Sustainable forest management requires timely, detailed forest inventory data across large areas, which is difficult to obtain via traditional forest inventory techniques. This study evaluated k-nearest neighbor imputation models incorporating LiDAR data to predict tree-level inventory data (individual tree height, diameter at breast height, and species) across a 12 100 ha study area in northeastern Oregon, USA. The primary objective was to provide spatially explicit data to parameterize the Forest Vegetation Simulator, a tree-level forest growth model. The final imputation model utilized LiDAR-derived height measurements and topographic variables to spatially predict tree-level forest inventory data. When compared with an independent data ...
Three sets of linear models were developed to predict several forest attributes, using stand-level a...
Accurate and spatially explicit measurements of forest attributes are critical for sustainable fores...
A method to forecast forest inventory variables derived from light detection and ranging (LiDAR) wou...
Sustainable forest management requires timely, detailed forest inventory data across large areas, wh...
In order to effectively manage forested ecosystems in a sustainable manner, their condition must be ...
Light Detection and Ranging (LiDAR) has demonstrated potential for forest inventory at the individua...
Remote sensing technologies have been widely adopted in the forest sector for producing forest resou...
Quantifying forest structure is important for sustainable forest management, as it relates to a wide...
The accurate estimation of forest attributes at many different spatial scales is a critical problem....
ABSTRACT: Recent studies have shown the potential of remote sensing data at optical wavelengths to p...
This paper assesses the combined effect of field plot size and LiDAR density on the estimation of fo...
Meaningful relationships between forest structure attributes measured in representative field plots ...
The United States Forest Service Forest Inventory and Analysis (FIA) Program provides a diverse sele...
Sustainable forest management requires forest inventory information at the individual tree level. Li...
The authors developed a series of ecological metrics (EM) based on mechanistic principles for quanti...
Three sets of linear models were developed to predict several forest attributes, using stand-level a...
Accurate and spatially explicit measurements of forest attributes are critical for sustainable fores...
A method to forecast forest inventory variables derived from light detection and ranging (LiDAR) wou...
Sustainable forest management requires timely, detailed forest inventory data across large areas, wh...
In order to effectively manage forested ecosystems in a sustainable manner, their condition must be ...
Light Detection and Ranging (LiDAR) has demonstrated potential for forest inventory at the individua...
Remote sensing technologies have been widely adopted in the forest sector for producing forest resou...
Quantifying forest structure is important for sustainable forest management, as it relates to a wide...
The accurate estimation of forest attributes at many different spatial scales is a critical problem....
ABSTRACT: Recent studies have shown the potential of remote sensing data at optical wavelengths to p...
This paper assesses the combined effect of field plot size and LiDAR density on the estimation of fo...
Meaningful relationships between forest structure attributes measured in representative field plots ...
The United States Forest Service Forest Inventory and Analysis (FIA) Program provides a diverse sele...
Sustainable forest management requires forest inventory information at the individual tree level. Li...
The authors developed a series of ecological metrics (EM) based on mechanistic principles for quanti...
Three sets of linear models were developed to predict several forest attributes, using stand-level a...
Accurate and spatially explicit measurements of forest attributes are critical for sustainable fores...
A method to forecast forest inventory variables derived from light detection and ranging (LiDAR) wou...