Official code for "On the Frequency Bias of Generative Models", NeurIPS 2021

Overview

Frequency Bias of Generative Models

Generator Testbed Discriminator Testbed

This repository contains official code for the paper On the Frequency Bias of Generative Models.

You can find detailed usage instructions for analyzing standard GAN-architectures and your own models below.

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

@inproceedings{Schwarz2021NEURIPS,
  title = {On the Frequency Bias of Generative Models},
  author = {Schwarz, Katja and Liao, Yiyi and Geiger, Andreas},
  booktitle = {Advances in Neural Information Processing Systems (NeurIPS)},
  year = {2021}
}

Installation

Please note, that this repo requires one GPU for running. 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 fbias using

conda env create -f environment.yml
conda activate fbias

Generator Testbed

You can run a demo of our generator testbed via:

chmod +x ./scripts/demo_generator_testbed.sh
./scripts/demo_generator_testbed.sh

This will train the Generator of Progressive Growing GAN to regress a single image. Further, the training progression on the image regression, spectrum, and spectrum error are summarized in output/generator_testbed/baboon64/pggan/eval.

In general, to analyze the spectral properties of a generator architecture you can train a model by running

python generator_testbed.py *EXPERIMENT_NAME* *PATH/TO/CONFIG*

This script should create a folder output/generator_testbed/*EXPERIMENT_NAME* where you can find the training progress. To evaluate the spectral properties of the trained model run

python eval_generator.py *EXPERIMENT_NAME* --psnr --image-evolution --spectrum-evolution --spectrum-error-evolution

This will print the average PSNR of the regressed images and visualize image evolution, spectrum evolution, and spectrum error evolution in output/generator_testbed/*EXPERIMENT_NAME*/eval.

Discriminator Testbed

You can run a demo of our discriminator testbed via:

chmod +x ./scripts/demo_discriminator_testbed.sh
./scripts/demo_discriminator_testbed.sh

This will train the Discriminator of Progressive Growing GAN to regress a single image. Further, the training progression on the image regression, spectrum, and spectrum error are summarized in output/discriminator_testbed/baboon64/pggan/eval.

In general, to analyze the spectral properties of a discriminator architecture you can train a model by running

python discriminator_testbed.py *EXPERIMENT_NAME* *PATH/TO/CONFIG*

This script should create a folder output/discriminator_testbed/*EXPERIMENT_NAME* where you can find the training progress. To evaluate the spectral properties of the trained model run

python eval_discriminator.py *EXPERIMENT_NAME* --psnr --image-evolution --spectrum-evolution --spectrum-error-evolution

This will print the average PSNR of the regressed images and visualize image evolution, spectrum evolution, and spectrum error evolution in output/discriminator_testbed/*EXPERIMENT_NAME*/eval.

Datasets

Toyset

You can generate a toy dataset with Gaussian peaks as spectrum by running

cd data
python toyset.py 64 100
cd ..

This creates a folder data/toyset/ and generates 100 images of resolution 64x64 pixels.

CelebA-HQ

Download celebA_hq. Then, update data:root: *PATH/TO/CELEBA_HQ* in the config file.

Other datasets

The config setting data:root: *PATH/TO/DATA* needs to point to a folder with the training images. You can use any dataset which follows the folder structure

*PATH/TO/DATA*/xxx.png
*PATH/TO/DATA*/xxy.png
...

By default, the images are center-cropped and optionally resized to the resolution specified in the config file underdata:resolution. Note, that you can also use a subset of images via data:subset.

Architectures

StyleGAN Support

In addition to Progressive Growing GAN, this repository supports analyzing the following architectures

For this, you need to initialize the stylegan3 submodule by running

git pull --recurse-submodules
cd models/stylegan3/stylegan3
git submodule init
git submodule update
cd ../../../

Next, you need to install any additional requirements for this repo. You can do this by running

conda activate fbias
conda env update --file environment_sg3.yml --prune

You can now analyze the spectral properties of the StyleGAN architectures by running

# StyleGAN2
python generator_testbed.py baboon64/StyleGAN2 configs/generator_testbed/sg2.yaml
python discriminator_testbed.py baboon64/StyleGAN2 configs/discriminator_testbed/sg2.yaml
# StyleGAN3
python generator_testbed.py baboon64/StyleGAN3 configs/generator_testbed/sg3.yaml

Other architectures

To analyze any other network architectures, you can add the respective model file (or submodule) under models. You then need to write a wrapper class to integrate the architecture seamlessly into this code base. Examples for wrapper classes are given in

  • models/stylegan2_generator.py for the Generator
  • models/stylegan2_discriminator.py for the Discriminator

Further Information

This repository builds on Lars Mescheder's awesome framework for GAN training. Further, we utilize code from the Stylegan3-repo and GenForce.

