In this paper, I describe a set of procedures that automate forest disturbance mapping using a pair of Landsat images. The approach is built on the traditional pair-wise change detection method, but is designed to extract training data without user interaction and uses a robust classification algorithm capable of handling incorrectly labeled training data. The steps in this procedure include: i) creating masks for water, non-forested areas, clouds, and cloud shadows; ii) identifying training pixels whose value is above or below a threshold defined by the number of standard deviations from the mean value of the histograms generated from local windows in the short-wave infrared (SWIR) difference image; iii) filtering the original training dat...
Abstract: Spatio-temporal information on process-based forest loss is essential for a wide range of ...
Forest disturbances, such as wildfires, the southern pine beetle, and the hemlock woolly adelgid, af...
ABSTRACT: Large scale forest type mapping using current field methods is time consuming and cost-int...
Disturbance is a critical ecological process in forested systems, and disturbance maps are important...
Forests are the largest aboveground sink for atmospheric carbon (C), and understanding how they chan...
We developed a semi-automatic algorithm named Berkeley Indices Trajectory Extractor (BITE) to detect...
Time series analysis of Landsat data is widely used for assessing forest change at the large-area sc...
In contrast to abrupt changes caused by land cover conversion, subtle changes driven by a shift in t...
Landsat time series (LTS) and associated change detection algorithms are useful for monitoring the e...
Forest ecosystems have recently received worldwide attention due to their biological diversity and t...
Monitoring landcover and landcover change at regional and global scales often requires Landsat data ...
Time series analysis of Landsat data is widely used for assessing forest change at the large-area sc...
Forests contain a majority of the aboveground carbon (C) found in ecosystems, and understanding biom...
Forests contain a majority of the aboveground carbon (C) found in ecosystems, and understanding biom...
Human-induced and natural disturbances are an important feature of forest ecosystems. Disturbances i...
Abstract: Spatio-temporal information on process-based forest loss is essential for a wide range of ...
Forest disturbances, such as wildfires, the southern pine beetle, and the hemlock woolly adelgid, af...
ABSTRACT: Large scale forest type mapping using current field methods is time consuming and cost-int...
Disturbance is a critical ecological process in forested systems, and disturbance maps are important...
Forests are the largest aboveground sink for atmospheric carbon (C), and understanding how they chan...
We developed a semi-automatic algorithm named Berkeley Indices Trajectory Extractor (BITE) to detect...
Time series analysis of Landsat data is widely used for assessing forest change at the large-area sc...
In contrast to abrupt changes caused by land cover conversion, subtle changes driven by a shift in t...
Landsat time series (LTS) and associated change detection algorithms are useful for monitoring the e...
Forest ecosystems have recently received worldwide attention due to their biological diversity and t...
Monitoring landcover and landcover change at regional and global scales often requires Landsat data ...
Time series analysis of Landsat data is widely used for assessing forest change at the large-area sc...
Forests contain a majority of the aboveground carbon (C) found in ecosystems, and understanding biom...
Forests contain a majority of the aboveground carbon (C) found in ecosystems, and understanding biom...
Human-induced and natural disturbances are an important feature of forest ecosystems. Disturbances i...
Abstract: Spatio-temporal information on process-based forest loss is essential for a wide range of ...
Forest disturbances, such as wildfires, the southern pine beetle, and the hemlock woolly adelgid, af...
ABSTRACT: Large scale forest type mapping using current field methods is time consuming and cost-int...