The use of satellite-derived classification maps to improve post-stratified forest parameter estimates is well established.When reducing the variance of post-stratification estimates for forest change parameters such as forest growth, it is logical to use a change-related strata map. At the stand level, a time series of Landsat images is ideally suited for producing such a map. In this study, we generate strata maps based on trajectories of Landsat Thematic Mapper-based normalized difference vegetation index values, with a focus on post-disturbance recovery and recent measurements. These trajectories, from1985 to 2010, are converted to harmonic regression coefficient estimates and classified according to a hierarchical clustering algorithm ...
Disturbance is a critical ecological process in forested systems, and disturbance maps are important...
Operational large-scale inventories, such as the State of Mississippi’s inventory system, must have ...
Landsat time series (LTS) and associated change detection algorithms are useful for monitoring the e...
The use of satellite-derived classification maps to improve post-stratified forest parameter estimat...
To the best of our knowledge, one or more authors of this paper were federal employees when contribu...
In the species-rich and structurally complex forests of the Eastern United States, disturbance event...
Characterizing forest responses to disturbance over large geographic areas represents one of the mos...
Several forest change detection algorithms are available for tracking and quantifying deforestation ...
To the best of our knowledge, one or more authors of this paper were federal employees when contribu...
Forecasting rates of forest succession at landscape scales will aid global efforts to restore tree c...
The Landsat multispectral time series is a valuable source of moderate spatial resolution data to su...
Forestmanagement treatments often translate into changes in forest structure. Understanding and asse...
This research investigated three machine learning approaches - decision trees, random forest, and su...
Forests are the largest aboveground sink for atmospheric carbon (C), and understanding how they chan...
Graduation date: 2012Access restricted to the OSU Community at author's request from Nov. 29, 2011 -...
Disturbance is a critical ecological process in forested systems, and disturbance maps are important...
Operational large-scale inventories, such as the State of Mississippi’s inventory system, must have ...
Landsat time series (LTS) and associated change detection algorithms are useful for monitoring the e...
The use of satellite-derived classification maps to improve post-stratified forest parameter estimat...
To the best of our knowledge, one or more authors of this paper were federal employees when contribu...
In the species-rich and structurally complex forests of the Eastern United States, disturbance event...
Characterizing forest responses to disturbance over large geographic areas represents one of the mos...
Several forest change detection algorithms are available for tracking and quantifying deforestation ...
To the best of our knowledge, one or more authors of this paper were federal employees when contribu...
Forecasting rates of forest succession at landscape scales will aid global efforts to restore tree c...
The Landsat multispectral time series is a valuable source of moderate spatial resolution data to su...
Forestmanagement treatments often translate into changes in forest structure. Understanding and asse...
This research investigated three machine learning approaches - decision trees, random forest, and su...
Forests are the largest aboveground sink for atmospheric carbon (C), and understanding how they chan...
Graduation date: 2012Access restricted to the OSU Community at author's request from Nov. 29, 2011 -...
Disturbance is a critical ecological process in forested systems, and disturbance maps are important...
Operational large-scale inventories, such as the State of Mississippi’s inventory system, must have ...
Landsat time series (LTS) and associated change detection algorithms are useful for monitoring the e...