An Algorithm for Burned Area Detection in the Brazilian Cerrado Using 4 µm MODIS Imagery

The Brazilian Cerrado is significantly affected by anthropic fires every year, which makes the region an important source of pyrogenic emissions. This study aims at generating improved 1 km monthly burned area maps for Cerrado based on remote-sensed information. The algorithm relies on a burn-sensit...

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Bibliographic Details
Published in:Remote sensing (Basel, Switzerland) Vol. 7; no. 11; pp. 15782 - 15803
Main Authors: Libonati, Renata, DaCamara, Carlos, Setzer, Alberto, Morelli, Fabiano, Melchiori, Arturo
Format: Journal Article
Language:English
Published: MDPI AG 24.11.2015
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ISSN:2072-4292, 2072-4292
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Summary:The Brazilian Cerrado is significantly affected by anthropic fires every year, which makes the region an important source of pyrogenic emissions. This study aims at generating improved 1 km monthly burned area maps for Cerrado based on remote-sensed information. The algorithm relies on a burn-sensitive vegetation index based on MODIS daily values of near and middle infrared reflectance and makes use of active fire detection from multiple sensors. Validation is performed using reference burned area (BA) maps derived from Landsat imagery. Results are also compared with MODIS standard BA products. A monthly BA database for the Brazilian Cerrado is generated covering the period 2005–2014. Estimated value of BA is 1.3 times larger than the value derived from reference data, making the product suitable for applications in fire emission studies and ecosystem management. As expected the intra and inter-annual variability of estimated BA over the Brazilian Cerrado is in agreement with the regime of precipitation. This work represents the first step towards setting up a regional database of BA for Brazil to be developed in the framework of BrFLAS, an R and D project in the areas of fire emissions and ecosystem management planning.
ISSN:2072-4292
2072-4292
DOI:10.3390/rs71115782