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Original paper

EPP-MVSNet: Epipolar-assembling based Depth Prediction for Multi-view Stereo

Pages: 5712 - 5720
Published: Oct 1, 2021
Abstract
In this paper, we proposed EPP-MVSNet, a novel deep learning network for 3D reconstruction from multi-view stereo (MVS). EPP-MVSNet can accurately aggregate features at high resolution to a limited cost volume with an optimal depth range, thus, leads to effective and efficient 3D construction. Distinct from existing works which measure feature cost at discrete positions which affects the 3D reconstruction accuracy, EPP-MVSNet introduces an...
Paper Details
Title
EPP-MVSNet: Epipolar-assembling based Depth Prediction for Multi-view Stereo
Published Date
Oct 1, 2021
Pages
5712 - 5720
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