Abstract
Forest inventories are essential for monitoring and managing forest ecosystems, relying on accurate measurements of tree attributes such as tree detection, Diameter at Breast Height (DBH), and Tree Height (TH). Nowadays, advances in LiDAR technology have enabled increasingly effective and reliable solutions for 3D mapping and tree feature extraction. However, the performance of this method is strongly influenced by point cloud density, which can be limited for technological and/or economic reasons. This study therefore aims to investigate and quantify the effect of density on the accuracy of measured parameters. Starting from high-density datasets, these are progressively downsampled, and the extracted features are compared. Results indicate that DBH estimation requires densities of 600-700 points/m(3) for errors below 1 cm (5% RMSE), while accurate tree height estimation (RMSE < 1 m-5% error) can be achieved with densities exceeding 300 points/m(3). These findings provide guidance for balancing measurement accuracy and operational efficiency in automated forest surveys using laser scanner technology.