π-GAN: Periodic Implicit Generative Adversarial Networks for 3D-Aware Image Synthesis

Related tags

Deep Learningpi-GAN
Overview

π-GAN: Periodic Implicit Generative Adversarial Networks for 3D-Aware Image Synthesis

Project Page | Paper | Data

Eric Ryan Chan*, Marco Monteiro*, Petr Kellnhofer, Jiajun Wu, Gordon Wetzstein
*denotes equal contribution

This is the official implementation of the paper "π-GAN: Periodic Implicit Generative Adversarial Networks for 3D-Aware Image Synthesis".

π-GAN is a novel generative model for high-quality 3D aware image synthesis.

results2.mp4

Training a Model

The main training script can be found in train.py. Majority of hyperparameters for training and evaluation are set in the curriculums.py file. (see file for more details) We provide recommended curriculums for CelebA, Cats, and CARLA.

Relevant Flags:

Set the output directory: --output_dir=[output directory]

Set the model loading directory: --load_dir=[load directory]

Set the current training curriculum: --curriculum=[curriculum]

Set the port for distributed training: --port=[port]

To start training:

On one GPU for CelebA: CUDA_VISIBLE_DEVICES=0 python3 train.py --curriculum CelebA --output_dir celebAOutputDir

On multiple GPUs, simply list cuda visible devices in a comma-separated list: CUDA_VISIBLE_DEVICES=1,3 python3 train.py --curriculum CelebA --output_dir celebAOutputDir

To continue training from another run specify the --load_dir=path/to/directory flag.

Model Results and Evaluation

Evaluation Metrics

To generate real images for evaluation run python fid_evaluation --dataset CelebA --img_size 128 --num_imgs 8000. To calculate fid/kid/inception scores run python eval_metrics.py path/to/generator.pth --real_image_dir path/to/real_images/directory --curriculum CelebA --num_images 8000.

Rendering Images

python render_multiview_images.py path/to/generator.pth --curriculum CelebA --seeds 0 1 2 3

For best visual results, load the EMA parameters, use truncation, increase the resolution (e.g. to 512 x 512) and increase the number of depth samples (e.g. to 24 or 36).

Rendering Videos

python render_video.py path/to/generator.pth --curriculum CelebA --seeds 0 1 2 3

You can pass the flag --lock_view_dependence to remove view dependent effects. This can help mitigate distracting visual artifacts such as shifting eyebrows. However, locking view dependence may lower the visual quality of images (edges may be blurrier etc.)

Rendering Videos Interpolating between faces

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

Extracting 3D Shapes

python3 shape_extraction.py path/to/generator.pth --curriculum CelebA --seed 0

Pretrained Models

We provide pretrained models for CelebA, Cats, and CARLA.

CelebA: https://drive.google.com/file/d/1bRB4-KxQplJryJvqyEa8Ixkf_BVm4Nn6/view?usp=sharing

Cats: https://drive.google.com/file/d/1WBA-WI8DA7FqXn7__0TdBO0eO08C_EhG/view?usp=sharing

CARLA: https://drive.google.com/file/d/1n4eXijbSD48oJVAbAV4hgdcTbT3Yv4xO/view?usp=sharing

All zipped model files contain a generator.pth, ema.pth, and ema2.pth files. ema.pth used a decay of 0.999 and ema2.pth used a decay of 0.9999. All evaluation scripts will by default load the EMA from the file named ema.pth in the same directory as the generator.pth file.

Training Tips

If you have the resources, increasing the number of samples (steps) per ray will dramatically increase the quality of your 3D shapes. If you're looking for good shapes, e.g. for CelebA, try increasing num_steps and moving the back plane (ray_end) to allow the model to move the background back and capture the full head.

Training has been tested to work well on either two RTX 6000's or one RTX 8000. Training with smaller GPU's and batch sizes generally works fine, but it's also possible you'll encounter instability, especially at higher resolutions. Bubbles and artifacts that suddenly appear, or blurring in the tilted angles, are signs that training destabilized. This can usually be mitigated by training with a larger batch size or by reducing the learning rate.

Since the original implementation we added a pose identity component to the loss. Controlled by pos_lambda in the curriculum, the pose idedntity component helps ensure generated scenes share the same canonical pose. Empirically, it seems to improve 3D models, but may introduce a minor decrease in image quality scores.

