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YouTube

Interpreting Deep Generative Models for Interactive AI Content Creation

Bolei Zhou via YouTube

Overview

Explore the intricacies of deep generative models and their application in interactive AI content creation in this 44-minute tutorial lecture by Bolei Zhou from the Chinese University of Hong Kong. Delve into topics such as image generation, neural image generation pipelines, and supervised approaches. Examine the concept of latent space, linear classification, and manipulation techniques. Discover phase generation, inverse graphics networks, and the challenges associated with these methods. Learn about interactive content creation demos, including Ganspace and Style Clip. Investigate inductive bias, zero-shot learning, and OpenAI's contributions to the field. Gain insights into latent spaces, inversion methods, evaluation techniques, and practical applications of deep generative models in AI-driven content creation.

Syllabus

Introduction
Image Generation
Neural Image Generation Pipeline
Supervised Approach
Latent Space
Linear Classification
Linear Manipulation
Phase Generation
Linear Manipulation Model
Inverse Graphics Network
Challenges
On Second Approach
Interactive Content Creation Demo
Ganspace
Hessian Penalty
Inductive Bios
Challenge
Zero Version
Style Clip
OpenAI
Summary
Latent Spaces
Inversion Method
Evaluation
Applications
Conclusion

Taught by

Bolei Zhou

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