Editing Faces using Artificial Intelligence

arXiv Insights · Beginner ·📄 Research Papers Explained ·6y ago
Link to Notebooks: https://drive.google.com/open?id=1LBWcmnUPoHDeaYlRiHokGyjywIdyhAQb Link to the StyleGAN paper: https://arxiv.org/abs/1812.04948 Link to GAN blogpost: http://hunterheidenreich.com/blog/gan-objective-functions/ If you want to support this channel, here is my patreon link: https://patreon.com/ArxivInsights --- You are amazing!! ;) If you have questions you would like to discuss with me personally, you can book a 1-on-1 video call through Pensight: https://pensight.com/x/xander-steenbrugge -------------------------------- This episode covers one of the greatest ideas in Deep Learning of the past couple of years: Generative Adversarial Networks. I first explain how a generative adversarial network (GAN) really works. After this general overview, we go into the specific objective function that is optimized during training. We then dive into Nvidia's StyleGAN model and learn how we can manipulate it's latent space to morph arbitrary images of faces. This video comes with a complete Google Colab notebook to reproduce & play with all the examples shown in the video! ::Chapters:: 00:00 Intro 02:55 Video overview 03:35 Introduction to GANs 05:40 5 min Deepdive on the Training Objective for GANs 10:07 State-of-the-art GAN techniques: StyleGAN 14:40 Manipulating the latent space of GANs
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Chapters (6)

Intro
2:55 Video overview
3:35 Introduction to GANs
5:40 5 min Deepdive on the Training Objective for GANs
10:07 State-of-the-art GAN techniques: StyleGAN
14:40 Manipulating the latent space of GANs
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