Style Transfer using Spell with Yining Shi
In this live stream, Yining Shi demonstrates how to train a "Style Transfer Model" using Spell (Sign up here: https://spell.run/codingtrain). After training the model, Yining writes code to process new images in the browser with ml5.js.
#ThisDotStyle #StyleTransfer #MachineLearning
This stream is sponsored by Spell.
4:28 - What is a Style Transfer
22:47 - Training a Style Transfer Model with Spell
56:48 - Converting model to ml5.js
1:18:35 - End of Presentation/Q&A
π Style Transfer Example: https://yining1023.github.io/styleTransfer_spell/
π Detailed Instructions: https://github.com/yining1023/styleTransfer_spell/
π ml5.js: https://ml5js.org/
π p5.js: https://p5js.org
π Fast Style Transfer in TensorFlow by Logan Engstrom: https://github.com/lengstrom/fast-style-transfer/
π Machine Learning 101: https://spell.run/docs/core_concepts/#machine-learning-101
π What Neural Networks See by Gene Kogan: https://experiments.withgoogle.com/what-neural-nets-see
π Fast style transfer in deeplearn.js by Reiichiro Nakano: https://github.com/reiinakano/fast-style-transfer-deeplearnjs
π₯ Introduction to Spell: https://youtu.be/ggBOAPtFjYU
π₯ Text Generation using Spell with Nabil Hassein: https://youtu.be/0IeqAd2H57g
π₯ Two Minute Papers: https://www.youtube.com/channel/UCbfYPyITQ-7l4upoX8nvctg
Work Cited:
π A Neural Algorithm of Artistic Style [Leon A. Gatys, Alexander S. Ecker, Matthias Bethge]
π Perceptual Losses for Real-Time Style Transfer and Super-Resolution [Justin Johnson, Alexandre Alahi, Li Fei-Fei]
π Artistic style transfer for videos [Manuel Ruder, Alexey Dosovitskiy, Thomas Brox]
π Deep Photo Style Transfer [Fujun Luan, Sylvain Paris, Eli Shechtman, Kavita Bala]
π Visual Attribute Transfer through Deep Image Analogy [Jing Liao, Yuan Yao, Lu Yuan, Gang Hua, Sing Bing Kang]
π Universal Style Transfer via Feature Transforms [Yijun Li, Chen Fang, Jimei Yang, Zhaowen Wang, Xin Lu, Ming-Hsuan Yang]
Yining Shi is an artist and researcher who is interested in building tools to craft a better learning experience for people. She is also an adjunct professor at Interactive Telecommunications Program (ITP) at NYU, where she teaches Machine Learning for the Web class. She also contributes to various open source projects like p5.js, ml5.js. She currently works at Sourcemap as a Senior Software Engineer.
Yining Shi's website: http://1023.io/
π Code of Conduct: https://github.com/CodingTrain/Code-of-Conduct