WHU-PCPR: A cross-platform heterogeneous point cloud dataset for place recognition in complex urban scenes

Xianghong Zou1 Jianping Li2,† Yandi Yang3
Weitong Wu4 Yuan Wang5 Qiegen Liu6,† Zhen Dong7, 8
1 School of Advanced Manufacturing, Nanchang University
2 School of Electrical and Electronic Engineering, Nanyang Technological University
3 Department of Geomatics Engineering, University of Calgary
4 School of Earth Sciences and Engineering, Hohai University
5 School of Geography and Environment, Jiangxi Normal University
6 School of Information Engineering, Nanchang University
Corresponding authors.    7 State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University
8 Hubei Luojia Laboratory

[Paper]      [Code]     [BibTeX]

Abstract

Point Cloud-based Place Recognition (PCPR) demonstrates considerable potential in applications such as autonomous driving, robot localization and navigation, and map update. In practical applications, point clouds used for place recognition are often acquired from different platforms and LiDARs across varying scene. However, existing PCPR datasets lack diversity in scenes, platforms, and sensors, which limits the effective development of related research. To address this gap, we establish WHU-PCPR, a cross-platform heterogeneous point cloud dataset designed for place recognition. The dataset differentiates itself from existing datasets through its distinctive characteristics: 1) cross-platform heterogeneous point clouds: collected from survey-grade vehicle-mounted Mobile Laser Scanning (MLS) systems and low-cost Portable helmet-mounted Laser Scanning (PLS) systems, each equipped with distinct mechanical and solid-state LiDAR sensors. 2) Complex localization scenes: encompassing real-time and long-term changes in both urban and campus road scenes. 3) Large-scale spatial coverage: featuring 82.3 km of trajectory over a 60-month period and an unrepeated route of approximately 30 km. Based on WHU-PCPR, we conduct extensive evaluation and in-depth analysis of several representative PCPR methods, and provide a concise discussion of key challenges and future research directions.


WHU-PCPR, a cross-platform heterogeneous point cloud dataset for place recognition in complex urban scenes . It features: 1) cross-platform heterogeneous point clouds: collected from survey-grade vehicle-mounted laser scanning (MLS) systems and low-cost portable helmet-mounted laser scanning (HLS) systems, each equipped with distinct mechanical and solid-state LiDAR sensors. 2) Complex localization scenes: encompassing real-time and long-term changes in both urban and campus road scenes. 3) Large-scale spatial coverage: featuring 82.3 km of trajectory over a 60-month period and an unrepeated route of approximately 30 km.
[Youtube]

Dataset

Characteristics of WHU-PCPR.
Detailed description of WHU-PCPR dataset.
Cloud to cloud distance in WHU-PCPR. (a) WHU 1\&2 (CS college), (b) WHU 1\&2 (Info campus), (c) Hankou 1\&2 (Zhongshan Park), (d) Hankou 1\&2 (Jiefang Road 1), (e) WHU 1\&3 (CS college), (f) WHU 1\&3 (Info campus), (g) Hankou 1\&3 (Zhongshan Park), (h) Hankou 1\&3 (Jiefang Road 1). A, B, C, and D are the positional errors of manually selected corresponding points (gray/blue/red: phase 1/2/3).

Benchmark - Retrieval

Retrieval results on Wuhan-PCPR
Recall curves of retrieval baselines on Wuhan-PCPR. (a) Hankou 1&2, (b) Hankou 1&3, (c) Hankou 2&3, (d) WHU 1&2, (e) WHU 1&3, (f) WHU 2&3.

Benchmark - Reranking

Reranking results on Wuhan-PCPR and Oxford.
Recall and precision curves of reranking baselines on Wuhan-PCPR. (a)/(d) Hankou 1&2, (b)/(e) Hankou 1&3, (c)/(f) Hankou 2&3, (g)/(j) WHU 1&2, (h)/(k) WHU 1&3, (i)/(l) WHU 2&3.

Retrieval and reranking cases

Success place recognition cases when using LoGG3DNet for retrieval and SGV for reranking. (a) case 1 on Hankou, (b) case 2 on WHU, (c) case 3 on WHU. Purple represents query, red represents failure, and green represents success.
Bad cases of place recognition (LoGG3DNet and SGV) on Wuhan-PCPR. (a) case 1, (b) case 2, (c) case 3.

BibTex

@article{zou2026WHU-PCPR,
  title={WHU-PCPR: A cross-platform heterogeneous point cloud dataset for place recognition in complex urban scenes},
  author={Zou, Xianghong and Li, Jianping and Yang, Yandi and Wu, Weitong and Dong, Zhen and Liu, Qiegen},
  journal={ISPRS Journal of Photogrammetry and Remote Sensing},
  volume={xxx},
  pages={xxx--xxx},
  year={2026}
  publisher={Elsevier}
}