ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
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Articles | Volume X-1/W2-2025
https://doi.org/10.5194/isprs-annals-X-1-W2-2025-223-2025
https://doi.org/10.5194/isprs-annals-X-1-W2-2025-223-2025
04 Nov 2025
 | 04 Nov 2025

LPR-Mate: A Lightweight Universal Reranking-based Optimizer for LiDAR Place Recognition in Challenging Environments

Zhenghua Zhang, Mingcong Shu, and Meng Sun

Keywords: LiDAR place recognition, Reranking optimization, Localization enhancement, Spatial consistency

Abstract. LiDAR place recognition (LPR) plays a critical role in simultaneous localization and mapping (SLAM) and autonomous driving systems. However, current LPR methods exhibit significant performance degradation under rotational shifts, noise interference, point cloud sparsity, and long-term environmental changes. This limitation stems from their reliance on fixed-length global descriptors, which lack the capacity to preserve comprehensive scene information in complex scenarios. To address these challenges, we propose LPR-Mate, a lightweight universal reranking-based optimizer that enhances the robustness of existing LPR frameworks in challenging environments. LPR-Mate processes top-k retrieval candidates from baseline LPR methods through a dual-stage pipeline: (1) A fast trigger mechanism evaluates spatial consistency between query and candidate scenes, selectively activating reranking only for low-confidence matches; (2) An independent reranking network refines candidate rankings by fusing local features, global descriptors, and spatial consistency scores through group and channel attention mechanisms. Extensive experiments on the Oxford RobotCar, NUS-Inhouse, and MulRan datasets demonstrate that LPR-Mate achieves >96% recall in localization accuracy validation and delivers a 32.34% average improvement in Recall@1 under rotational shifts, sparsity, and noise perturbations, while maintaining robustness for raw point clouds and long-term scenarios. As a plug-and-play module, LPR-Mate integrates seamlessly with diverse LPR architectures—including region-sampling and sparse-voxelization-based methods—without requiring retraining or structural modifications, ensuring computational efficiency and cross-architectural universality.

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