Cross-Modal Geometric Hierarchy Fusion: An Implicit-Submap Driven Framework for Resilient 3D Place Recognition
Xiaohui Jiang, Haijiang Zhu, Chade Li, Fulin Tang, and Ning An

TL;DR
This paper introduces a density-agnostic 3D place recognition framework using implicit geometric representations and multi-scale descriptors, achieving state-of-the-art results in diverse datasets.
Contribution
It presents a novel implicit 3D representation and a fusion method for macro and micro geometric features, improving robustness and discriminative power in place recognition.
Findings
State-of-the-art accuracy on multiple datasets
Robustness to point cloud density variations
Efficient balance of accuracy, runtime, and memory
Abstract
LiDAR-based place recognition serves as a crucial enabler for long-term autonomy in robotics and autonomous driving systems. Yet, prevailing methodologies relying on handcrafted feature extraction face dual challenges: (1) Inconsistent point cloud density, induced by ego-motion dynamics and environmental disturbances during repeated traversals, leads to descriptor instability, and (2) Representation fragility stems from reliance on single-level geometric abstractions that lack discriminative power in structurally complex scenarios. To address these limitations, we propose a novel framework that redefines 3D place recognition through density-agnostic geometric reasoning. Specifically, we introduce an implicit 3D representation based on elastic points, which is immune to the interference of original scene point cloud density and achieves the characteristic of uniform distribution.…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Image and Video Retrieval Techniques · Advanced Vision and Imaging
