Learning 3D Reconstruction in Function Space (Long Version)

Andreas Geiger
Andreas Geiger
22.5 هزار بار بازدید - 4 سال پیش - Keynote presented on June 19,
Keynote presented on June 19, 2020 at CVPR in the
Joint Workshop on Deep Learning Foundations of Geometric Shape Modeling and Reconstruction

Slides: http://www.cvlibs.net/talks/talk_cvpr...
Papers:
http://www.cvlibs.net/publications/Me...
http://www.cvlibs.net/publications/Oe...
http://www.cvlibs.net/publications/Ni...
http://www.cvlibs.net/publications/Ni...

Abstract: I will show several recent results on learning neural implicit 3D representations by departing from the traditional concept of representing 3D shapes explicitly using voxels, points and meshes. Implicit representations have a small memory footprint and allow for modeling arbitrary 3D toplogies at arbitrary resolution in continuous function space. I will show the abilitiy and limitations of these approaches in the context of reconstructing 3D geometry and textured 3D models and motion. Finally, I will also show results on learning implicit 3D models using only 2D supervision by deriving an analytic closed form solution to the gradient updates.
4 سال پیش در تاریخ 1399/03/26 منتشر شده است.
22,571 بـار بازدید شده
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