ForestAlign: Automatic Forest Structure-based Alignment for Multi-view TLS and ALS Point Clouds
Access to highly detailed models of heterogeneous forests, spanning from the near surface to above the tree canopy at varying scales, is increasingly in demand. This enables advanced computational tools for analysis, planning, and ecosystem management. LiDAR sensors, available through terrestrial (T...
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Zusammenfassung: | Access to highly detailed models of heterogeneous forests, spanning from the
near surface to above the tree canopy at varying scales, is increasingly in
demand. This enables advanced computational tools for analysis, planning, and
ecosystem management. LiDAR sensors, available through terrestrial (TLS) and
aerial (ALS) scanning platforms, have become established as the primary
technologies for forest monitoring due to their capability to rapidly collect
precise 3D structural information. Forestry now recognizes the benefits that a
multi-scale approach can bring by leveraging the strengths of each platform.
Here, we propose ForestAlign: an effective, target-less, and fully automatic
co-registration method for aligning forest point clouds collected from
multi-view, multi-scale LiDAR sources. ForestAlign employs an incremental
alignment strategy, grouping and aggregating 3D points based on increasing
levels of structural complexity. This strategy aligns 3D points from less
complex (e.g., ground) to more complex structures (e.g., tree trunks, foliage)
sequentially, refining alignment iteratively. Empirical evidence demonstrates
the method's effectiveness in aligning scans, with RMSE errors of less than
0.75 degrees in rotation and 5.5 cm in translation in the TLS to TLS case and
of 0.8 degrees and 8 cm in the TLS to ALS case, respectively. These results
demonstrate that ForestAlign can effectively integrate TLS-to-TLS and
TLS-to-ALS forest scans, making it a valuable tool in GPS-denied areas without
relying on manually placed targets, while achieving high performance. |
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DOI: | 10.48550/arxiv.2302.12989 |