A simple, clean TensorFlow implementation of Generative Adversarial Networks with a focus on modeling illustrations.

Overview

IllustrationGAN

A simple, clean TensorFlow implementation of Generative Adversarial Networks with a focus on modeling illustrations.

Generated Images

These images were generated by the model after being trained on a custom dataset of about 20,000 anime faces that were automatically cropped from illustrations using a face detector. Generated Images

Checking for Overfitting

It is theoretically possible for the generator network to memorize training set images rather than actually generalizing and learning to produce novel images of its own. To check for this, I randomly generate images and display the "closest" images in the training set according to mean squared error. The top row is randomly generated images, the columns are the closest 5 images in the training set.

Overfitting Check

It is clear that the generator does not merely learn to copy training set images, but rather generalizes and is able to produce its own unique images.

How it Works

Generative Adversarial Networks consist of two neural networks: a discriminator and a generator. The discriminator receives both real images from the training set and generated images produced by the generator. The discriminator outputs the probability that an image is real, so it is trained to output high values for the real images and low values for the generated ones. The generator is trained to produce images that the discriminator thinks are real. Both the discriminator and generator are trainined simultaneously so that they compete against each other. As a result of this, the generator learns to produce more and more realistic images as it trains.

Model Architecture

The model is based on DCGANs, but with a few important differences:

  1. No strided convolutions. The generator uses bilinear upsampling to upscale a feature blob by a factor of 2, followed by a stride-1 convolution layer. The discriminator uses a stride-1 convolution followed by 2x2 max pooling.

  2. Minibatch discrimination. See Improved Techniques for Training GANs for more details.

  3. More fully connected layers in both the generator and discriminator. In DCGANs, both networks have only one fully connected layer.

  4. A novel regularization term applied to the generator network. Normally, increasing the number of fully connected layers in the generator beyond one triggers one of the most common failure modes when training GANs: the generator "collapses" the z-space and produces only a very small number of unique examples. In other words, very different z vectors will produce nearly the same generated image. To fix this, I add a small auxiliary z-predictor network that takes as input the output of the last fully connected layer in the generator, and predicts the value of z. In other words, it attempts to learn the inverse of whatever function the generator fully connected layers learn. The z-predictor network and generator are trained together to predict the value of z. This forces the generator fully connected layers to only learn those transformations that preserve information about z. The result is that the aformentioned collapse no longer occurs, and the generator is able to leverage the power of the additional fully connected layers.

Training the Model

Dependencies: TensorFlow, PrettyTensor, numpy, matplotlib

The custom dataset I used is too large to add to a Github repository; I am currently finding a suitable way to distribute it. Instructions for training the model will be in this readme after I make the dataset available.

Custom IMDB Dataset is extracted between 2020-2021 and custom distilBERT model is trained for movie success probability prediction

IMDB Success Predictor Project involves Web Scraping custom IMDB data between 2020 and 2021 of 10000 movies and shows sorted by number of votes ,fine

Gautam Diwan 1 Jan 18, 2022
Official implementation of the paper DeFlow: Learning Complex Image Degradations from Unpaired Data with Conditional Flows

DeFlow: Learning Complex Image Degradations from Unpaired Data with Conditional Flows Official implementation of the paper DeFlow: Learning Complex Im

Valentin Wolf 86 Nov 16, 2022
Code for our paper "Interactive Analysis of CNN Robustness"

Perturber Code for our paper "Interactive Analysis of CNN Robustness" Datasets Feature visualizations: Google Drive Fine-tuning checkpoints as saved m

Stefan Sietzen 0 Aug 17, 2021
project page for VinVL

VinVL: Revisiting Visual Representations in Vision-Language Models Updates 02/28/2021: Project page built. Introduction This repository is the project

308 Jan 09, 2023
TensorFlow implementation of AlexNet and its training and testing on ImageNet ILSVRC 2012 dataset

AlexNet training on ImageNet LSVRC 2012 This repository contains an implementation of AlexNet convolutional neural network and its training and testin

Matteo Dunnhofer 161 Nov 25, 2022
Fuwa-http - The http client implementation for the fuwa eco-system

Fuwa HTTP The HTTP client implementation for the fuwa eco-system Example import

Fuwa 2 Feb 16, 2022
A PyTorch-based open-source framework that provides methods for improving the weakly annotated data and allows researchers to efficiently develop and compare their own methods.

