Spectral normalization (SN) is a widely-used technique for improving the stability and sample quality of Generative Adversarial Networks (GANs)

Overview

Why Spectral Normalization Stabilizes GANs: Analysis and Improvements

[paper (NeurIPS 2021)] [paper (arXiv)] [code]

Authors: Zinan Lin, Vyas Sekar, Giulia Fanti

Abstract: Spectral normalization (SN) is a widely-used technique for improving the stability and sample quality of Generative Adversarial Networks (GANs). However, there is currently limited understanding of why SN is effective. In this work, we show that SN controls two important failure modes of GAN training: exploding and vanishing gradients. Our proofs illustrate a (perhaps unintentional) connection with the successful LeCun initialization. This connection helps to explain why the most popular implementation of SN for GANs requires no hyper-parameter tuning, whereas stricter implementations of SN have poor empirical performance out-of-the-box. Unlike LeCun initialization which only controls gradient vanishing at the beginning of training, SN preserves this property throughout training. Building on this theoretical understanding, we propose a new spectral normalization technique: Bidirectional Scaled Spectral Normalization (BSSN), which incorporates insights from later improvements to LeCun initialization: Xavier initialization and Kaiming initialization. Theoretically, we show that BSSN gives better gradient control than SN. Empirically, we demonstrate that it outperforms SN in sample quality and training stability on several benchmark datasets.


This repo contains the codes for reproducing the experiments of our BSN and different SN variants in the paper. The codes were tested under Python 2.7.5, TensorFlow 1.14.0.

Preparing datasets

CIFAR10

Download cifar-10-python.tar.gz from https://www.cs.toronto.edu/~kriz/cifar-10-python.tar.gz (or from other sources).

STL10

Download stl10_binary.tar.gz from http://ai.stanford.edu/~acoates/stl10/stl10_binary.tar.gz (or from other sources), and put it in dataset_preprocess/STL10 folder. Then run python preprocess.py. This code will resize the images into 48x48x3 format, and save the images in stl10.npy.

CelebA

Download img_align_celeba.zip from https://www.kaggle.com/jessicali9530/celeba-dataset (or from other sources), and put it in dataset_preprocess/CelebA folder. Then run python preprocess.py. This code will crop and resize the images into 64x64x3 format, and save the images in celeba.npy.

ImageNet

Download ILSVRC2012_img_train.tar from http://www.image-net.org/ (or from other sources), and put it in dataset_preprocess/ImageNet folder. Then run python preprocess.py. This code will crop and resize the images into 128x128x3 format, and save the images in ILSVRC2012folder. Each subfolder in ILSVRC2012 folder corresponds to one class. Each npy file in the subfolders corresponds to an image.

Training BSN and SN variants

Prerequisites

The codes are based on GPUTaskScheduler library, which helps you automatically schedule the jobs among GPU nodes. Please install it first. You may need to change GPU configurations according to the devices you have. The configurations are set in config.py in each directory. Please refer to GPUTaskScheduler's GitHub page for the details of how to make proper configurations.

You can also run these codes without GPUTaskScheduler. Just run python gan.py in gan subfolders.

CIFAR10, STL10, CelebA

Preparation

Copy the preprocessed datasets from the previous steps into the following paths:

  • CIFAR10: /data/CIFAR10/cifar-10-python.tar.gz.
  • STL10: /data/STL10/cifar-10-stl10.npy.
  • CelebA: /data/CelebA/celeba.npy.

Here means

  • Vanilla SN and our proposed BSSN/SSN/BSN without gammas: no_gamma-CNN.
  • SN with the same gammas: same_gamma-CNN.
  • SN with different gammas: diff_gamma-CNN.

Alternatively, you can directly modify the dataset paths in /gan_task.py to the path of the preprocessed dataset folders.

Running codes

Now you can directly run python main.py in each to train the models.

All the configurable hyper-parameters can be set in config.py. The hyper-parameters in the file are already set for reproducing the results in the paper. Please refer to GPUTaskScheduler's GitHub page for the details of the grammar of this file.

ImageNet

Preparation

Copy the preprocessed folder ILSVRC2012 from the previous steps to /data/imagenet/ILSVRC2012, where means

  • Vanilla SN and our proposed BSSN/SSN/BSN without gammas: no_gamma-ResNet.

Alternatively, you can directly modify the dataset path in /gan_task.py to the path of the preprocessed folder ILSVRC2012.

Running codes

Now you can directly run python main.py in each to train the models.

All the configurable hyper-parameters can be set in config.py. The hyper-parameters in the file are already set for reproducing the results in the paper. Please refer to GPUTaskScheduler's GitHub page for the details of the grammar of this file.

The code supports multi-GPU training for speed-up, by separating each data batch equally among multiple GPUs. To do that, you only need to make minor modifications in config.py. For example, if you have two GPUs with IDs 0 and 1, then all you need to do is to (1) change "gpu": ["0"] to "gpu": [["0", "1"]], and (2) change "num_gpus": [1] to "num_gpus": [2]. Note that the number of GPUs might influence the results because in this implementation the batch normalization layers on different GPUs are independent. In our experiments, we were using only one GPU.

