Burned Area (BA) is deemed as a primary variable to understand the Earth’s climate system. Satellite remote sensing data have allowed for the development of various burned area detection algorithms that have been globally applied to and assessed in diverse ecosystems, ranging from tropical to boreal. In this paper, we present a Bayesian algorithm (BY-MODIS) that detects burned areas in a time series of Moderate Resolution Imaging Spectroradiometer (MODIS) images from 2002 to 2012 of the Canary Islands’ dry woodlands and forests ecoregion (Spain). Based on daily image products MODIS, MOD09GQ (250 m), and MOD11A1 (1 km), the surface spectral reflectance and the land surface temperature, respectively, 10 day composites were built using the max...
This paper presents an application of a novel machine-learning framework on MODIS (moderate-resoluti...
A Bayesian classifier mapped the Burned Area (BA) in the Northeastern Siberian boreal forest (70°N 1...
Understanding spatial and temporal patterns of burned areas at regional scales, provides a long-term...
Burned Area (BA) is deemed as a primary variable to understand the Earth’s climate system. Satellite...
An algorithm based on a Bayesian network classifier was adapted to produce 10-day burned area (BA) m...
The extent, frequency and intensity of forest fires in Mediterranean regions have become an importan...
Abstract—A novel automatic burned area mapping algorithm for Mediterranean ecosystems based on Moder...
<p><em>Aim of study:</em> The following paper presents an inter-comparison of three global products:...
This paper aims to develop a global burned area (BA) algorithm for MODIS BRDF-corrected images based...
Moderate resolution remote sensing data, as provided by MODIS, can be used to detect and map active ...
Portugal has experienced severe forest fires in the recent years. European Commission (EC) requires ...
Portugal has experienced severe forest fires in the recent years. European Commission (EC) requires ...
The Brazilian Cerrado is significantly affected by anthropic fires every year, which makes the regio...
This paper presents an analysis on the forest fires occurred in Galicia (northwest Spain) in August ...
This paper presents a new algorithm that synergistically combines data from three different parts of...
This paper presents an application of a novel machine-learning framework on MODIS (moderate-resoluti...
A Bayesian classifier mapped the Burned Area (BA) in the Northeastern Siberian boreal forest (70°N 1...
Understanding spatial and temporal patterns of burned areas at regional scales, provides a long-term...
Burned Area (BA) is deemed as a primary variable to understand the Earth’s climate system. Satellite...
An algorithm based on a Bayesian network classifier was adapted to produce 10-day burned area (BA) m...
The extent, frequency and intensity of forest fires in Mediterranean regions have become an importan...
Abstract—A novel automatic burned area mapping algorithm for Mediterranean ecosystems based on Moder...
<p><em>Aim of study:</em> The following paper presents an inter-comparison of three global products:...
This paper aims to develop a global burned area (BA) algorithm for MODIS BRDF-corrected images based...
Moderate resolution remote sensing data, as provided by MODIS, can be used to detect and map active ...
Portugal has experienced severe forest fires in the recent years. European Commission (EC) requires ...
Portugal has experienced severe forest fires in the recent years. European Commission (EC) requires ...
The Brazilian Cerrado is significantly affected by anthropic fires every year, which makes the regio...
This paper presents an analysis on the forest fires occurred in Galicia (northwest Spain) in August ...
This paper presents a new algorithm that synergistically combines data from three different parts of...
This paper presents an application of a novel machine-learning framework on MODIS (moderate-resoluti...
A Bayesian classifier mapped the Burned Area (BA) in the Northeastern Siberian boreal forest (70°N 1...
Understanding spatial and temporal patterns of burned areas at regional scales, provides a long-term...