Knodle (Knowledge-supervised Deep Learning Framework) - a new framework for weak supervision with neural networks. It provides a modularization for se

93 Nov 06, 2022
Tensorflow implementation of Semi-supervised Sequence Learning (https://arxiv.org/abs/1511.01432)

Transfer Learning for Text Classification with Tensorflow Tensorflow implementation of Semi-supervised Sequence Learning(https://arxiv.org/abs/1511.01

DONGJUN LEE 82 Oct 22, 2022
This project aim to create multi-label classification annotation tool to boost annotation speed and make it more easier.

This project aim to create multi-label classification annotation tool to boost annotation speed and make it more easier.

4 Aug 02, 2022
Spatial color quantization in Rust

rscolorq Rust port of Derrick Coetzee's scolorq, based on the 1998 paper "On spatial quantization of color images" by Jan Puzicha, Markus Held, Jens K

Collyn O'Kane 37 Dec 22, 2022
A PyTorch implementation of the WaveGlow: A Flow-based Generative Network for Speech Synthesis

WaveGlow A PyTorch implementation of the WaveGlow: A Flow-based Generative Network for Speech Synthesis Quick Start: Install requirements: pip install

Yuchao Zhang 204 Jul 14, 2022
A collection of Jupyter notebooks to play with NVIDIA's StyleGAN3 and OpenAI's CLIP for a text-based guided image generation.

StyleGAN3 CLIP-based guidance StyleGAN3 + CLIP StyleGAN3 + inversion + CLIP This repo is a collection of Jupyter notebooks made to easily play with St

Eugenio Herrera 176 Dec 30, 2022
Facebook Research 605 Jan 02, 2023
High-Resolution 3D Human Digitization from A Single Image.

PIFuHD: Multi-Level Pixel-Aligned Implicit Function for High-Resolution 3D Human Digitization (CVPR 2020) News: [2020/06/15] Demo with Google Colab (i

Meta Research 8.4k Dec 29, 2022
GeDML is an easy-to-use generalized deep metric learning library

GeDML is an easy-to-use generalized deep metric learning library

Borui Zhang 32 Dec 05, 2022
Replication Code for "Self-Supervised Bug Detection and Repair" NeurIPS 2021

Self-Supervised Bug Detection and Repair This is the reference code to replicate the research in Self-Supervised Bug Detection and Repair in NeurIPS 2

Microsoft 85 Dec 24, 2022
Mask-invariant Face Recognition through Template-level Knowledge Distillation

Mask-invariant Face Recognition through Template-level Knowledge Distillation This is the official repository of "Mask-invariant Face Recognition thro

Fadi Boutros 35 Dec 06, 2022
PSML: A Multi-scale Time-series Dataset for Machine Learning in Decarbonized Energy Grids

PSML: A Multi-scale Time-series Dataset for Machine Learning in Decarbonized Energy Grids The electric grid is a key enabling infrastructure for the a

Texas A&M Engineering Research 19 Jan 07, 2023
Code for the paper "Attention Approximates Sparse Distributed Memory"

Attention Approximates Sparse Distributed Memory - Codebase This is all of the code used to run analyses in the paper "Attention Approximates Sparse D

Trenton Bricken 14 Dec 05, 2022
ICLR21 Tent: Fully Test-Time Adaptation by Entropy Minimization

⛺️ Tent: Fully Test-Time Adaptation by Entropy Minimization This is the official project repository for Tent: Fully-Test Time Adaptation by Entropy Mi

Dequan Wang 204 Dec 25, 2022