Ghorbani, F., Chen, Y.-C., Hollaus, M., & Pfeifer, N. (2024). A Robust and Automatic Algorithm for TLS–ALS Point Cloud Registration in Forest Environments Based on Tree Locations. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 17, 4015–4035. https://doi.org/10.1109/JSTARS.2024.3355173
IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
-
ISSN:
1939-1404
-
Date (published):
2024
-
Number of Pages:
21
-
Publisher:
IEEE
-
Peer reviewed:
Yes
-
Keywords:
Feature extraction; Forest; Forestry; Global navigation satellite system; Individual tree locations; Iterative; Point cloud compression; point cloud fusion; Point clouds; Reducing dependency; Three-dimensional displays; TLS-ALS registration; Vegetation; Vegetation mapping
en
Abstract:
The utilization of terrestrial laser scanning (TLS) and airborne laser scanning (ALS) point cloud data in forest inventory studies has significantly increased. Fusing of TLS and ALS point cloud data has been recognized as an effective approach in forest studies. In this regard, co-registration of point clouds is considered one of the crucial steps in the integration process. Co-registering point clouds in forest environments faces various challenges, including unstable features, extensive occlusions, different viewpoints, and differences in point cloud densities. To address these intricate challenges, this study introduces an automated and robust method for co-registering TLS and ALS point clouds based on the correspondence of individual tree locations in forest environments. Recently, tree location-based methodologies have been advanced to grapple with these complexities in forest environments. However, many of these methods are highly sensitive to the accuracy of tree positioning. The proposed approach aims to reduce sensitivity to individual tree positioning accuracy. Initially, the positions of individual trees in both TLS and ALS data are extracted. Then, a filtering approach is applied to eliminate positions with low potential for corresponding matches in the TLS and ALS dataset. Since larger trees in the TLS data have a higher potential for corresponding matches in the ALS data, an iterative process is applied to identify correspondences between trees in both datasets. After estimating transformation parameters, the co-registration process is executed. The proposed method is applied on six datasets with varying forest complexities. The results demonstrate a high success rate up to 100% if the starting position of the TLS plots are located within ∼4 hectares (∼2000 trees). Additionally, the potential of the proposed method for co-registering TLS data with ALS data across different search areas and varying number of trees is evaluated in detail. The outcomes indicate that successful co-registration of TLS plot with 50 m diameter to ALS data is successful in the best case within a search radius of approximately 113 hectares (∼60,000 tree locations) and in the worst case for around 20 hectares (∼10,000 tree locations) depending on the forest complexity.
en
Research Areas:
Environmental Monitoring and Climate Adaptation: 100%