CVMar 22, 2022

PlaneMVS: 3D Plane Reconstruction from Multi-View Stereo

arXiv:2203.12082v350 citationsh-index: 16Has Code
Originality Highly original
AI Analysis

This work addresses the problem of accurate 3D plane reconstruction for computer vision applications, offering a novel approach that outperforms existing methods, though it is incremental in combining plane detection with MVS.

The authors tackled 3D plane reconstruction from multiple images by introducing PlaneMVS, a framework that uses a multi-view stereo pipeline to overcome depth scale ambiguity in single-view methods, achieving state-of-the-art results on indoor datasets with significant improvements in plane detection and 3D geometry metrics.

We present a novel framework named PlaneMVS for 3D plane reconstruction from multiple input views with known camera poses. Most previous learning-based plane reconstruction methods reconstruct 3D planes from single images, which highly rely on single-view regression and suffer from depth scale ambiguity. In contrast, we reconstruct 3D planes with a multi-view-stereo (MVS) pipeline that takes advantage of multi-view geometry. We decouple plane reconstruction into a semantic plane detection branch and a plane MVS branch. The semantic plane detection branch is based on a single-view plane detection framework but with differences. The plane MVS branch adopts a set of slanted plane hypotheses to replace conventional depth hypotheses to perform plane sweeping strategy and finally learns pixel-level plane parameters and its planar depth map. We present how the two branches are learned in a balanced way, and propose a soft-pooling loss to associate the outputs of the two branches and make them benefit from each other. Extensive experiments on various indoor datasets show that PlaneMVS significantly outperforms state-of-the-art (SOTA) single-view plane reconstruction methods on both plane detection and 3D geometry metrics. Our method even outperforms a set of SOTA learning-based MVS methods thanks to the learned plane priors. To the best of our knowledge, this is the first work on 3D plane reconstruction within an end-to-end MVS framework. Source code: https://github.com/oppo-us-research/PlaneMVS.

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