Enregistré dans:
Détails bibliographiques
Auteurs principaux: Li, Siru, Hong, Ziyang, Chen, Yushuai, Hu, Liang, Qin, Jiahu
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2409.18434
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
_version_ 1866917793045151744
author Li, Siru
Hong, Ziyang
Chen, Yushuai
Hu, Liang
Qin, Jiahu
author_facet Li, Siru
Hong, Ziyang
Chen, Yushuai
Hu, Liang
Qin, Jiahu
contents This paper presents a novel weakly supervised semantic segmentation method for radar segmentation, where the existing LiDAR semantic segmentation models are employed to generate semantic labels, which then serve as supervision signals for training a radar semantic segmentation model. The obtained radar semantic segmentation model outperforms LiDAR-based models, providing more consistent and robust segmentation under all-weather conditions, particularly in the snow, rain and fog. To mitigate potential errors in LiDAR semantic labels, we design a dedicated refinement scheme that corrects erroneous labels based on structural features and distribution patterns. The semantic information generated by our radar segmentation model is used in two downstream tasks, achieving significant performance improvements. In large-scale radar-based localization using OpenStreetMap, it leads to localization error reduction by 20.55\% over prior methods. For the odometry task, it improves translation accuracy by 16.4\% compared to the second-best method, securing the first place in the radar odometry competition at the Radar in Robotics workshop of ICRA 2024, Japan
format Preprint
id arxiv_https___arxiv_org_abs_2409_18434
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Get It For Free: Radar Segmentation without Expert Labels and Its Application in Odometry and Localization
Li, Siru
Hong, Ziyang
Chen, Yushuai
Hu, Liang
Qin, Jiahu
Robotics
This paper presents a novel weakly supervised semantic segmentation method for radar segmentation, where the existing LiDAR semantic segmentation models are employed to generate semantic labels, which then serve as supervision signals for training a radar semantic segmentation model. The obtained radar semantic segmentation model outperforms LiDAR-based models, providing more consistent and robust segmentation under all-weather conditions, particularly in the snow, rain and fog. To mitigate potential errors in LiDAR semantic labels, we design a dedicated refinement scheme that corrects erroneous labels based on structural features and distribution patterns. The semantic information generated by our radar segmentation model is used in two downstream tasks, achieving significant performance improvements. In large-scale radar-based localization using OpenStreetMap, it leads to localization error reduction by 20.55\% over prior methods. For the odometry task, it improves translation accuracy by 16.4\% compared to the second-best method, securing the first place in the radar odometry competition at the Radar in Robotics workshop of ICRA 2024, Japan
title Get It For Free: Radar Segmentation without Expert Labels and Its Application in Odometry and Localization
topic Robotics
url https://arxiv.org/abs/2409.18434