Official code release for "GRAF: Generative Radiance Fields for 3D-Aware Image Synthesis"

Related tags

Deep Learninggraf
Overview

GRAF


This repository contains official code for the paper GRAF: Generative Radiance Fields for 3D-Aware Image Synthesis.

You can find detailed usage instructions for training your own models and using pre-trained models below.

If you find our code or paper useful, please consider citing

@inproceedings{Schwarz2020NEURIPS,
  title = {GRAF: Generative Radiance Fields for 3D-Aware Image Synthesis},
  author = {Schwarz, Katja and Liao, Yiyi and Niemeyer, Michael and Geiger, Andreas},
  booktitle = {Advances in Neural Information Processing Systems (NeurIPS)},
  year = {2020}
}

Installation

First you have to make sure that you have all dependencies in place. The simplest way to do so, is to use anaconda.

You can create an anaconda environment called graf using

conda env create -f environment.yml
conda activate graf

Next, for nerf-pytorch install torchsearchsorted. Note that this requires torch>=1.4.0 and CUDA >= v10.1. You can install torchsearchsorted via

cd submodules/nerf_pytorch
pip install -r requirements.txt
cd torchsearchsorted
pip install .
cd ../../../

Demo

You can now test our code via:

python eval.py configs/carla.yaml --pretrained --rotation_elevation

This script should create a folder results/carla_128_from_pretrained/eval/ where you can find generated videos varying camera pose for the Cars dataset.

Datasets

If you only want to generate images using our pretrained models you do not need to download the datasets. The datasets are only needed if you want to train a model from scratch.

Cars

To download the Cars dataset from the paper simply run

cd data
./download_carla.sh
cd ..

This creates a folder data/carla/ downloads the images as a zip file and extracts them to data/carla/. While we do not use camera poses in this project we provide them for completeness. Your can download them by running

cd data
./download_carla_poses.sh
cd ..

This downloads the camera intrinsics (single file, equal for all images) and extrinsics corresponding to each image.

Faces

Download celebA. Then replace data/celebA in configs/celebA.yaml with *PATH/TO/CELEBA*/Img/img_align_celebA.

Download celebA_hq. Then replace data/celebA_hq in configs/celebAHQ.yaml with *PATH/TO/CELEBA_HQ*.

Cats

Download the CatDataset. Run

cd data
python preprocess_cats.py PATH/TO/CATS/DATASET
cd ..

to preprocess the data and save it to data/cats. If successful this script should print: Preprocessed 9407 images.

Birds

Download CUB-200-2011 and the corresponding Segmentation Masks. Run

cd data
python preprocess_cub.py PATH/TO/CUB-200-2011 PATH/TO/SEGMENTATION/MASKS
cd ..

to preprocess the data and save it to data/cub. If successful this script should print: Preprocessed 8444 images.

Usage

When you have installed all dependencies, you are ready to run our pre-trained models for 3D-aware image synthesis.

Generate images using a pretrained model

To evaluate a pretrained model, run

python eval.py CONFIG.yaml --pretrained --fid_kid --rotation_elevation --shape_appearance

where you replace CONFIG.yaml with one of the config files in ./configs.

This script should create a folder results/EXPNAME/eval with FID and KID scores in fid_kid.csv, videos for rotation and elevation in the respective folders and an interpolation for shape and appearance, shape_appearance.png.

Note that some pretrained models are available for different image sizes which you can choose by setting data:imsize in the config file to one of the following values:

configs/carla.yaml: 
    data:imsize 64 or 128 or 256 or 512
configs/celebA.yaml:
    data:imsize 64 or 128
configs/celebAHQ.yaml:
    data:imsize 256 or 512

Train a model from scratch

To train a 3D-aware generative model from scratch run

python train.py CONFIG.yaml

where you replace CONFIG.yaml with your config file. The easiest way is to use one of the existing config files in the ./configs directory which correspond to the experiments presented in the paper. Note that this will train the model from scratch and will not resume training for a pretrained model.

You can monitor on http://localhost:6006 the training process using tensorboard:

cd OUTPUT_DIR
tensorboard --logdir ./monitoring --port 6006

where you replace OUTPUT_DIR with the respective output directory.

For available training options, please take a look at configs/default.yaml.

Evaluation of a new model

For evaluation of the models run

python eval.py CONFIG.yaml --fid_kid --rotation_elevation --shape_appearance

where you replace CONFIG.yaml with your config file.

Multi-View Consistency Check

You can evaluate the multi-view consistency of the generated images by running a Multi-View-Stereo (MVS) algorithm on the generated images. This evaluation uses COLMAP and make sure that you have COLMAP installed to run

python eval.py CONFIG.yaml --reconstruction

where you replace CONFIG.yaml with your config file. You can also evaluate our pretrained models via:

python eval.py configs/carla.yaml --pretrained --reconstruction

This script should create a folder results/EXPNAME/eval/reconstruction/ where you can find generated multi-view images in images/ and the corresponding 3D reconstructions in models/.

Further Information

GAN training

This repository uses Lars Mescheder's awesome framework for GAN training.

NeRF

We base our code for the Generator on this great Pytorch reimplementation of Neural Radiance Fields.

