The codebase for our paper "Generative Occupancy Fields for 3D Surface-Aware Image Synthesis" (NeurIPS 2021)

Overview

Generative Occupancy Fields for 3D Surface-Aware Image Synthesis (NeurIPS 2021)

Project Page | Paper

Xudong Xu, Xingang Pan, Dahua Lin and Bo Dai

GOF can synthesize high-quality images with high 3D consistency and simultaneously learn compact and smooth object surfaces.

Requirements

  • Python 3.8 is used. Basic requirements are listed in the requirements.txt
pip install -r requirements.txt 

Training

We have put several bash files of BFM, CelebA, and Cats datasets in auto_bash for reference. The adopted hyperparameters in our paper has been listed in the curriculums.py file.

If you want to train with your own dataset, you should set the hyperparameters carefully, especially those related to the camera pose distribution. Just as the settings in the curriculums.py file, you can leverage some camera pose predictors to obtain the rough 'h_stddev' and 'v_stddev', and tune them according to the corresponding performance. Besides, you should add the dataset class in dataset.py and modify the reference bash file to fit your own dataset accordingly.

Evaluation

Evaluation Metrics

To calculate FID/IS/KID scores, please run

python eval_metrics.py path/to/generator.pth --real_image_dir path/to/real_images --curriculum CURRICULUM

To calculate weighted variance proposed in the paper, please run

python cal_weighted_var.py path/to/generator.pth --curriculum CURRICULUM

Render Multi-view Images

python render_multiview_images.py path/to/generator.pth --curriculum CURRICULUM --seeds_start 0 --seeds_end 100

Render Videos

python render_video.py path/to/generator.pth --curriculum CURRICULUM --seed 0

After running, you will obtain a series of images in a specific folder. And then you can transfer them into a video with ffmpeg:

ffmpeg -r 15 -f image2 -i xxx.png -c:v libx264 -crf 25 -pix_fmt yuv420p xxx.mp4

Similarly, you can render videos interpolating bettween given latent codes/seeds following:

python render_video_interpolation.py path/to/generator.pth --curriculum CURRICULUM --seeds 0 1 2 3

Extract 3D Shapes

You should first generate a voxel npy file by running:

python extract_shapes.py path/to/generator.pth --curriculum CURRICULUM --seed 0

and render it to the corresponding multi-view images with the render_meshimg.py script.

Pretrained Models

We provide pretrained models for BFM, CelebA, and Cats. Please refer to this link.

As mentioned in the supplementary, the training of all models starts from an early (about 2K iterations) pretrained model with the correct outward-facing faces. We also provide the early pretrained models for three datasets in this link. If you want to start from the early pretrained models, you can replace the 'load_dir' name in bash files in auto_bash with the corresponding path of these pretrained models. Since the optimizer parameters are not provided here, you may need to comment L138~139 out.

Citation

If you find this codebase useful for your research, please cite:

@inproceedings{xu2021generative,
  title={Generative Occupancy Fields for 3D Surface-Aware Image Synthesis},
  author={Xu, Xudong and Pan, Xingang and Lin, Dahua and Dai, Bo},
  booktitle={Advances in Neural Information Processing Systems(NeurIPS)},
  year={2021}
}

Acknowledgement

The structure of this codebase is borrowed from pi-GAN.

Owner
xuxudong
Deep learning, deep research. CUHK MMLAB PhD
xuxudong
Open AI's Python library

OpenAI Python Library The OpenAI Python library provides convenient access to the OpenAI API from applications written in the Python language. It incl

Pavan Ananth Sharma 3 Jul 10, 2022
Real-time Neural Representation Fusion for Robust Volumetric Mapping

NeuralBlox: Real-Time Neural Representation Fusion for Robust Volumetric Mapping Paper | Supplementary This repository contains the implementation of

ETHZ ASL 106 Dec 24, 2022
Source code of CIKM2021 Long Paper "PSSL: Self-supervised Learning for Personalized Search with Contrastive Sampling".

