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Auteurs principaux: Wu, Yuchen, Li, Jiahe, Tosi, Fabio, Poggi, Matteo, Zheng, Jin, Bai, Xiao
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2512.25008
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author Wu, Yuchen
Li, Jiahe
Tosi, Fabio
Poggi, Matteo
Zheng, Jin
Bai, Xiao
author_facet Wu, Yuchen
Li, Jiahe
Tosi, Fabio
Poggi, Matteo
Zheng, Jin
Bai, Xiao
contents We present FoundationSLAM, a learning-based monocular dense SLAM system that addresses the absence of geometric consistency in previous flow-based approaches for accurate and robust tracking and mapping. Our core idea is to bridge flow estimation with geometric reasoning by leveraging the guidance from foundation depth models. To this end, we first develop a Hybrid Flow Network that produces geometry-aware correspondences, enabling consistent depth and pose inference across diverse keyframes. To enforce global consistency, we propose a Bi-Consistent Bundle Adjustment Layer that jointly optimizes keyframe pose and depth under multi-view constraints. Furthermore, we introduce a Reliability-Aware Refinement mechanism that dynamically adapts the flow update process by distinguishing between reliable and uncertain regions, forming a closed feedback loop between matching and optimization. Extensive experiments demonstrate that FoundationSLAM achieves superior trajectory accuracy and dense reconstruction quality across multiple challenging datasets, while running in real-time at 18 FPS, demonstrating strong generalization to various scenarios and practical applicability of our method.
format Preprint
id arxiv_https___arxiv_org_abs_2512_25008
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle FoundationSLAM: Unleashing the Power of Depth Foundation Models for End-to-End Dense Visual SLAM
Wu, Yuchen
Li, Jiahe
Tosi, Fabio
Poggi, Matteo
Zheng, Jin
Bai, Xiao
Computer Vision and Pattern Recognition
We present FoundationSLAM, a learning-based monocular dense SLAM system that addresses the absence of geometric consistency in previous flow-based approaches for accurate and robust tracking and mapping. Our core idea is to bridge flow estimation with geometric reasoning by leveraging the guidance from foundation depth models. To this end, we first develop a Hybrid Flow Network that produces geometry-aware correspondences, enabling consistent depth and pose inference across diverse keyframes. To enforce global consistency, we propose a Bi-Consistent Bundle Adjustment Layer that jointly optimizes keyframe pose and depth under multi-view constraints. Furthermore, we introduce a Reliability-Aware Refinement mechanism that dynamically adapts the flow update process by distinguishing between reliable and uncertain regions, forming a closed feedback loop between matching and optimization. Extensive experiments demonstrate that FoundationSLAM achieves superior trajectory accuracy and dense reconstruction quality across multiple challenging datasets, while running in real-time at 18 FPS, demonstrating strong generalization to various scenarios and practical applicability of our method.
title FoundationSLAM: Unleashing the Power of Depth Foundation Models for End-to-End Dense Visual SLAM
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.25008