Exadel CompreFace is a free and open-source face recognition GitHub project

Exadel CompreFace is a leading free and open-source face recognition system Exadel CompreFace is a free and open-source face recognition service that

Exadel 2.6k Jan 04, 2023
Visualizing lattice vibration information from phonon dispersion to atoms (For GPUMD)

Phonon-Vibration-Viewer (For GPUMD) Visualizing lattice vibration information from phonon dispersion for primitive atoms. In this tutorial, we will in

Liangting 6 Dec 10, 2022
Pyramid Pooling Transformer for Scene Understanding

Pyramid Pooling Transformer for Scene Understanding Requirements: torch 1.6+ torchvision 0.7.0 timm==0.3.2 Validated on torch 1.6.0, torchvision 0.7.0

Yu-Huan Wu 119 Dec 29, 2022
TensorFlow-based neural network library

Sonnet Documentation | Examples Sonnet is a library built on top of TensorFlow 2 designed to provide simple, composable abstractions for machine learn

DeepMind 9.5k Jan 07, 2023
Exploring the Dual-task Correlation for Pose Guided Person Image Generation

Dual-task Pose Transformer Network The source code for our paper "Exploring Dual-task Correlation for Pose Guided Person Image Generation“ (CVPR2022)

63 Dec 15, 2022
Individual Tree Crown classification on WorldView-2 Images using Autoencoder -- Group 9 Weak learners - Final Project (Machine Learning 2020 Course)

Created by Olga Sutyrina, Sarah Elemili, Abduragim Shtanchaev and Artur Bille Individual Tree Crown classification on WorldView-2 Images using Autoenc

2 Dec 08, 2022
Minecraft Hack Detection With Python

Minecraft Hack Detection An attempt to try and use crowd sourced replays to find

Kuleen Sasse 3 Mar 26, 2022
Geneva is an artificial intelligence tool that defeats censorship by exploiting bugs in censors

Geneva is an artificial intelligence tool that defeats censorship by exploiting bugs in censors

Kevin Bock 1.5k Jan 06, 2023
Code for the prototype tool in our paper "CoProtector: Protect Open-Source Code against Unauthorized Training Usage with Data Poisoning".

CoProtector Code for the prototype tool in our paper "CoProtector: Protect Open-Source Code against Unauthorized Training Usage with Data Poisoning".

Zhensu Sun 1 Oct 26, 2021
Finetune SSL models for MOS prediction

Finetune SSL models for MOS prediction This is code for our paper under review for ICASSP 2022: "Generalization Ability of MOS Prediction Networks" Er

Yamagishi and Echizen Laboratories, National Institute of Informatics 32 Nov 22, 2022
torchsummaryDynamic: support real FLOPs calculation of dynamic network or user-custom PyTorch ops

torchsummaryDynamic Improved tool of torchsummaryX. torchsummaryDynamic support real FLOPs calculation of dynamic network or user-custom PyTorch ops.

Bohong Chen 1 Jan 07, 2022
ByteTrack(Multi-Object Tracking by Associating Every Detection Box)のPythonでのONNX推論サンプル

ByteTrack-ONNX-Sample ByteTrack(Multi-Object Tracking by Associating Every Detection Box)のPythonでのONNX推論サンプルです。 ONNXに変換したモデルも同梱しています。 変換自体を試したい方はByteT

KazuhitoTakahashi 16 Oct 26, 2022
This is the formal code implementation of the CVPR 2022 paper 'Federated Class Incremental Learning'.

Official Pytorch Implementation for GLFC [CVPR-2022] Federated Class-Incremental Learning This is the official implementation code of our paper "Feder

Race Wang 57 Dec 27, 2022
Prometheus Exporter for data scraped from datenplattform.darmstadt.de

darmstadt-opendata-exporter Scrapes data from https://datenplattform.darmstadt.de and presents it in the Prometheus Exposition format. Pull requests w

Martin Weinelt 2 Apr 12, 2022
Reaction SMILES-AA mapping via language modelling

rxn-aa-mapper Reactions SMILES-AA sequence mapping setup conda env create -f conda.yml conda activate rxn_aa_mapper In the following we consider on ex

16 Dec 13, 2022
Learning to Draw: Emergent Communication through Sketching

Learning to Draw: Emergent Communication through Sketching This is the official code for the paper "Learning to Draw: Emergent Communication through S

19 Jul 22, 2022
StyleGAN-Human: A Data-Centric Odyssey of Human Generation

StyleGAN-Human: A Data-Centric Odyssey of Human Generation Abstract: Unconditional human image generation is an important task in vision and graphics,

stylegan-human 762 Jan 08, 2023
A graph adversarial learning toolbox based on PyTorch and DGL.

GraphWar: Arms Race in Graph Adversarial Learning NOTE: GraphWar is still in the early stages and the API will likely continue to change. 🚀 Installat

Jintang Li 54 Jan 05, 2023
This is the code for the paper "Jinkai Zheng, Xinchen Liu, Wu Liu, Lingxiao He, Chenggang Yan, Tao Mei: Gait Recognition in the Wild with Dense 3D Representations and A Benchmark. (CVPR 2022)"

Gait3D-Benchmark This is the code for the paper "Jinkai Zheng, Xinchen Liu, Wu Liu, Lingxiao He, Chenggang Yan, Tao Mei: Gait Recognition in the Wild

82 Jan 04, 2023
Vit-ImageClassification - Pytorch ViT for Image classification on the CIFAR10 dataset

Vit-ImageClassification Introduction This project uses ViT to perform image clas

Kaicheng Yang 4 Jun 01, 2022