Towards Animatable Human Avatars
Offered By: Andreas Geiger via YouTube
Course Description
Overview
Explore cutting-edge research on animatable human avatars in this conference talk. Delve into two groundbreaking papers: SNARF, which introduces differentiable forward skinning for animating non-rigid neural implicit shapes, and MetaAvatar, which focuses on learning animatable clothed human models from limited depth images. Gain insights into neural implicit shapes, backward LBS, meta-learning approaches, and fine-tuning techniques. Examine high-level methodologies, training processes, and comparative results. Witness examples and demonstrations that showcase the potential of these innovative techniques in creating more realistic and adaptable human avatars for various applications.
Syllabus
Intro
Neural Implicit Shapes
NASA
Backward lbs
Training
Results
Summary
Examples
HighLevel Approach
MetaLearning
MetaLearning Example
MetaLearning Approach
MetaLearning Results
Fine Tuning
Comparison
Conclusion
Taught by
Andreas Geiger
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