Official PyTorch implementation of UACANet: Uncertainty Aware Context Attention for Polyp Segmentation

UACANet: Uncertainty Aware Context Attention for Polyp Segmentation Official pytorch implementation of UACANet: Uncertainty Aware Context Attention fo

Taehun Kim 85 Dec 14, 2022
Sparse R-CNN: End-to-End Object Detection with Learnable Proposals, CVPR2021

End-to-End Object Detection with Learnable Proposal, CVPR2021

Peize Sun 1.2k Dec 27, 2022
Udacity Suse Cloud Native Foundations Scholarship Course Walkthrough

SUSE Cloud Native Foundations Scholarship Udacity is collaborating with SUSE, a global leader in true open source solutions, to empower developers and

Shivansh Srivastava 34 Oct 18, 2022
PPLNN is a Primitive Library for Neural Network is a high-performance deep-learning inference engine for efficient AI inferencing

PPLNN is a Primitive Library for Neural Network is a high-performance deep-learning inference engine for efficient AI inferencing

943 Jan 07, 2023
Pre-Training Graph Neural Networks for Cold-Start Users and Items Representation.

Pretrain-Recsys This is our Tensorflow implementation for our WSDM 2021 paper: Bowen Hao, Jing Zhang, Hongzhi Yin, Cuiping Li, Hong Chen. Pre-Training

30 Nov 14, 2022
This is a package for LiDARTag, described in paper: LiDARTag: A Real-Time Fiducial Tag System for Point Clouds

LiDARTag Overview This is a package for LiDARTag, described in paper: LiDARTag: A Real-Time Fiducial Tag System for Point Clouds (PDF)(arXiv). This wo

University of Michigan Dynamic Legged Locomotion Robotics Lab 159 Dec 21, 2022
PyTorch implementation for Graph Contrastive Learning with Augmentations

Graph Contrastive Learning with Augmentations PyTorch implementation for Graph Contrastive Learning with Augmentations [poster] [appendix] Yuning You*

Shen Lab at Texas A&M University 382 Dec 15, 2022
QAHOI: Query-Based Anchors for Human-Object Interaction Detection (paper)

QAHOI QAHOI: Query-Based Anchors for Human-Object Interaction Detection (paper) Requirements PyTorch = 1.5.1 torchvision = 0.6.1 pip install -r requ

38 Dec 29, 2022
Official pytorch code for SSC-GAN: Semi-Supervised Single-Stage Controllable GANs for Conditional Fine-Grained Image Generation(ICCV 2021)

SSC-GAN_repo Pytorch implementation for 'Semi-Supervised Single-Stage Controllable GANs for Conditional Fine-Grained Image Generation'.PDF SSC-GAN:Sem

tyty 4 Aug 28, 2022
Who calls the shots? Rethinking Few-Shot Learning for Audio (WASPAA 2021)

rethink-audio-fsl This repo contains the source code for the paper "Who calls the shots? Rethinking Few-Shot Learning for Audio." (WASPAA 2021) Table

Yu Wang 34 Dec 24, 2022
The PyTorch implementation of Directed Graph Contrastive Learning (DiGCL), NeurIPS-2021

Directed Graph Contrastive Learning The PyTorch implementation of Directed Graph Contrastive Learning (DiGCL). In this paper, we present the first con

Tong Zekun 28 Jan 08, 2023
Iranian Cars Detection using Yolov5s, PyTorch

Iranian Cars Detection using Yolov5 Train 1- git clone https://github.com/ultralytics/yolov5 cd yolov5 pip install -r requirements.txt 2- Dataset ../

Nahid Ebrahimian 22 Dec 05, 2022
Official implementation of the paper Vision Transformer with Progressive Sampling, ICCV 2021.

Vision Transformer with Progressive Sampling This is the official implementation of the paper Vision Transformer with Progressive Sampling, ICCV 2021.

yuexy 123 Jan 01, 2023
Deep Residual Networks with 1K Layers

Deep Residual Networks with 1K Layers By Kaiming He, Xiangyu Zhang, Shaoqing Ren, Jian Sun. Microsoft Research Asia (MSRA). Table of Contents Introduc

Kaiming He 856 Jan 06, 2023
The official PyTorch implementation of Curriculum by Smoothing (NeurIPS 2020, Spotlight).

Curriculum by Smoothing (NeurIPS 2020) The official PyTorch implementation of Curriculum by Smoothing (NeurIPS 2020, Spotlight). For any questions reg

PAIR Lab 36 Nov 23, 2022
The official implementation of the CVPR 2021 paper FAPIS: a Few-shot Anchor-free Part-based Instance Segmenter

FAPIS The official implementation of the CVPR 2021 paper FAPIS: a Few-shot Anchor-free Part-based Instance Segmenter Introduction This repo is primari

Khoi Nguyen 8 Dec 11, 2022
pytorch bert intent classification and slot filling

pytorch_bert_intent_classification_and_slot_filling 基于pytorch的中文意图识别和槽位填充 说明 基本思路就是:分类+序列标注(命名实体识别)同时训练。 使用的预训练模型:hugging face上的chinese-bert-wwm-ext 依

西西嘛呦 33 Dec 15, 2022
Gender Classification Machine Learning Model using Sk-learn in Python with 97%+ accuracy and deployment

Gender-classification This is a ML model to classify Male and Females using some physical characterstics Data. Python Libraries like Pandas,Numpy and

Aryan raj 11 Oct 16, 2022
“Data Augmentation for Cross-Domain Named Entity Recognition” (EMNLP 2021)

Data Augmentation for Cross-Domain Named Entity Recognition Authors: Shuguang Chen, Gustavo Aguilar, Leonardo Neves and Thamar Solorio This repository

<a href=[email protected]"> 18 Sep 10, 2022
Churn-Prediction-Project - In this project, a churn prediction model is developed for a private bank as a term project for Data Mining class.

Churn-Prediction-Project In this project, a churn prediction model is developed for a private bank as a term project for Data Mining class. Project in

1 Jan 03, 2022