Citation

If you find our work useful in your research, please cite:

@inproceedings{piGAN2021,
  title={pi-GAN: Periodic Implicit Generative Adversarial Networks for 3D-Aware Image Synthesis},
  author={Eric Chan and Marco Monteiro and Petr Kellnhofer and Jiajun Wu and Gordon Wetzstein},
  year={2021},
  booktitle={Proc. CVPR},
}
Standalone pre-training recipe with JAX+Flax

Sabertooth Sabertooth is standalone pre-training recipe based on JAX+Flax, with data pipelines implemented in Rust. It runs on CPU, GPU, and/or TPU, b

Nikita Kitaev 26 Nov 28, 2022
Trainable Bilateral Filter Layer (PyTorch)

Trainable Bilateral Filter Layer (PyTorch) This repository contains our GPU-accelerated trainable bilateral filter layer (three spatial and one range

FabianWagner 26 Dec 25, 2022
Chunkmogrify: Real image inversion via Segments

Chunkmogrify: Real image inversion via Segments Teaser video with live editing sessions can be found here This code demonstrates the ideas discussed i

David Futschik 112 Jan 04, 2023
Semi-Supervised Semantic Segmentation via Adaptive Equalization Learning, NeurIPS 2021 (Spotlight)

Semi-Supervised Semantic Segmentation via Adaptive Equalization Learning, NeurIPS 2021 (Spotlight) Abstract Due to the limited and even imbalanced dat

Hanzhe Hu 99 Dec 12, 2022
Supervised & unsupervised machine-learning techniques are applied to the database of weighted P4s which admit Calabi-Yau hypersurfaces.

Weighted Projective Spaces ML Description: The database of 5-vectors describing 4d weighted projective spaces which admit Calabi-Yau hypersurfaces are

Ed Hirst 3 Sep 08, 2022
Back to Event Basics: SSL of Image Reconstruction for Event Cameras

Back to Event Basics: SSL of Image Reconstruction for Event Cameras Minimal code for Back to Event Basics: Self-Supervised Learning of Image Reconstru

TU Delft 42 Dec 26, 2022
Populating 3D Scenes by Learning Human-Scene Interaction https://posa.is.tue.mpg.de/

Populating 3D Scenes by Learning Human-Scene Interaction [Project Page] [Paper] License Software Copyright License for non-commercial scientific resea

Mohamed Hassan 81 Nov 08, 2022
Kaggle | 9th place single model solution for TGS Salt Identification Challenge

UNet for segmenting salt deposits from seismic images with PyTorch. General We, tugstugi and xuyuan, have participated in the Kaggle competition TGS S

Erdene-Ochir Tuguldur 276 Dec 20, 2022
Kinetics-Data-Preprocessing

Kinetics-Data-Preprocessing Kinetics-400 and Kinetics-600 are common video recognition datasets used by popular video understanding projects like Slow

Kaihua Tang 7 Oct 27, 2022
Array Camera Ptychography

Array Camera Ptychography This repository provides the code for the following papers: Schulz, Timothy J., David J. Brady, and Chengyu Wang. "Photon-li

Brady lab in Optical Sciences 1 Nov 15, 2021
Out-of-Domain Human Mesh Reconstruction via Dynamic Bilevel Online Adaptation

DynaBOA Code repositoty for the paper: Out-of-Domain Human Mesh Reconstruction via Dynamic Bilevel Online Adaptation Shanyan Guan, Jingwei Xu, Michell

197 Jan 07, 2023
DFM: A Performance Baseline for Deep Feature Matching

DFM: A Performance Baseline for Deep Feature Matching Python (Pytorch) and Matlab (MatConvNet) implementations of our paper DFM: A Performance Baselin

143 Jan 02, 2023
The undersampled DWI image using Slice-Interleaved Diffusion Encoding (SIDE) method can be reconstructed by the UNet network.

UNet-SIDE The undersampled DWI image using Slice-Interleaved Diffusion Encoding (SIDE) method can be reconstructed by the UNet network. For Super Reso

TIANTIAN XU 1 Jan 13, 2022
Collection of generative models in Pytorch version.

pytorch-generative-model-collections Original : [Tensorflow version] Pytorch implementation of various GANs. This repository was re-implemented with r

Hyeonwoo Kang 2.4k Dec 31, 2022
Convert Table data to approximate values with GUI

Table_Editor Convert Table data to approximate values with GUIs... usage - Import methods for extension Tables. Imported method supposed to have only

CLJ 1 Jan 10, 2022
RIM: Reliable Influence-based Active Learning on Graphs.

RIM: Reliable Influence-based Active Learning on Graphs. This repository is the official implementation of RIM. Requirements To install requirements:

Wentao Zhang 4 Aug 29, 2022
Improving adversarial robustness by a coupling rejection strategy

Adversarial Training with Rectified Rejection The code for the paper Adversarial Training with Rectified Rejection. Environment settings and libraries

Tianyu Pang 29 Jan 06, 2023
a dnn ai project to classify which food people are eating on audio recordings

Deep Learning - EAT Challenge About This project is part of an AI challenge of the DeepLearning course 2021 at the University of Augsburg. The objecti

Marco Tröster 1 Oct 24, 2021
Fake videos detection by tracing the source using video hashing retrieval.

Vision Transformer Based Video Hashing Retrieval for Tracing the Source of Fake Videos 🎉️ 📜 Directory Introduction VTL Trace Samples and Acc of Hash

56 Dec 22, 2022
PyTorch implementation of paper "StarEnhancer: Learning Real-Time and Style-Aware Image Enhancement" (ICCV 2021 Oral)

StarEnhancer StarEnhancer: Learning Real-Time and Style-Aware Image Enhancement (ICCV 2021 Oral) Abstract: Image enhancement is a subjective process w

IDKiro 133 Dec 28, 2022