PSSL Source code of CIKM2021 Long Paper "PSSL: Self-supervised Learning for Personalized Search with Contrastive Sampling". It consists of the pre-tra

2 Dec 21, 2021
Learning View Priors for Single-view 3D Reconstruction (CVPR 2019)

Learning View Priors for Single-view 3D Reconstruction (CVPR 2019) This is code for a paper Learning View Priors for Single-view 3D Reconstruction by

Hiroharu Kato 38 Aug 17, 2022
Animatable Neural Radiance Fields for Modeling Dynamic Human Bodies

To make the comparison with Animatable NeRF easier on the Human3.6M dataset, we save the quantitative results at here, which also contains the results of other methods, including Neural Body, D-NeRF,

ZJU3DV 359 Jan 08, 2023
Camera-caps - Examine the camera capabilities for V4l2 cameras

camera-caps This is a graphical user interface over the v4l2-ctl command line to

Jetsonhacks 25 Dec 26, 2022
Generic U-Net Tensorflow implementation for image segmentation

Tensorflow Unet Warning This project is discontinued in favour of a Tensorflow 2 compatible reimplementation of this project found under https://githu

Joel Akeret 1.8k Dec 10, 2022
The codebase for our paper "Generative Occupancy Fields for 3D Surface-Aware Image Synthesis" (NeurIPS 2021)

Generative Occupancy Fields for 3D Surface-Aware Image Synthesis (NeurIPS 2021) Project Page | Paper Xudong Xu, Xingang Pan, Dahua Lin and Bo Dai GOF

xuxudong 97 Nov 10, 2022
Code for "Training Neural Networks with Fixed Sparse Masks" (NeurIPS 2021).

Fisher Induced Sparse uncHanging (FISH) Mask This repo contains the code for Fisher Induced Sparse uncHanging (FISH) Mask training, from "Training Neu

Varun Nair 37 Dec 30, 2022
This repository contains the implementation of the HealthGen model, a generative model to synthesize realistic EHR time series data with missingness

HealthGen: Conditional EHR Time Series Generation This repository contains the implementation of the HealthGen model, a generative model to synthesize

0 Jan 20, 2022
PyTorch Implementation of AnimeGANv2

PyTorch implementation of AnimeGANv2

4k Jan 07, 2023
Encode and decode text application

Text Encoder and Decoder Encode and decode text in many ways using this application! Encode in: ASCII85 Base85 Base64 Base32 Base16 Url MD5 Hash SHA-1

Alice 1 Feb 12, 2022
Repository of our paper 'Refer-it-in-RGBD' in CVPR 2021

Refer-it-in-RGBD This is the repository of our paper 'Refer-it-in-RGBD: A Bottom-up Approach for 3D Visual Grounding in RGBD Images' in CVPR 2021 Pape

Haolin Liu 34 Nov 07, 2022
Text completion with Hugging Face and TensorFlow.js running on Node.js

Katana ML Text Completion 🤗 Description Runs with with Hugging Face DistilBERT and TensorFlow.js on Node.js distilbert-model - converter from Hugging

Katana ML 2 Nov 04, 2022
Code release for "Conditional Adversarial Domain Adaptation" (NIPS 2018)

CDAN Code release for "Conditional Adversarial Domain Adaptation" (NIPS 2018) New version: https://github.com/thuml/Transfer-Learning-Library Dataset

THUML @ Tsinghua University 363 Dec 20, 2022
DA2Lite is an automated model compression toolkit for PyTorch.

DA2Lite (Deep Architecture to Lite) is a toolkit to compress and accelerate deep network models. ⭐ Star us on GitHub — it helps!! Frameworks & Librari

Sinhan Kang 7 Mar 22, 2022
Pytorch implementation of NEGEV method. Paper: "Negative Evidence Matters in Interpretable Histology Image Classification".

Pytorch 1.10.0 code for: Negative Evidence Matters in Interpretable Histology Image Classification (https://arxiv. org/abs/xxxx.xxxxx) Citation: @arti

Soufiane Belharbi 4 Dec 01, 2022
The MATH Dataset

Measuring Mathematical Problem Solving With the MATH Dataset This is the repository for Measuring Mathematical Problem Solving With the MATH Dataset b

Dan Hendrycks 267 Dec 26, 2022
CoINN: Correlated-informed neural networks: a new machine learning framework to predict pressure drop in micro-channels

CoINN: Correlated-informed neural networks: a new machine learning framework to predict pressure drop in micro-channels Accurate pressure drop estimat

Alejandro Montanez 0 Jan 21, 2022
Official repository of the paper Privacy-friendly Synthetic Data for the Development of Face Morphing Attack Detectors

SMDD-Synthetic-Face-Morphing-Attack-Detection-Development-dataset Official repository of the paper Privacy-friendly Synthetic Data for the Development

10 Dec 12, 2022