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1
Introduction
2
Two dominating paradigms
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Current Slam systems
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Goals
5
Problem
6
Current Generative Models
7
Model Overview
8
Loss Functions
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Results
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Baseline
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Full Model
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Flying Furniture
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Video Representation
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Failure Cases
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Better 3D Representation
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Overview
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Future Work
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Keeley 360
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Conclusion
Description:
Explore a keynote presentation on unsupervised learning of generative models for 3D controllable image synthesis. Delve into the potential of replacing traditional rendering pipelines with efficient, image-learned models. Examine the challenges of disentangling 3D properties in 2D domains and the lack of interpretable, controllable representations in current image synthesis models. Discover an approach that reasons in both 3D space and 2D image domains to tackle 3D controllable image synthesis. Learn about a model that unsupervisedly disentangles latent 3D factors from raw images, enabling consistent novel scene synthesis. Follow the presentation's structure, covering introduction, paradigms, current SLAM systems, goals, problems, generative models, model overview, loss functions, results, baselines, full model implementation, flying furniture examples, video representation, failure cases, improved 3D representation, and future work directions.

Towards Unsupervised Learning of Generative Models for 3D Controllable Image Synthesis

Andreas Geiger
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