Forest structure is a key driver of forest functional processes. The characterization of forest structure across spatiotemporal scales is essential for forest monitoring and management. LiDAR data have proven particularly useful for cost-effectively estimating forest structural attributes. This paper evaluates the ability of combined forest inventory data and low-density discrete return airborne LiDAR data to discriminate main forest structural types in the Mediterranean-temperate transition ecotone. Firstly, we used six structural variables from the Spanish National Forest Inventory (SNFI) and an aridity index in a k-medoids algorithm to define the forest structural types. These variables were calculated for 2770 SNFI plots. We identified ...
Abstract: LiDAR measurements of canopy structure can be used to classify forest stands into structur...
Quantifying forest structure is important for sustainable forest management, as it relates to a wide...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIE [Axe_IRSTEA]TETIS-ATTOS [Encadrant_IRSTEA]Durri...
Forest structure is a key driver of forest functional processes. The characterization of forest stru...
This study assesses whether metrics extracted from airborne Li-DAR (Light Detection and Ranging) raw...
This study reports progress in forest inventory methods involving the use of low density airborne Li...
Reliable assessment of forest structural types (FSTs) aids sustainable forest management. We develop...
A methodological approach based on detailed land-use map, high-resolution LiDAR data and field surve...
Several studies have verified the suitability of LiDAR for the estimation of forest metrics over lar...
[EN] Mapping forest structure variables provides important information for the estimation of forest ...
Several studies have verified the suitability of LiDAR for the estimation of forest metrics over lar...
This thesis studies the development of new statistical models for forest structure assessment using ...
Several studies have verified the suitability of LiDAR for the estimation of forest metrics over lar...
Characterizing forest structure is an important part of any comprehensive biodiversity assessment. H...
Forest aboveground biomass is a key variable in remote sensing based forest monitoring. Active senso...
Abstract: LiDAR measurements of canopy structure can be used to classify forest stands into structur...
Quantifying forest structure is important for sustainable forest management, as it relates to a wide...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIE [Axe_IRSTEA]TETIS-ATTOS [Encadrant_IRSTEA]Durri...
Forest structure is a key driver of forest functional processes. The characterization of forest stru...
This study assesses whether metrics extracted from airborne Li-DAR (Light Detection and Ranging) raw...
This study reports progress in forest inventory methods involving the use of low density airborne Li...
Reliable assessment of forest structural types (FSTs) aids sustainable forest management. We develop...
A methodological approach based on detailed land-use map, high-resolution LiDAR data and field surve...
Several studies have verified the suitability of LiDAR for the estimation of forest metrics over lar...
[EN] Mapping forest structure variables provides important information for the estimation of forest ...
Several studies have verified the suitability of LiDAR for the estimation of forest metrics over lar...
This thesis studies the development of new statistical models for forest structure assessment using ...
Several studies have verified the suitability of LiDAR for the estimation of forest metrics over lar...
Characterizing forest structure is an important part of any comprehensive biodiversity assessment. H...
Forest aboveground biomass is a key variable in remote sensing based forest monitoring. Active senso...
Abstract: LiDAR measurements of canopy structure can be used to classify forest stands into structur...
Quantifying forest structure is important for sustainable forest management, as it relates to a wide...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIE [Axe_IRSTEA]TETIS-ATTOS [Encadrant_IRSTEA]Durri...