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Main Authors: Kornilova, Anastasiia, Moskalenko, Ivan, Gromova, Arabella, Ferrer, Gonzalo, Menshchikov, Alexander
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.08531
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author Kornilova, Anastasiia
Moskalenko, Ivan
Gromova, Arabella
Ferrer, Gonzalo
Menshchikov, Alexander
author_facet Kornilova, Anastasiia
Moskalenko, Ivan
Gromova, Arabella
Ferrer, Gonzalo
Menshchikov, Alexander
contents Thermal imaging provides a practical sensing modality for visual SLAM in visually degraded environments such as low illumination, smoke, or adverse weather. However, thermal imagery often exhibits low texture, low contrast, and high noise, complicating feature-based SLAM. In this work, we propose a sparse monocular graph-based SLAM system for thermal imagery that leverages general-purpose learned features -- the SuperPoint detector and LightGlue matcher, trained on large-scale visible-spectrum data to improve cross-domain generalization. To adapt these components to thermal data, we introduce a preprocessing pipeline to enhance input suitability and modify core SLAM modules to handle sparse and outlier-prone feature matches. We further incorporate keypoint confidence scores from SuperPoint into a confidence-weighted factor graph to improve estimation robustness. Evaluations on public thermal datasets demonstrate that the proposed system achieves reliable performance without requiring dataset-specific training or fine-tuning a desired feature detector, given the scarcity of quality thermal data. Code will be made available upon publication.
format Preprint
id arxiv_https___arxiv_org_abs_2602_08531
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Thegra: Graph-based SLAM for Thermal Imagery
Kornilova, Anastasiia
Moskalenko, Ivan
Gromova, Arabella
Ferrer, Gonzalo
Menshchikov, Alexander
Computer Vision and Pattern Recognition
Thermal imaging provides a practical sensing modality for visual SLAM in visually degraded environments such as low illumination, smoke, or adverse weather. However, thermal imagery often exhibits low texture, low contrast, and high noise, complicating feature-based SLAM. In this work, we propose a sparse monocular graph-based SLAM system for thermal imagery that leverages general-purpose learned features -- the SuperPoint detector and LightGlue matcher, trained on large-scale visible-spectrum data to improve cross-domain generalization. To adapt these components to thermal data, we introduce a preprocessing pipeline to enhance input suitability and modify core SLAM modules to handle sparse and outlier-prone feature matches. We further incorporate keypoint confidence scores from SuperPoint into a confidence-weighted factor graph to improve estimation robustness. Evaluations on public thermal datasets demonstrate that the proposed system achieves reliable performance without requiring dataset-specific training or fine-tuning a desired feature detector, given the scarcity of quality thermal data. Code will be made available upon publication.
title Thegra: Graph-based SLAM for Thermal Imagery
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2602.08531