Ground reference data collection represents an important element in the prediction of stem volume with LiDAR-derived variables, and at present it is the most expensive part of such analyses. In this paper two aspects of ground reference data collection were analyzed: (1) the positioning error of the ground plots; and (2) the optimal number of training plots. A system for the prediction of stem volume at area-based level was adopted. LiDAR data were preprocessed and 13 variables describing both height and coverage were extracted. Models were defined using a stepwise ordinary least square (OLS) regression. Three experiments were conducted: (i) the role of the plots positioning error on prediction accuracy; (ii) the influence of random downsa...
Underestimation of LiDAR heights is widely known but has never been evaluated for several sensors an...
Sensitivity of lidar metrics to scan angle can affect the robustness of area-based approach (ABA) mo...
Reprinted with permission. © 2015 Canadian Science Publishing or its licensors.Tree size distributi...
Ground reference data collection represents an important element in the prediction of stem volume wi...
Light detection and ranging (lidar) is the premier technology for high-resolution elevation measurem...
Maps of standing timber volume provide valuable decision support for forest managers and have theref...
A patchwork of disjunct lidar collections is rapidly developing across the USA, often acquired with ...
In this paper, we present a study on the efficiency of multi-return LIDAR (Light Detection Ranging) ...
Light detection and ranging (lidar) is the premier technology for high-resolution elevation measurem...
© 2011 Dr. Jan RomboutsSite quality information underpins many aspects of radiata pine plantation ma...
We apply a spatially-implicit, allometry-based modelling approach to predict stem diameter distribut...
International audienceAn area-based method is implemented to predict forest stand parameters from ai...
This study investigated the influence of sampling design parameters on biomass prediction accuracy o...
Light Detection and Ranging (LiDAR) is a spatial data capture technology capable of recording millio...
Protection forest management requires reliable data on the structural characteristics of forest stan...
Underestimation of LiDAR heights is widely known but has never been evaluated for several sensors an...
Sensitivity of lidar metrics to scan angle can affect the robustness of area-based approach (ABA) mo...
Reprinted with permission. © 2015 Canadian Science Publishing or its licensors.Tree size distributi...
Ground reference data collection represents an important element in the prediction of stem volume wi...
Light detection and ranging (lidar) is the premier technology for high-resolution elevation measurem...
Maps of standing timber volume provide valuable decision support for forest managers and have theref...
A patchwork of disjunct lidar collections is rapidly developing across the USA, often acquired with ...
In this paper, we present a study on the efficiency of multi-return LIDAR (Light Detection Ranging) ...
Light detection and ranging (lidar) is the premier technology for high-resolution elevation measurem...
© 2011 Dr. Jan RomboutsSite quality information underpins many aspects of radiata pine plantation ma...
We apply a spatially-implicit, allometry-based modelling approach to predict stem diameter distribut...
International audienceAn area-based method is implemented to predict forest stand parameters from ai...
This study investigated the influence of sampling design parameters on biomass prediction accuracy o...
Light Detection and Ranging (LiDAR) is a spatial data capture technology capable of recording millio...
Protection forest management requires reliable data on the structural characteristics of forest stan...
Underestimation of LiDAR heights is widely known but has never been evaluated for several sensors an...
Sensitivity of lidar metrics to scan angle can affect the robustness of area-based approach (ABA) mo...
Reprinted with permission. © 2015 Canadian Science Publishing or its licensors.Tree size distributi...