DeepSDF: Learning Continuous Signed Distance Functions for ...
DeepSDF: Learning Continuous Signed Distance Functions for Shape Representation Jeong Joon Park1 , 3Peter Florence 2 Julian Straub Richard Newcombe Steven Lovegrove3 1University of Washington 2Massachusetts Institute of Technology 3Facebook Reality Labs Figure 1: DeepSDF represents signed distance functions (SDFs) of shapes via latent code-conditioned …
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