Results

The code generates the following result files/folders:

  • /results/ /worker.log : Standard output and error from the code.
  • /results/ /metrics.csv : Inception Score and FID during training.
  • /results/ /sample/*.png : Generated images during training.
  • /results/ /checkpoint/* : TensorFlow checkpoints.
  • /results/ /time.txt : Training iteration timestamps.
Owner
Zinan Lin
Ph.D. student at Electrical and Computer Engineering, Carnegie Mellon University
Zinan Lin
Torch code for our CVPR 2018 paper "Residual Dense Network for Image Super-Resolution" (Spotlight)

Residual Dense Network for Image Super-Resolution This repository is for RDN introduced in the following paper Yulun Zhang, Yapeng Tian, Yu Kong, Bine

Yulun Zhang 494 Dec 30, 2022
A simple, unofficial implementation of MAE using pytorch-lightning

Masked Autoencoders in PyTorch A simple, unofficial implementation of MAE (Masked Autoencoders are Scalable Vision Learners) using pytorch-lightning.

Connor Anderson 20 Dec 03, 2022
Segcache: a memory-efficient and scalable in-memory key-value cache for small objects

Segcache: a memory-efficient and scalable in-memory key-value cache for small objects This repo contains the code of Segcache described in the followi

TheSys Group @ CMU CS 78 Jan 07, 2023
Microsoft Cognitive Toolkit (CNTK), an open source deep-learning toolkit

CNTK Chat Windows build status Linux build status The Microsoft Cognitive Toolkit (https://cntk.ai) is a unified deep learning toolkit that describes

Microsoft 17.3k Dec 29, 2022
Flower classification model that classifies flowers in 10 classes made using transfer learning (~85% accuracy).

flower-classification-inceptionV3 Flower classification model that classifies flowers in 10 classes. Training and validation are done using a pre-anot

Ivan R. Mršulja 1 Dec 12, 2021
A library for low-memory inferencing in PyTorch.

Pylomin Pylomin (PYtorch LOw-Memory INference) is a library for low-memory inferencing in PyTorch. Installation ... Usage For example, the following c

3 Oct 26, 2022
Safe Bayesian Optimization

SafeOpt - Safe Bayesian Optimization This code implements an adapted version of the safe, Bayesian optimization algorithm, SafeOpt [1], [2]. It also p

Felix Berkenkamp 111 Dec 11, 2022
PArallel Distributed Deep LEarning: Machine Learning Framework from Industrial Practice (『飞桨』核心框架,深度学习&机器学习高性能单机、分布式训练和跨平台部署)

English | 简体中文 Welcome to the PaddlePaddle GitHub. PaddlePaddle, as the only independent R&D deep learning platform in China, has been officially open

19.4k Jan 04, 2023
Code for One-shot Talking Face Generation from Single-speaker Audio-Visual Correlation Learning (AAAI 2022)

One-shot Talking Face Generation from Single-speaker Audio-Visual Correlation Learning (AAAI 2022) Paper | Demo Requirements Python = 3.6 , Pytorch

FuxiVirtualHuman 84 Jan 03, 2023
Official code for paper "Demystifying Local Vision Transformer: Sparse Connectivity, Weight Sharing, and Dynamic Weight"

Demysitifing Local Vision Transformer, arxiv This is the official PyTorch implementation of our paper. We simply replace local self attention by (dyna

138 Dec 28, 2022
Multiple Object Extraction from Aerial Imagery with Convolutional Neural Networks

This is an implementation of Volodymyr Mnih's dissertation methods on his Massachusetts road & building dataset and my original methods that are publi

Shunta Saito 255 Sep 07, 2022
Repository for code and dataset for our EMNLP 2021 paper - “So You Think You’re Funny?”: Rating the Humour Quotient in Standup Comedy.

AI-OpenMic Dataset The dataset is available for download via the follwing link. Repository for code and dataset for our EMNLP 2021 paper - “So You Thi

6 Oct 26, 2022
Official Pytorch Implementation of 'Learning Action Completeness from Points for Weakly-supervised Temporal Action Localization' (ICCV-21 Oral)

Learning-Action-Completeness-from-Points Official Pytorch Implementation of 'Learning Action Completeness from Points for Weakly-supervised Temporal A

Pilhyeon Lee 67 Jan 03, 2023
RuDOLPH: One Hyper-Modal Transformer can be creative as DALL-E and smart as CLIP

[Paper] [Хабр] [Model Card] [Colab] [Kaggle] RuDOLPH 🦌 🎄 ☃️ One Hyper-Modal Tr

Sber AI 230 Dec 31, 2022
Toolbox to analyze temporal context invariance of deep neural networks

PyTCI A toolbox that estimates the integration window of a sensory response using the "Temporal Context Invariance" paradigm (TCI). The TCI method Int

4 Oct 23, 2022
Official PyTorch implementation of the NeurIPS 2021 paper StyleGAN3

Alias-Free Generative Adversarial Networks (StyleGAN3) Official PyTorch implementation of the NeurIPS 2021 paper Alias-Free Generative Adversarial Net

Eugenio Herrera 92 Nov 18, 2022
AWS documentation corpus for zero-shot open-book question answering.

aws-documentation We present the AWS documentation corpus, an open-book QA dataset, which contains 25,175 documents along with 100 matched questions a

Sia Gholami 2 Jul 07, 2022
Nvdiffrast - Modular Primitives for High-Performance Differentiable Rendering

Nvdiffrast – Modular Primitives for High-Performance Differentiable Rendering Modular Primitives for High-Performance Differentiable Rendering Samuli

NVIDIA Research Projects 675 Jan 06, 2023
Modeling Category-Selective Cortical Regions with Topographic Variational Autoencoders

Modeling Category-Selective Cortical Regions with Topographic Variational Autoencoders

1 Oct 11, 2021
Unoffical reMarkable AddOn for Firefox.

reMarkable for Firefox (Download) This repo converts the offical reMarkable Chrome Extension into a Firefox AddOn published here under the name "Unoff

Jelle Schutter 45 Nov 28, 2022