Regional-Scale Assessment of Burn Scar Mapping in Southwestern Amazonia Using Burned Area Products and CBERS/WFI Data Cubes

Author:

Ferro Poliana Domingos12,Mataveli Guilherme13ORCID,Arcanjo Jeferson de Souza1,Dutra Débora Joana4ORCID,Medeiros Thaís Pereira de1ORCID,Shimabukuro Yosio Edemir1ORCID,Pessôa Ana Carolina Moreira5,de Oliveira Gabriel67ORCID,Anderson Liana Oighenstein4ORCID

Affiliation:

1. Earth Observation and Geoinformatics Division, National Institute for Space Research (INPE), São José dos Campos 12227-010, SP, Brazil

2. Federal Institute of Education, Science and Technology of Acre (IFAC), Xapuri 69930-000, AC, Brazil

3. School of Environmental Sciences, Tyndall Centre for Climate Change Research, University of East Anglia, Norwich NR4 7TJ, UK

4. National Center for Monitoring and Early Warning of Natural Disasters (CEMADEN), São José dos Campos 12247-016, SP, Brazil

5. Instituto de Pesquisa Ambiental da Amazônia (IPAM), Brasília 70836-520, DF, Brazil

6. Department of Earth Sciences, University of South Alabama, Mobile, AL 36688, USA

7. Stokes School of Marine and Environmental Sciences, University of South Alabama, Mobile, AL 36688, USA

Abstract

Fires are one of the main sources of disturbance in fire-sensitive ecosystems such as the Amazon. Any attempt to characterize their impacts and establish actions aimed at combating these events presupposes the correct identification of the affected areas. However, accurate mapping of burned areas in humid tropical forest regions remains a challenging task. In this paper, we evaluate the performance of four operational BA products (MCD64A1, Fire_cci, GABAM and MapBiomas Fogo) on a regional scale in the southwestern Amazon and propose a new approach to BA mapping using fraction images extracted from data cubes of the Brazilian orbital sensors CBERS-4/WFI and CBERS-4A/WFI. The methodology for detecting burned areas consisted of applying the Linear Spectral Mixture Model to the images from the CBERS-4/WFI and CBERS-4A/WFI data cubes to generate shadow fraction images, which were then segmented and classified using the ISOSEG non-supervised algorithm. Regression and similarity analyses based on regular grid cells were carried out to compare the BA mappings. The results showed large discrepancies between the mappings in terms of total area burned, land use and land cover affected (forest and non-forest) and spatial location of the burned area. The global products MCD64A1, GABAM and Fire_cci tended to underestimate the area burned in the region, with Fire_cci underestimating BA by 88%, while the regional product MapBiomas Fogo was the closest to the reference, underestimating by only 7%. The burned area estimated by the method proposed in this work (337.5 km2) was 12% higher than the reference and showed a small difference in relation to the MapBiomas Fogo product (18% more BA). These differences can be explained by the different datasets and methods used to detect burned areas. The adoption of global products in regional studies can be critical in underestimating the total area burned in sensitive regions. Our study highlights the need to develop approaches aimed at improving the accuracy of current global products, and the development of regional burned area products may be more suitable for this purpose. Our proposed approach based on WFI data cubes has shown high potential for generating more accurate regional burned area maps, which can refine BA estimates in the Amazon.

Funder

São Paulo Research Foundation—FAPESP

National Council for Scientific and Technological Development—CNPq

Amazonas State Research Support Foundation—FAPEAM

Dimension Sciences—Amazon Task Force 2023

Brazilian Federal Agency for Support and Evaluation of Graduate Education—CAPES

Publisher

MDPI AG

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