2022
DOI: 10.3390/rs14184666
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An Automatic Individual Tree 3D Change Detection Method for Allometric Parameters Estimation in Mixed Uneven-Aged Forest Stands from ALS Data

Abstract: Forests play a central role in the management of the Earth’s climate. Airborne laser scanning (ALS) technologies facilitate the monitoring of large and impassable areas and can be used to monitor the 3D structure of forests. While the ALS-based forest measures have been studied in depth, 3D change detection in forests is still a subject of little attention in the literature due to the challenges introduced by comparing point cloud pairs. In this study, we propose an innovative methodology to (i) automatically … Show more

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Cited by 2 publications
(2 citation statements)
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“…ITD was performed with the PyCrown algorithm (Zörner et al, 2018), which was assessed in previous studies (Spadavecchia et al, 2022;Spiekermann et al, 2021). This method is based on the location of local maxima which is labelled as an 'initial region' around which a tree crown can grow; the heights of the four neighboring pixels are extracted from the CHM and these pixels are added to the region if (1) their vertical distance from the local maximum is less than some user-defined percentage of the local maximum height, and (2) less than some user-defined maximum difference (Dalponte and Coomes, 2016).…”
Section: Individual Tree Detectionmentioning
confidence: 99%
See 1 more Smart Citation
“…ITD was performed with the PyCrown algorithm (Zörner et al, 2018), which was assessed in previous studies (Spadavecchia et al, 2022;Spiekermann et al, 2021). This method is based on the location of local maxima which is labelled as an 'initial region' around which a tree crown can grow; the heights of the four neighboring pixels are extracted from the CHM and these pixels are added to the region if (1) their vertical distance from the local maximum is less than some user-defined percentage of the local maximum height, and (2) less than some user-defined maximum difference (Dalponte and Coomes, 2016).…”
Section: Individual Tree Detectionmentioning
confidence: 99%
“…The segmentation procedure was validated using the F1 score parameter, widely considered in this kind of analysis (Belcore et al, 2020;Spadavecchia et al, 2022). This parameter relates the…”
Section: Aboveground Biomass Assessment and Validationmentioning
confidence: 99%