##
LION: Latent Point Diffusion Models for 3D Shape Generation
NeurIPS 2022
## Update * When opening an issue, please add @ZENGXH so that I can reponse faster! ## Install * Dependencies: * CUDA 11.6 * Setup the environment Install from conda file ``` conda env create --name lion_env --file=env.yaml conda activate lion_env # Install some other packages pip install git+https://github.com/openai/CLIP.git # build some packages first (optional) python build_pkg.py ``` Tested with conda version 22.9.0 * Using Docker * build the docker with `bash ./docker/build_docker.sh` * launch the docker with `bash ./docker/run.sh` ## Demo run `python demo.py`, will load the released text2shape model on hugging face and generate a chair point cloud. (Note: the checkpoint is not released yet, the files loaded in the `demo.py` file is not available at this point) ## Released checkpoint and samples * will be release soon * put the downloaded file under `./lion_ckpt/` ## Training ### data * ShapeNet can be downloaded [here](https://github.com/stevenygd/PointFlow#dataset). * Put the downloaded data as `./data/ShapeNetCore.v2.PC15k` *or* edit the `pointflow` entry in `./datasets/data_path.py` for the ShapeNet dataset path. ### train VAE * run `bash ./script/train_vae.sh $NGPU` (the released checkpoint is trained with `NGPU=4` on A100) * if want to use comet to log the experiment, add `.comet_api` file under the current folder, write the api key as `{"api_key": "${COMET_API_KEY}"}` in the `.comet_api` file ### train diffusion prior * require the vae checkpoint * run `bash ./script/train_prior.sh $NGPU` (the released checkpoint is trained with `NGPU=8` with 2 node on V100) ### evaluate a trained prior * download the test data from [here](https://drive.google.com/file/d/1uEp0o6UpRqfYwvRXQGZ5ZgT1IYBQvUSV/view?usp=share_link), unzip and put it as `./datasets/test_data/` * download the released checkpoint from above ``` checkpoint="./lion_ckpt/unconditional/airplane/checkpoints/model.pt" bash ./script/eval.sh $checkpoint # will take 1-2 hour ``` ## Evaluate the samples with the 1-NNA metrics * download the test data from [here](https://drive.google.com/file/d/1uEp0o6UpRqfYwvRXQGZ5ZgT1IYBQvUSV/view?usp=share_link), unzip and put it as `./datasets/test_data/` * run `python ./script/compute_score.py` ## Citation ``` @inproceedings{zeng2022lion, title={LION: Latent Point Diffusion Models for 3D Shape Generation}, author={Xiaohui Zeng and Arash Vahdat and Francis Williams and Zan Gojcic and Or Litany and Sanja Fidler and Karsten Kreis}, booktitle={Advances in Neural Information Processing Systems (NeurIPS)}, year={2022} } ```