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Main Authors: Anadón, X., Rodríguez-Puigvert, Javier, Montiel, J. M. M.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.14346
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author Anadón, X.
Rodríguez-Puigvert, Javier
Montiel, J. M. M.
author_facet Anadón, X.
Rodríguez-Puigvert, Javier
Montiel, J. M. M.
contents Multi-map Sparse Monocular visual Simultaneous Localization and Mapping applied to monocular endoscopic sequences has proven efficient to robustly recover tracking after the frequent losses in endoscopy due to motion blur, temporal occlusion, tools interaction or water jets. The sparse multi-maps are adequate for robust camera localization, however they are very poor for environment representation, they are noisy, with a high percentage of inaccurately reconstructed 3D points, including significant outliers, and more importantly with an unacceptable low density for clinical applications. We propose a method to remove outliers and densify the maps of the state of the art for sparse endoscopy multi-map CudaSIFT-SLAM. The NN LightDepth for up-to-scale depth dense predictions are aligned with the sparse CudaSIFT submaps by means of the robust to spurious LMedS. Our system mitigates the inherent scale ambiguity in monocular depth estimation while filtering outliers, leading to reliable densified 3D maps. We provide experimental evidence of accurate densified maps 4.15 mm RMS accuracy at affordable computing time in the C3VD phantom colon dataset. We report qualitative results on the real colonoscopy from the Endomapper dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2503_14346
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle 3D Densification for Multi-Map Monocular VSLAM in Endoscopy
Anadón, X.
Rodríguez-Puigvert, Javier
Montiel, J. M. M.
Computer Vision and Pattern Recognition
Multi-map Sparse Monocular visual Simultaneous Localization and Mapping applied to monocular endoscopic sequences has proven efficient to robustly recover tracking after the frequent losses in endoscopy due to motion blur, temporal occlusion, tools interaction or water jets. The sparse multi-maps are adequate for robust camera localization, however they are very poor for environment representation, they are noisy, with a high percentage of inaccurately reconstructed 3D points, including significant outliers, and more importantly with an unacceptable low density for clinical applications. We propose a method to remove outliers and densify the maps of the state of the art for sparse endoscopy multi-map CudaSIFT-SLAM. The NN LightDepth for up-to-scale depth dense predictions are aligned with the sparse CudaSIFT submaps by means of the robust to spurious LMedS. Our system mitigates the inherent scale ambiguity in monocular depth estimation while filtering outliers, leading to reliable densified 3D maps. We provide experimental evidence of accurate densified maps 4.15 mm RMS accuracy at affordable computing time in the C3VD phantom colon dataset. We report qualitative results on the real colonoscopy from the Endomapper dataset.
title 3D Densification for Multi-Map Monocular VSLAM in Endoscopy
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.14346