A co-registration approach between terrestrial and UAV laser scanning point clouds based on ground and trees features
DOI:
https://doi.org/10.12899/asr-2513Keywords:
Forest structure, Terrestrial Laser Scanning, Unmanned Aerial System, Individual Tree DetectionAbstract
Accurate co-registration of terrestrial and aerial point clouds can provide a high-resolution description of tree components across large forest areas. However, a semi-automatic approach for co-registering point clouds is still needed, given the challenges in geospatial data processing, particularly in complex topographical conditions. The main objective of this study is to present the application of a novel procedure for the co-registration of point clouds obtained from terrestrial and UAV surveys in Mediterranean forests. The proposed methodology proves to be promising and will constitute the basis for experimentation on a larger scale.
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