IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2020)

Discriminating Land Use and Land Cover Classes in Brazil Based on the Annual PROBA-V 100&#x00A0;<roman>m</roman> Time Series

  • Yosio Edemir Shimabukuro,
  • Egidio Arai,
  • Valdete Duarte,
  • Andeise Cerqueira Dutra,
  • Henrique Luis Godinho Cassol,
  • Edson Eyji Sano,
  • Tania Beatriz Hoffmann

DOI
https://doi.org/10.1109/JSTARS.2020.2994893
Journal volume & issue
Vol. 13
pp. 3409 – 3420

Abstract

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Brazil, with more than 8 million km2, presents six different biomes, ranging from natural grasslands (Pampa biome) to tropical rainfall forests (Amazônia biome), with different land-use types (mostly pasturelands and croplands) and pressures (mainly in the Cerrado biome). The objective of this article is to present a new method to discriminate the most representative land use and land cover (LULC) classes of Brazil, based on the PROBA-V images. The images were converted into vegetation, soil, and shade fraction images by applying the linear spectral mixing model. Then, the pixel-based, highest proportion, annual mosaics of the fraction images, and their corresponding standard deviation images were derived and classified using the random forest algorithm. The following LULC classes were considered: forestlands, shrublands, grasslands, croplands, pasturelands, water bodies, and others. An agreement analysis was conducted with two available LULC maps derived from the Landsat satellite, the MapBiomas, and the Finer Resolution Observation and Monitoring-Global Land Cover (FROM-GLC) projects. Forestlands (412 million ha) and pasturelands (242 million ha) were the two most representative LULC classes; and croplands accounted for 30 million ha. The results presented an overall agreement of 69% and 58% with the MapBiomas and FROM-GLC projects, respectively. The proposed method is a good alternative to support operational projects of LULC map production that are important for planning biodiversity conservation or environmentally sustainable land occupation.

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