CIPHER: Culvert Inspection through Pairwise Frame Selection and High-Efficiency Reconstruction

March 14, 2026 ยท Grace Period ยท ๐Ÿ› ICCV 2026

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Authors Seoyoung Lee, Zhangyang Wang arXiv ID 2603.14150 Category cs.CV: Computer Vision Citations 0 Venue ICCV 2026
Abstract
Automated culvert inspection systems can help increase the safety and efficiency of flood management operations. As a key step to this system, we present an efficient RGB-based 3D reconstruction pipeline for culvert-like structures in visually repetitive environments. Our approach first selects informative frame pairs to maximize viewpoint diversity while ensuring valid correspondence matching using a plug-and-play module, followed by a reconstruction model that simultaneously estimates RGB appearance, geometry, and semantics in real-time. Experiments demonstrate that our method effectively generates accurate 3D reconstructions and depth maps, enhancing culvert inspection efficiency with minimal human intervention.
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