Skip to content
View apusmog's full-sized avatar
Block or Report

Block or report apusmog

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Please don't include any personal information such as legal names or email addresses. Maximum 100 characters, markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
apusmog/README.md

APU-SMOG

Code for Arbitrary Point Cloud Upsampling with Spherical Mixture of Gaussians (project page)

overview

Prerequisite Installation

The code has been tested with Python 3.8, PyTorch 1.9 and Cuda 10.2:

conda create --name apusmog python=3.8

conda activate apusmog

conda install pytorch=1.9.0 torchvision torchaudio cudatoolkit=10.2 -c pytorch

pip install h5py python-graph-core scipy PyYAML

To build the third party extensions:

cd third_party/lib_pointtransformer/pointops/
python setup.py install

cd third_party/pointnet2
python setup.py install

How to use the code:

Download PU1K dataset into the data/ folder.

Test on PU1K:

python main.py --config configs/apusmog_pu1k_pretrained.yaml

Train on PU1K:

python main.py --config configs/apusmog_pu1k.yaml

Evaluation:

cd evaluation
./run_me.sh

python compute_p2m.py --gt_dir ../data/PU1K/test/original_meshes/ --pred_dir ../checkpoints/apusmog_pu1k_pretrained/results/ --use_mp True
python evaluate_tf_cpu.py --gt_dir ../data/PU1K/test/input_2048/gt_8192/ --pred_dir ../checkpoints/apusmog_pu1k_pretrained/results/ --save_path ../checkpoints/apusmog_pu1k_pretrained/metrics --use_p2f

Citation

Please cite this paper with the following BibTeX:

@inproceedings{delleva2022arbitrary,
    author = {Anthony Dell'Eva and Marco Orsingher and Massimo Bertozzi},
    title = {Arbitrary Point Cloud Upsampling with Spherical Mixture of Gaussians},
    booktitle = {International Conference on 3D Vision (3DV)},
    year = {2022}
}

Acknowledgement

Codebase borrowed from 3DETR

Popular repositories

  1. apusmog apusmog Public

    Code for the 3DV 2022 oral paper "Arbitrary Point Cloud Upsampling with Spherical Mixture of Gaussians"

    Python 11 2

  2. apusmog.github.io apusmog.github.io Public

    JavaScript