Impact of the Acquisition Geometry of Very High-Resolution Pléiades Imagery on the Accuracy of Canopy Height Models over Forested Alpine Regions
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Norbert Pfeifer | Camillo Ressl | Markus Hollaus | Christian Ginzler | Wilfried Karel | Mauro Marty | Livia Piermattei | C. Ginzler | N. Pfeifer | M. Hollaus | C. Ressl | W. Karel | L. Piermattei | M. Marty
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