SemSegMap- 3D Segment-Based Semantic Localization
Andrei Cramariuc, Florian Tschopp, Nikhilesh Alatur, Stefan Benz,, Tillmann Falck, Marius Bruehlmeier, Benjamin Hahn, Juan Nieto, Roland, Siegwart

TL;DR
SemSegMap integrates semantic and color data with 3D LiDAR point clouds to enhance localization accuracy and robustness in autonomous robotic systems, achieving higher success rates in challenging environments.
Contribution
This work extends SegMap by incorporating semantic and color information into segment-based mapping, with new segmentation and descriptor extraction processes for improved localization.
Findings
50.9% more high-accuracy global localizations
Achieves accurate 6 DoF pose estimates in real-time
Demonstrates advantages on simulated and real-world datasets
Abstract
Localization is an essential task for mobile autonomous robotic systems that want to use pre-existing maps or create new ones in the context of SLAM. Today, many robotic platforms are equipped with high-accuracy 3D LiDAR sensors, which allow a geometric mapping, and cameras able to provide semantic cues of the environment. Segment-based mapping and localization have been applied with great success to 3D point-cloud data, while semantic understanding has been shown to improve localization performance in vision based systems. In this paper we combine both modalities in SemSegMap, extending SegMap into a segment based mapping framework able to also leverage color and semantic data from the environment to improve localization accuracy and robustness. In particular, we present new segmentation and descriptor extraction processes. The segmentation process benefits from additional distance…
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