Youquan Liu*,1
Lingdong Kong*,2,3
Xiaoyang Wu4
Runnan Chen4
Xin Li5
Liang Pan2
Ziwei Liu6
Yuexin Ma1
1ShanghaiTech University
2Shanghai AI Laboratory
3National University of Singapore
4University of Hong Kong
5East China Normal University
6S-Lab, Nanyang Technological University
M3Net
is a new type of LiDAR segmentation network that unifies the multi-task, multi-dataset, and multi-modality learning objectives.
- [2024.05] - Our paper is available on arXiv, click here to check it out.
- 🔥[2024.02] - M3Net was accepted to CVPR 2024!
Please refer to GET_STARTED.md to learn more about how to use this codebase.
SemanticKITTI
nuScenes
Waymo Open
If you find this work helpful, please kindly consider citing our paper:
@inproceedings{liu2024multi,
title={Multi-Space Alignments Towards Universal LiDAR Segmentation},
author={Liu, Youquan and Kong, Lingdong and Wu, Xiaoyang and Chen, Runnan and Li, Xin and Pan, Liang and Liu, Ziwei and Ma, Yuexin},
booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
pages={14648--14661},
year={2024}
}
The overall structure of this repo is derived from Pointcept, SAM, OpenSeed and OpenPCSeg. Thank the authors for their great work!