4.7 Article

Active Fire Mapping on Brazilian Pantanal Based on Deep Learning and CBERS 04A Imagery

期刊

REMOTE SENSING
卷 14, 期 3, 页码 -

出版社

MDPI
DOI: 10.3390/rs14030688

关键词

remote sensing; wildfire; object detection; convolutional neural network

资金

  1. CNPq [313887/2018-7, 433783/2018-4, 304052/2019-1, 303559/2019-5]
  2. FUNDECT [59/300.066/2015]
  3. CAPES PrInt [88881.311850/2018-01]
  4. Project Rede Pantanal from the Ministry of Science, Technology, and Innovations of Brazil [01.20.0201.00]
  5. UFMS (Federal University of Mato Grosso do Sul) and CAPES [001]
  6. FAPESC [2017TR1762]

向作者/读者索取更多资源

Fire in the Brazilian Pantanal poses a serious threat to biodiversity. Remote sensing research and the use of convolutional neural networks (CNN) can help detect active fires with higher precision. A proposed object detection method based on post-processing strategies shows promising results in accurately mapping active fire in the Pantanal.
Fire in Brazilian Pantanal represents a serious threat to biodiversity. The Brazilian National Institute of Spatial Research (INPE) has a program named Queimadas, which estimated from January 2020 to October 2020, a burned area in Pantanal of approximately 40,606 km2. This program also provides daily data of active fire (fires spots) from a methodology that uses MODIS (Aqua and Terra) sensor data as reference satellites, which presents limitations mainly when dealing with small active fires. Remote sensing researches on active fire dynamics have contributed to wildfire comprehension, despite generally applying low spatial resolution data. Convolutional Neural Networks (CNN) associated with high- and medium-resolution remote sensing data may provide a complementary strategy to small active fire detection. We propose an approach based on object detection methods to map active fire in the Pantanal. In this approach, a post-processing strategy is adopted based on Non-Max Suppression (NMS) to reduce the number of highly overlapped detections. Extensive experiments were conducted, generating 150 models, as five-folds were considered. We generate a public dataset with 775-RGB image patches from the Wide Field Imager (WFI) sensor onboard the China Brazil Earth Resources Satellite (CBERS) 4A. The patches resulted from 49 images acquired from May to August 2020 and present a spatial and temporal resolutions of 55 m and five days, respectively. The proposed approach uses a point (active fire) to generate squared bounding boxes. Our findings indicate that accurate results were achieved, even considering recent images from 2021, showing the generalization capability of our models to complement other researches and wildfire databases such as the current program Queimadas in detecting active fire in this complex environment. The approach may be extended and evaluated in other environmental conditions worldwide where active fire detection is still a required information in fire fighting and rescue initiatives.

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