Generate Cartoon Images using Generative Adversarial Network

Overview

AvatarGAN

Generate Cartoon Images using DC-GAN

Deep Convolutional GAN is a generative adversarial network architecture. It uses a couple of guidelines, in particular:

  • Replacing any pooling layers with strided convolutions (discriminator) and fractional-strided convolutions (generator).
  • Using batchnorm in both the generator and the discriminator.
  • Removing fully connected hidden layers for deeper architectures.
  • Using ReLU activation in generator for all layers except for the output, which uses tanh.
  • Using LeakyReLU activation in the discriminator for all layer.

Checkout the detailed explanation of AvatarGAN in the article AvatarGAN

DCGAN

GAN Model

  1. Define Generator and Discriminator network architecture
  2. Train the Generator model to generate the fake data that can fool Discriminator
  3. Train the Discriminator model to distinguish real vs fake data
  4. Continue the training for several epochs and save the Generator model

Model

Dataset Setup

Cartoon Set which is a collection of random 2D cartoon avatar images. Download the dataset using the shell script.

sh download-dataset.sh

This will download the dataset in data/ directory. If you want to train the model in Google Colab, upload the dataset folder to Google Drive. The destination path should be projects/cartoons/.

Model Training

Check out the model being trained to generate cartoon images. Training

Model Prediction

Model

Owner
Aakash Jhawar
Software Engineer, Machine Learning
Aakash Jhawar
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