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Matthew Loper

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Learning Realistic Human Reposing using Cyclic Self-Supervision with 3D Shape, Pose, and Appearance Consistency

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Oct 11, 2021
Soubhik Sanyal, Alex Vorobiov, Timo Bolkart, Matthew Loper, Betty Mohler, Larry Davis, Javier Romero, Michael J. Black

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FACSIMILE: Fast and Accurate Scans From an Image in Less Than a Second

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Sep 02, 2019
David Smith, Matthew Loper, Xiaochen Hu, Paris Mavroidis, Javier Romero

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The Informed Sampler: A Discriminative Approach to Bayesian Inference in Generative Computer Vision Models

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Mar 07, 2015
Varun Jampani, Sebastian Nowozin, Matthew Loper, Peter V. Gehler

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