PlanarReconstruction
3D reconstructor
A PyTorch implementation of a deep learning-based approach to piece-wise planar 3D reconstruction from single images.
[CVPR'19] Single-Image Piece-wise Planar 3D Reconstruction via Associative Embedding
364 stars
22 watching
86 forks
Language: Python
last commit: about 1 year ago computer-visioncvpr2019deep-learningpytorch
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