Mapping Land Use and Land Cover Classes in São Paulo State, Southeast of Brazil, Using Landsat-8 OLI Multispectral Data and the Derived Spectral Indices and Fraction Images

Author:

Shimabukuro Yosio E.1ORCID,Arai Egidio1,da Silva Gabriel M.1ORCID,Hoffmann Tânia B.1ORCID,Duarte Valdete1,Martini Paulo R.1,Dutra Andeise Cerqueira1ORCID,Mataveli Guilherme1ORCID,Cassol Henrique L. G.1ORCID,Adami Marcos1ORCID

Affiliation:

1. Instituto Nacional de Pesquisas Espaciais, Av. dos Astronautas, 1758, São José dos Campos 12227-010, Brazil

Abstract

This work aims to develop a new method to map Land Use and Land Cover (LULC) classes in the São Paulo State, Brazil, using Landsat-8 Operational Land Imager (OLI) data. The novelty of the proposed method consists of selecting the images based on the spectral and temporal characteristics of the LULC classes. First, we defined the six classes to be mapped in the year 2020 as forest, forest plantation, water bodies, urban areas, agriculture, and pasture. Second, we visually analyzed their variability spectral characteristics over the year. Then, we pre-processed these images to highlight each LULC class. For the classification, the Random Forest algorithm available on the Google Earth Engine (GEE) platform was utilized individually for each LULC class. Afterward, we integrated the classified maps to create the final LULC map. The results revealed that forest areas are primarily concentrated in the eastern region of São Paulo, predominantly on steeper slopes, accounting for 19% of the study area. On the other hand, pasture and agriculture dominated 73% of all São Paulo’s landscape, reaching 39% and 34%, respectively. The overall accuracy of the classification achieved 89.10%, while producer and user accuracies were greater than 84.20% and 76.62%, respectively. To validate the results, we compared our findings with the MapBiomas Project classification, obtaining an overall accuracy of 85.47%. Therefore, our method demonstrates its potential to minimize classification errors and offers the advantage of facilitating post-classification editing for individual mapped classes.

Funder

São Paulo Research Foundation

Brazilian National Council for Scientific and Technological Development

Improvement of Higher Education Personnel

FAPESP

CNPq

Publisher

MDPI AG

Subject

Forestry

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