Use este identificador para citar ou linkar para este item: https://repositorio.inpa.gov.br/handle/1/38213
Título: Multi-sensor, active fire-supervised, one-class burned area mapping in the brazilian savanna
Autor: Pereira, José M.C.
Alvarado, Swanni T.
Sanches, Waislan
Oom, Duarte
Santos, Filippe Lemos Maia
Nogueira, Joana Messias Pereira
Rodrigues, Julia Abrantes
Libonati, Renata
Pereira, Allan Arantes
Palavras-chave: Burned area
Machine learning
Data do documento: 2021
Revista: Remote Sensing
É parte de: Volume 13; Edição 19; Número 4005
Abstract: Increasing efforts are being devoted to understanding fire patterns and changes highlighting the need for a consistent database about the location and extension of burned areas (BA). Satellite-derived BA mapping accuracy in the Brazilian savannas is limited by the underestimation of burn scars from small, fragmented fires and high cloudiness. Moreover, systematic mapping of BA is challenged by the need for human intervention in training sample acquisition, which precludes the development of automatic-generated products over large areas and long periods. Here, we developed a multi-sensor, active fire-supervised, one-class BA mapping algorithm to address several of these limitations. Our main objective is to generate a long-term, detailed BA atlas suitable to improve fire regime characterization and validation of coarse resolution products. We use composite images derived from the Landsat satellite to generate end-of-season maps of fire-affected areas for the entire Cerrado. Validation exercises and intercomparison with BA maps from a semi-automatic algorithm and visual photo interpretation were conducted for the year 2015. Our results improve the BA mapping by reducing omission errors, especially where there is high cloud frequency, few active fires are detected, and burned areas are small and fragmented. Finally, our approach represents at least a 45% increase in BA mapped in the Cerrado, in comparison to the annual extent detected by the current coarse global product from MODIS satellite (MCD64), and thus, it is capable of supporting improved regional emissions estimates. © 2021 by the authors. Licensee MDPI, Basel, Switzerland.
DOI: 10.3390/rs13194005
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