English | 简体中文
Lingdong Kong1,2
Youquan Liu3
Lai Xing Ng4
Benoit R. Cottereau5,6
Wei Tsang Ooi1
1National University of Singapore
2CNRS@CREATE
3Hochschule Bremerhaven
4Institute for Infocomm Research, A*STAR
5IPAL, CNRS IRL 2955, Singapore
6CerCo, CNRS UMR 5549, Universite Toulouse III
OpenESS
is an open-vocabulary event-based semantic segmentation (ESS) framework that synergizes information from image, text, and event-data domains to enable scalable ESS in an open-world, annotation-efficient manner.
Input Event Stream | “Driveable” | “Car” | “Manmade” |
Zero-Shot ESS | “Walkable” | “Barrier” | “Flat” |
- [2024.05] - Our paper is available on arXiv, click here to check it out. The code will be available later.
- [2024.04] - OpenESS was selected as a ✨ highlight ✨ at CVPR 2024 (2.8% = 324/11532).
- [2024.02] - OpenESS was accepted to CVPR 2024! 🎉
- Demo
- Installation
- Data Preparation
- Getting Started
- Benchmark
- TODO List
- Citation
- License
- Acknowledgements
Demo #1 | Demo #2 | Demo #3 |
---|---|---|
YouTube |
YouTube |
YouTube |
Kindly refer to INSTALL.md for the installation details.
Kindly refer to DATA_PREPARE.md for the details to prepare the DDD17-Seg and DSEC-Semantic datasets.
Please refer to GET_STARTED.md to learn more about how to use this codebase.
To be updated.
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If you find this work helpful, please kindly consider citing our paper:
@inproceedings{kong2024openess,
title = {OpenESS: Event-Based Semantic Scene Understanding with Open Vocabularies},
author = {Kong, Lingdong and Liu, Youquan and Ng, Lai Xing and Cottereau, Benoit R. and Ooi, Wei Tsang},
booktitle = {IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
year = {2024},
}
This work is under the Apache License Version 2.0, while some specific implementations in this codebase might be with other licenses. Kindly refer to LICENSE.md for a more careful check, if you are using our code for commercial matters.
To be updated.