DeepSDF: Learning Continuous Signed Distance Functions for Shape Representation

CVPR 2019 Jeong Joon ParkPeter FlorenceJulian StraubRichard NewcombeSteven Lovegrove

Computer graphics, 3D computer vision and robotics communities have produced multiple approaches to representing 3D geometry for rendering and reconstruction. These provide trade-offs across fidelity, efficiency and compression capabilities... (read more)

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