Registration of TLS and ULS Point Cloud Data in Natural Forest Based on Similar Distance Search

Author:

Deng Yuncheng123,Wang Jinliang1234ORCID,Dong Pinliang5,Liu Qianwei6,Ma Weifeng1237,Zhang Jianpeng123,Su Guankun8,Li Jie123

Affiliation:

1. Faculty of Geography, Yunnan Normal University, 768 Juxian Street, Chenggong District, Kunming 650500, China

2. Key Laboratory of Resources and Environmental Remote Sensing for Universities in Yunnan, Kunming 650500, China

3. Center for Geospatial Information Engineering and Technology of Yunnan Province, Kunming 650500, China

4. Southwest United Graduate School, Kunming 650092, China

5. Department of Geography and the Environment, University of North Texas, 1155 Union Circle #305279, Denton, TX 76203, USA

6. Yunnan Institute of Military-Civilian Integration Development, Kunming 650034, China

7. Power China Kunming Engineering Corporation Limited, Kunming 650051, China

8. New Coordinates Technology Co., Ltd., Kunming 650100, China

Abstract

Multiplatform fusion point clouds can effectively compensate for the disadvantages of individual platform point clouds in forest parameter extraction, maximizing the potential of LiDAR technology. However, existing registration algorithms often suffer from insufficient feature extraction and limited registration accuracy. To address these issues, we propose a ULS (Unmanned Aerial Vehicle Laser Scanning)-TLS (Terrestrial Laser Scanning) point cloud data registration method based on Similar Distance Search (SDS). This method enhances coarse registration by accurately retrieving points with similar features, leading to high overlap in the rough registration stage and further improving fine registration precision. (1) The proposed method was tested on four natural forest plots, including Pinus densata Mast., Pinus yunnanensis Franch., Pices asperata Mast., Abies fabri (Mast.) Craib, and demonstrated high registration accuracy. Both coarse and fine registration achieved superior results, significantly outperforming existing algorithms, with notable improvements over the TR algorithm. (2) In addition, the study evaluated the accuracy of individual tree parameter extraction from fusion point clouds versus single-platform point clouds. While ULS point clouds performed slightly better in some metrics, the fused point clouds offered more consistent and reliable results across varying conditions. Overall, the proposed SDS method and the resulting fusion point clouds provide strong technical support for efficient and accurate forest resource management, with significant scientific implications.

Funder

Yunnan Provincial Science and Technology Project at Southwest United Graduate School

Yunnan Province Science and Technology Talents and Platform Plan Project

National Natural Science Foundation of China

Yunnan Fundamental Research Projects

Publisher

MDPI AG

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