irfanICMLL/Auto_painter
Recently, realistic image generation using deep neural networks has become a hot topic in machine learning and computer vision. Such an image can be generated at pixel level by learning from a large collection of images. Learning to generate colorful cartoon images from black-and-white sketches is not only an interesting research problem, but also a useful application in digital entertainment. In this paper, we investigate the sketch-to-image synthesis problem by using conditional generative adversarial networks (cGAN). We propose a model called auto-painter which can automatically generate compatible colors given a sketch. Wasserstein distance is used in training cGAN to overcome model collapse and enable the model converged much better. The new model is not only capable of painting hand-draw sketch with compatible colors, but also allowing users to indicate preferred colors. Experimental results on different sketch datasets show that the auto-painter performs better than other existing image-to-image methods.
Python
Stargazers
- 1177VitaCarnegie Mellon University
- 122915Central China Normal University
- AlmasAskarbekovAlmaty, KZ
- APTXOUSTongji University
- bourbakisShanghai
- ChenYuxu4nUESTC
- creatistshenzhen
- dogatuncaySan Francisco, CA
- Green-Soybean
- Hina-H
- hujb48NanKai University
- Ianmcmill
- iKaHibi
- irfanICMLLthe University of Adelaide
- jakubLangrLondon
- jinyx728Stanford AI Laboratory (SAIL)
- leonlee723
- nicolastahShanghai Jiao Tong University (SJTU)
- peachisChina
- Qais17@MicrosoftAiSchool
- rkkuang
- seekerzz
- ShadowithinShangHai
- sijia-chenXPeng
- TsaiYali
- Wenzhao-XiangUniversity of Chinese Academy of Sciences
- widnyana@damarseta @redite
- wjfwudi
- ygexe
- youyouzhenjun
- Yuliang-LiuHuazhong University of Science and Technology
- YvanYinHorizon Robotics
- ZENGXHUniversity of Toronto
- zhangziheng228Shanghai
- zxy14120448
- zy197997312ZUEL