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Auteurs principaux: Morlana, Javier, Tardós, Juan D., Montiel, José M. M.
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2409.16806
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author Morlana, Javier
Tardós, Juan D.
Montiel, José M. M.
author_facet Morlana, Javier
Tardós, Juan D.
Montiel, José M. M.
contents We introduce ColonSLAM, a system that combines classical multiple-map metric SLAM with deep features and topological priors to create topological maps of the whole colon. The SLAM pipeline by itself is able to create disconnected individual metric submaps representing locations from short video subsections of the colon, but is not able to merge covisible submaps due to deformations and the limited performance of the SIFT descriptor in the medical domain. ColonSLAM is guided by topological priors and combines a deep localization network trained to distinguish if two images come from the same place or not and the soft verification of a transformer-based matching network, being able to relate far-in-time submaps during an exploration, grouping them in nodes imaging the same colon place, building more complex maps than any other approach in the literature. We demonstrate our approach in the Endomapper dataset, showing its potential for producing maps of the whole colon in real human explorations. Code and models are available at: https://github.com/endomapper/ColonSLAM.
format Preprint
id arxiv_https___arxiv_org_abs_2409_16806
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Topological SLAM in colonoscopies leveraging deep features and topological priors
Morlana, Javier
Tardós, Juan D.
Montiel, José M. M.
Computer Vision and Pattern Recognition
We introduce ColonSLAM, a system that combines classical multiple-map metric SLAM with deep features and topological priors to create topological maps of the whole colon. The SLAM pipeline by itself is able to create disconnected individual metric submaps representing locations from short video subsections of the colon, but is not able to merge covisible submaps due to deformations and the limited performance of the SIFT descriptor in the medical domain. ColonSLAM is guided by topological priors and combines a deep localization network trained to distinguish if two images come from the same place or not and the soft verification of a transformer-based matching network, being able to relate far-in-time submaps during an exploration, grouping them in nodes imaging the same colon place, building more complex maps than any other approach in the literature. We demonstrate our approach in the Endomapper dataset, showing its potential for producing maps of the whole colon in real human explorations. Code and models are available at: https://github.com/endomapper/ColonSLAM.
title Topological SLAM in colonoscopies leveraging deep features and topological priors
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2409.16806