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ForestLPR: LiDAR Place Recognition in Forests Attentioning Multiple BEV Density Images

About

Place recognition is essential to maintain global consistency in large-scale localization systems. While research in urban environments has progressed significantly using LiDARs or cameras, applications in natural forest-like environments remain largely under-explored. Furthermore, forests present particular challenges due to high self-similarity and substantial variations in vegetation growth over time. In this work, we propose a robust LiDAR-based place recognition method for natural forests, ForestLPR. We hypothesize that a set of cross-sectional images of the forest's geometry at different heights contains the information needed to recognize revisiting a place. The cross-sectional images are represented by \ac{bev} density images of horizontal slices of the point cloud at different heights. Our approach utilizes a visual transformer as the shared backbone to produce sets of local descriptors and introduces a multi-BEV interaction module to attend to information at different heights adaptively. It is followed by an aggregation layer that produces a rotation-invariant place descriptor. We evaluated the efficacy of our method extensively on real-world data from public benchmarks as well as robotic datasets and compared it against the state-of-the-art (SOTA) methods. The results indicate that ForestLPR has consistently good performance on all evaluations and achieves an average increase of 7.38\% and 9.11\% on Recall@1 over the closest competitor on intra-sequence loop closure detection and inter-sequence re-localization, respectively, validating our hypothesis

Yanqing Shen, Turcan Tuna, Marco Hutter, Cesar Cadena, Nanning Zheng• 2025

Related benchmarks

TaskDatasetResultRank
Inter-session place recognitionWild-Places Venman01-04 (12 query-database pairs)
R@1 Mean0.718
19
Place RecognitionWild-Places Karawatha01-04 (inter-session (12 query-database pairs))
R@1 Mean79
13
Intra-session Place RecognitionWild-Places (Venman03)
R@150.1
13
Intra-session Place RecognitionWild-Places Venman04
R@174.3
13
Intra-session Place RecognitionWild-Places (Karawatha03)
R@159.9
13
Place RecognitionOxford Forest Evo:Single (Intra-session)
R@146.5
13
Place RecognitionOxford Forest of Dean (Intra-session)
R@143.9
13
Intra-run Loop Closure DetectionWild-Places (V-03)
F1 Score0.6415
8
Intra-run Loop Closure DetectionWild-Places (K-03)
F1 Score0.6501
8
Intra-run Loop Closure DetectionANYmal
F1 Score81.45
8
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