Multi-View Stereo with Single-View Semantic Mesh Refinement
Andrea Romanoni, Marco Ciccone, Francesco Visin, Matteo Matteucci

TL;DR
This paper introduces a novel method for refining 3D mesh geometry and semantic labels by combining variational optimization with semantic consistency and class-specific priors, improving over volumetric approaches.
Contribution
It proposes a joint mesh refinement framework using a variational method and a new MRF formulation that incorporates class-specific priors from semantic annotations.
Findings
Enhanced mesh geometry accuracy through variational optimization.
Improved semantic labeling consistency with a novel MRF approach.
Better scalability and resolution compared to volumetric methods.
Abstract
While 3D reconstruction is a well-established and widely explored research topic, semantic 3D reconstruction has only recently witnessed an increasing share of attention from the Computer Vision community. Semantic annotations allow in fact to enforce strong class-dependent priors, as planarity for ground and walls, which can be exploited to refine the reconstruction often resulting in non-trivial performance improvements. State-of-the art methods propose volumetric approaches to fuse RGB image data with semantic labels; even if successful, they do not scale well and fail to output high resolution meshes. In this paper we propose a novel method to refine both the geometry and the semantic labeling of a given mesh. We refine the mesh geometry by applying a variational method that optimizes a composite energy made of a state-of-the-art pairwise photo-metric term and a single-view term…
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