Awesome
Convolutional Occupancy Networks for Point Clouds with Visibility Information
This repository contains the implementation of Convolutional Occupancy Networks for Point Clouds with Visibility Information as described in the paper Deep Surface Reconstruction for Point Clouds with Visibility Information.
The code is largely based on the original repository.
Data
The datasets used in this repository can be downloaded here.
The pretrained models can be downloaded with:
bash scripts/download_pretrained.sh
Reconstruction
For reconstructing e.g. the ModelNet10 dataset run
python generate.py configs/pointcloud/modelnet/config
where config
should be replaced with
modelnetTR.yaml
for reconstruction from a point cloud (traditional ConvONet)modelnetSV.yaml
for reconstruction from a point cloud augmented with sensor vectorsmodelnetAP.yaml
for reconstruction from a point cloud augmented with sensor vectors and auxiliary points
References
If you find the code or data in this repository useful, please consider citing
@misc{sulzer2022deep,
title={Deep Surface Reconstruction from Point Clouds with Visibility Information},
author={Raphael Sulzer and Loic Landrieu and Alexandre Boulch and Renaud Marlet and Bruno Vallet},
year={2022},
eprint={2202.01810},
archivePrefix={arXiv},
primaryClass={cs.CV}
}
@inproceedings{Peng2020ECCV,
author = {Songyou Peng, Michael Niemeyer, Lars Mescheder, Marc Pollefeys, Andreas Geiger},
title = {Convolutional Occupancy Networks},
booktitle = {European Conference on Computer Vision (ECCV)},
year = {2020}}