CVROJul 15, 2025

VISTA: Monocular Segmentation-Based Mapping for Appearance and View-Invariant Global Localization

arXiv:2507.11653v1h-index: 6IEEE Robot Autom Lett
Originality Incremental advance
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This addresses global localization for autonomous navigation in challenging conditions like viewpoint and seasonal changes, offering a compact, real-time solution.

The paper tackles the problem of global localization in unstructured environments with appearance changes by proposing VISTA, a monocular segmentation-based mapping framework, which achieves up to 69% improvement in recall over baselines and reduces map size to 0.6% of a baseline.

Global localization is critical for autonomous navigation, particularly in scenarios where an agent must localize within a map generated in a different session or by another agent, as agents often have no prior knowledge about the correlation between reference frames. However, this task remains challenging in unstructured environments due to appearance changes induced by viewpoint variation, seasonal changes, spatial aliasing, and occlusions -- known failure modes for traditional place recognition methods. To address these challenges, we propose VISTA (View-Invariant Segmentation-Based Tracking for Frame Alignment), a novel open-set, monocular global localization framework that combines: 1) a front-end, object-based, segmentation and tracking pipeline, followed by 2) a submap correspondence search, which exploits geometric consistencies between environment maps to align vehicle reference frames. VISTA enables consistent localization across diverse camera viewpoints and seasonal changes, without requiring any domain-specific training or finetuning. We evaluate VISTA on seasonal and oblique-angle aerial datasets, achieving up to a 69% improvement in recall over baseline methods. Furthermore, we maintain a compact object-based map that is only 0.6% the size of the most memory-conservative baseline, making our approach capable of real-time implementation on resource-constrained platforms.

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