Please check out the new version of our dataset instead:
https://github.com/Vision-CAIR/3DCoMPaT-v2
Created by: Yuchen Li, Ujjwal Upadhyay, Habib Slim, Ahmed Abdelreheem, Arpit Prajapati, Suhail Pothigara, Peter Wonka, Mohamed Elhoseiny
This is the official repository for 3DCoMPaT, "Composition of Materials on Parts of 3D Things", accepted at ECCV-2022 for an Oral presentation.
To get the most out of this repository, please download the 3DCoMPaT dataset by filling this form.
You can browse the 3D models using the following link: 3D CoMPaT Browser
- Add code and pretrained models for 3D Shape and Part Classification tasks
- Add code and pretrained models for Sim2Real Transfer tasks
- Add the 2D data-API
- Add code and pre-trained models for 2D Shape Classification
- Add code and pretrained models for BPNet
- Add code for 2D/3D Material Segmentation tasks
- Add the 3D data-API
- Add the evaluation code
- Add code and pre-trained models for 2D Material Tagging
- Provide examples for evaluating GCR task.
- Add pretrained models for 2D/3D Material Segmentation tasks
- Add code and pretrained models for PointGroup
If you find this work useful in your research, please consider citing:
@article{li20223dcompat,
title={3D CoMPaT: Composition of Materials on Parts of 3D Things (ECCV 2022)},
author={Yuchen Li, Ujjwal Upadhyay, Habib Slim,
Ahmed Abdelreheem, Arpit Prajapati,
Suhail Pothigara, Peter Wonka, Mohamed Elhoseiny},
journal = {ECCV},
year={2022}
}