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Learning 3D Generative Models

description

Website for the Workshop on Learning 3D Generative Models at CVPR 2020 ---

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Learning 3D Generative Models

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2026-03-02 20:32:25

raw text

Learning 3D Generative Models Introduction Call for Papers Important Dates Schedule Accepted Papers Invited Speakers Organizers Learning 3D Generative Models CVPR 2020 Workshop, Seattle, WA 14th of June 2020 Please give us your feedback on how the workshop went using this Google form . Introduction The past several years have seen an explosion of interest in generative modeling: unsupervised models which learn to synthesize new elements from the training data domain. Such models have been used to breathtaking effect for generating realistic images, especially of human faces, which are in some cases indistinguishable from reality. The unsupervised latent representations learned by these models can also prove powerful when used as feature sets for supervised learning tasks. Thus far, the vision community's attention has mostly focused on generative models of 2D images. However, in computer graphics, there has been a recent surge of activity in gen...

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