MonoPlane: Exploiting Monocular Geometric Cues for Generalizable 3D Plane Reconstruction
This paper presents a generalizable 3D plane detection and reconstruction framework named MonoPlane. Unlike previous robust estimator-based works (which require multiple images or RGB-D input) and learning-based works (which suffer from domain shift), MonoPlane combines the best of two worlds and es...
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Zusammenfassung: | This paper presents a generalizable 3D plane detection and reconstruction
framework named MonoPlane. Unlike previous robust estimator-based works (which
require multiple images or RGB-D input) and learning-based works (which suffer
from domain shift), MonoPlane combines the best of two worlds and establishes a
plane reconstruction pipeline based on monocular geometric cues, resulting in
accurate, robust and scalable 3D plane detection and reconstruction in the
wild. Specifically, we first leverage large-scale pre-trained neural networks
to obtain the depth and surface normals from a single image. These monocular
geometric cues are then incorporated into a proximity-guided RANSAC framework
to sequentially fit each plane instance. We exploit effective 3D point
proximity and model such proximity via a graph within RANSAC to guide the plane
fitting from noisy monocular depths, followed by image-level multi-plane joint
optimization to improve the consistency among all plane instances. We further
design a simple but effective pipeline to extend this single-view solution to
sparse-view 3D plane reconstruction. Extensive experiments on a list of
datasets demonstrate our superior zero-shot generalizability over baselines,
achieving state-of-the-art plane reconstruction performance in a transferring
setting. Our code is available at https://github.com/thuzhaowang/MonoPlane . |
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DOI: | 10.48550/arxiv.2411.01226 |