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Localization Exploiting Semantic and Metric Information in Non-static Indoor Environments

Mobile robot localization is an important task in navigation and can be challenging, especially in non-static environments as the scene naturally involves movable objects and appearance changes. In this paper, we address the problem of estimating the robot’s pose in non-static environments containin...

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Bibliographic Details
Published in:Journal of intelligent & robotic systems 2023-12, Vol.109 (4), p.86, Article 86
Main Authors: Gomez, Clara, Hernandez, Alejandra C., Barber, Ramón, Stachniss, Cyrill
Format: Article
Language:English
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Summary:Mobile robot localization is an important task in navigation and can be challenging, especially in non-static environments as the scene naturally involves movable objects and appearance changes. In this paper, we address the problem of estimating the robot’s pose in non-static environments containing movable objects. We understand as non-static environments, dynamic environments in which objects might be moved or changed their appearance. We propose a probabilistic localization approach that combines metric and semantic information and takes into account both, static and movable objects. We perform a pixel-wise association of depth and semantic data from an RGB-D sensor with a semantically-augmented truncated signed distance field (TSDF) in order to estimate the robot’s pose. The combination of metric and semantic information increases the robustness w.r.t. movable objects and object appearance changes. The experiments conducted in a real indoor environment and a publicly-available dataset suggest that our approach successfully estimates robot pose in non-static environments and they show an improvement compared to robot localization based only on metric or semantic information and compared to a feature-based method.
ISSN:0921-0296
1573-0409
DOI:10.1007/s10846-023-02021-y