen Kreutzfeldt

Abstract

A key aspect of the precision of a mobile robots localization is the quality and aptness of the map it is using. A variety of mapping approaches are available that can be employed to create such maps with varying degrees of effort, hardware requirements and quality of the resulting maps. To create a better understanding of the applicability of these different approaches to specific applications, this paper evaluates and compares three different mapping approaches based on simultaneous localization and mapping, terrestrial laser scanning as well as publicly accessible building contours.

Abstract (translated)

URL

https://arxiv.org/abs/2210.10338

PDF

https://arxiv.org/pdf/2210.10338.pdf


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