A simple PyTorch Implementation of Generative Adversarial Networks, focusing on anime face drawing. The images are generated from a DCGAN model trained on 143,000 anime character faces for 100 epochs. Manipulating latent codes enables the transition from images in the first row to the last row. The images are not clean, some outliers can be observed, which degrades the quality of the generated images. Anime-style images of 126 tags are collected from danbooru.donmai.us using the crawler tool gallery-dl. The images are then processed by an anime face detector python-anime face. The resulting dataset contains ~143,000 anime faces. Note that some of the tags may no longer be meaningful after cropping, i.e. the cropped face images under the 'uniform' tag may not contain visible parts of uniforms.

Features

  • Randomly generated images
  • anime-faces Dataset
  • Requires gallery-dl, python-animeface
  • Extract faces from the downloaded images
  • Download anime-style images
  • PyTorch Implementation of Generative Adversarial Networks

Project Samples

Project Activity

See All Activity >

License

MIT License

Follow AnimeGAN

AnimeGAN Web Site

You Might Also Like
Go beyond a virtual data room with Datasite Diligence Icon
Go beyond a virtual data room with Datasite Diligence

Datasite Diligence, helps dealmakers in more than 170 countries close more deals, faster.

The data room with a view. Evolved for next-generation M&A. Built on decades of deal experience. Packed with expert tools, yet intuitive for novices. A fully mobile platform with frictionless processes. Smart AI tools that let you close more deals, faster, plus end-to-end support at all times. Do due diligence with intelligence.
Learn More
Rate This Project
Login To Rate This Project

User Reviews

Be the first to post a review of AnimeGAN!

Additional Project Details

Programming Language

Python

Related Categories

Python Generative Adversarial Networks (GAN), Python Anime Software, Python Generative AI

Registered

2023-03-21