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Benoit Guillard

description

3D Deep Learning at Neural Concept

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site name

Benoit Guillard

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2026-02-21 05:31:15

raw text

Benoit Guillard | 3D Deep Learning at Neural Concept Benoit Guillard LinkedIn Google Scholar Hello! I am Benoît, a researcher at Neural Concept . I graduated in 2023 from my PhD at EPFL’s CvLab , supervised by Prof. Pascal Fua . My work is focused on finding good representations for 3D surface reconstruction and manipulation with neural networks. I was a research intern at Microsoft Research in 2021 and Meta Reality Labs in 2022. Publications (full list on scholar ) DrapeNet: Garment Generation and Self-Supervised Draping Ren Li * , Luca De Luigi * , Benoit Guillard , Mathieu Salzmann , Pascal Fua ; at CVPR 2023 ( * indicates equal contributions) [Project Page] [Paper] [Code] We use MeshUDF as a learned parameterization of garments, and learn to drape them without supervision - in the manner of SNUG , but with a single network for a whole category. DIG: Draping Implicit Garment over the Human Body Ren Li , Benoit Guill...

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