MA University of Hawaii at Manoa 2014Includes bibliographical references (leaves 55–60).The objective of this research is to estimate canopy bulk density (CBD) using discretereturn LiDAR data and hyperspectral imagery. This research will seek to answer the following questions: How accurate is LiDAR data in estimating CBD in comparison to using hyperspectral data? To what extent does the fusion of LiDAR and hyperspectral data improve the accuracy of CBD estimation? Based on previous studies, it is expected that combining these two data types will improve CBD estimation. Exploring these two types of remote sensing data, and using different methodologies is important in finding alternatives in terms of data used to predict CBD that could help ...
To increase understanding of forest carbon cycles and stocks, estimates of total and component (e.g....
Forest-related statistics, including forest biomass, carbon sink, and the prevention of forest fires...
This review addresses the status of hyperspectral data, LiDAR data, and the fusion of these two data...
Canopy bulk density (CBD) is an important crown characteristic needed to predict crown fire spread, ...
Abstract: Canopy bulk density (CBD) is an important crown characteristic needed to predict crown fir...
Accurate, spatially explicit information about forest canopy fuel properties is essential for ecosys...
Accurate, spatially explicit information about forest canopy fuel properties is essential for ecosys...
Our research used light detection and ranging (LiDAR) systems coupled with sequential harvesting of ...
This dissertation explores the efficacy of large-footprint, waveform-digitizing lidar for the invent...
Leaf biomass distribution is a key factor for modeling energy and carbon fluxes in forest canopies a...
It has been suggested that attempts to use remote sensing to map the spatial and structural patterns...
Leaf biomass distribution is a key factor for modeling energy and carbon fluxes in forest canopies a...
Lidar is fast becoming one of the most widely used and accurate remote sensing tools for forest inve...
Canopy cover is an important forest structure parameter for many applications in ecology, hydrology,...
California's fire suppression policy has dramatically changed Sierra Nevada forests over the last ce...
To increase understanding of forest carbon cycles and stocks, estimates of total and component (e.g....
Forest-related statistics, including forest biomass, carbon sink, and the prevention of forest fires...
This review addresses the status of hyperspectral data, LiDAR data, and the fusion of these two data...
Canopy bulk density (CBD) is an important crown characteristic needed to predict crown fire spread, ...
Abstract: Canopy bulk density (CBD) is an important crown characteristic needed to predict crown fir...
Accurate, spatially explicit information about forest canopy fuel properties is essential for ecosys...
Accurate, spatially explicit information about forest canopy fuel properties is essential for ecosys...
Our research used light detection and ranging (LiDAR) systems coupled with sequential harvesting of ...
This dissertation explores the efficacy of large-footprint, waveform-digitizing lidar for the invent...
Leaf biomass distribution is a key factor for modeling energy and carbon fluxes in forest canopies a...
It has been suggested that attempts to use remote sensing to map the spatial and structural patterns...
Leaf biomass distribution is a key factor for modeling energy and carbon fluxes in forest canopies a...
Lidar is fast becoming one of the most widely used and accurate remote sensing tools for forest inve...
Canopy cover is an important forest structure parameter for many applications in ecology, hydrology,...
California's fire suppression policy has dramatically changed Sierra Nevada forests over the last ce...
To increase understanding of forest carbon cycles and stocks, estimates of total and component (e.g....
Forest-related statistics, including forest biomass, carbon sink, and the prevention of forest fires...
This review addresses the status of hyperspectral data, LiDAR data, and the fusion of these two data...