2019
DOI: 10.3390/rs11070808
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Brazilian Mangrove Status: Three Decades of Satellite Data Analysis

Abstract: Since the 1980s, mangrove cover mapping has become a common scientific task. However, the systematic and continuous identification of vegetation cover, whether on a global or regional scale, demands large storage and processing capacities. This manuscript presents a Google Earth Engine (GEE)-managed pipeline to compute the annual status of Brazilian mangroves from 1985 to 2018, along with a new spectral index, the Modular Mangrove Recognition Index (MMRI), which has been specifically designed to better discrim… Show more

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Cited by 138 publications
(91 citation statements)
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References 52 publications
(80 reference statements)
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“…In terms of the methods, prior studies use a range of classification techniques such as the iterative self-organizing data analysis (ISODATA) clustering, maximum likelihood classification (MLC), hybrid, random forest (RF), classification and regression trees (CART), support vector machine (SVM), and object oriented classification among others [16,17,34,[37][38][39][40][41]43,66]. With the advent of cloud computing platforms with free access to petabytes of geospatial data, such as Google Earth Engine (GEE), it has now become increasingly accessible and straight-forward to analyze enormous amounts of satellite imagery covering large regions [37,[67][68][69][70][71][72]. While GEE offers more than 15 classification techniques, most studies rely on machine-learning algorithms [37,[68][69][70][71][72], such as CART and RF, since these have proven to be some of the robust methods for land cover classifications.…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…In terms of the methods, prior studies use a range of classification techniques such as the iterative self-organizing data analysis (ISODATA) clustering, maximum likelihood classification (MLC), hybrid, random forest (RF), classification and regression trees (CART), support vector machine (SVM), and object oriented classification among others [16,17,34,[37][38][39][40][41]43,66]. With the advent of cloud computing platforms with free access to petabytes of geospatial data, such as Google Earth Engine (GEE), it has now become increasingly accessible and straight-forward to analyze enormous amounts of satellite imagery covering large regions [37,[67][68][69][70][71][72]. While GEE offers more than 15 classification techniques, most studies rely on machine-learning algorithms [37,[68][69][70][71][72], such as CART and RF, since these have proven to be some of the robust methods for land cover classifications.…”
Section: Introductionmentioning
confidence: 99%
“…With the advent of cloud computing platforms with free access to petabytes of geospatial data, such as Google Earth Engine (GEE), it has now become increasingly accessible and straight-forward to analyze enormous amounts of satellite imagery covering large regions [37,[67][68][69][70][71][72]. While GEE offers more than 15 classification techniques, most studies rely on machine-learning algorithms [37,[68][69][70][71][72], such as CART and RF, since these have proven to be some of the robust methods for land cover classifications. Such methods based on free data and robust algorithms can be particularly beneficial for regular monitoring, including tracking SDG indicators.…”
Section: Introductionmentioning
confidence: 99%
“…Blue band Band 1 (L5 and L7); Band 2 (L8) Annual, median OP [41] Green band Band 2 (L5 and L7); Band 3 (L8) Annual, median OP [41] Red band Band 3 (L5 and L7); Band 4 (L8) Annual, median OP [41] Near infrared (NIR) band Band 4 (L5 and L7); Band 5 (L8) Annual, median OP [41] Shortwave infrared (SWIR-1) band Band 5 (L5 and L7); Band 6 (L8) Annual, median OP [41] Shortwave infrared (SWIR-2) band Band 7 (L5 and L7); Band 8 (L8) Annual, median OP [41] NPV (non-photosynthetic vegetation fraction)…”
Section: Input Variable Meaning/formula Period Referencementioning
confidence: 99%
“…In order to implement the final MapBiomas land use and land cover maps for the Cerrado biome, the results of the Cerrado NV classification were integrated with other MapBiomas cross-cutting theme maps (e.g., pasture, agriculture, coastal zone, and urban infrastructure classes), which were independently developed [41,45]. This integration is hierarchical and follows prevalence rules to combine the classification results from all themes.…”
Section: Integration With Mapbiomas Cross-cutting Themesmentioning
confidence: 99%
“…Recently, several machine learning algorithms have been designed for mapping and classifying land use land cover (LULC). Ensemble machine learning algorithms such as Random forest (RF) is widely used in LULC classification and mangrove mapping from Landsat images (Erftemeijer and Hamerlynck, 2005;Pal, 2005;Sesnie et al, 2008;Mountrakis et al, 2011), mangrove and sea grass mapping (Heumann, 2011;Hossain et al, 2015;Buitre et al, 2019;Diniz et al, 2019;Small and Sousa, 2019;Toosi et al, 2019), prediction in water resources (Zhao et al, 2012;McGinnis and Kerans, 2013;Naghibi et al, 2016;Naghibi and Dashtpagerdi, 2017), and prediction of land subsidence (Elmahdy et al, 2020a). Further studies combined image transformation and supervised classification to map and classify mangrove forests (Yokoya and Iwasaki, 2010;Ouerghemmi et al, 2018).…”
Section: Introductionmentioning
confidence: 99%