02927naa a2200301 a 450000100080000000500110000800800410001902400380006010000230009824501050012126000090022652020210023565000160225665000190227265000130229165000250230465000210232965000120235065000250236265000090238765300300239665300310242665300220245770000200247970000200249970000260251977300800254521170652019-12-17 2019 bl uuuu u00u1 u #d7 a10.21475/ajcs.19.13.09.p15412DOI1 aOLIVEIRA, B. S. de aPhenological-metric algorithm for mapping soybean in savanna biome in Brazil.h[electronic resource] c2019 aAbstract. Agricultural expansion in Brazil is still intense for commodities (such soybeans and corn), mostly cultivated over large portions of the Cerrado biome. Therefore, the development and application of techniques based on remote sensing to map crop areas at a regional level, in a dynamic and more precise way is urgently necessary. In this context, the objective of this study is the improvement of techniques for mapping soybean crops in Brazil, through an analysis of the Centro Goiano mesoregion of Goiás state (a core area of Cerrado), using a time series of Enhanced Vegetation Index (EVI) images provided by TERRA/MODIS orbital sensor, in a test period between 2002 and 2010. Despite their proven quality, MODIS EVI images already contain atmospheric interferences inherent to the acquisition process, such as the presence of clouds. Thus, a set of methods to minimize such artifacts was applied to the data of this study. In general, the methodological procedures comprise of (1) the application of the pixel reliability band aiming to remove pixels contaminated by clouds; (2) the use of contaminated pixel estimates (excluded from the time series); (3) application of an interpolation filter to fill the void pixels in each scene, obtaining continuous and smoothed spectral-temporal profiles for each land use classes; and (4) the classification of agricultural areas using a specific algorithm for crops in the Cerrado region of Goiás. The areas reconstituted in the images matched neighboring pixels, maintaining good coherence with the original data. Likewise, areas mapped with soybeans had a high correlation with official IBGE census data, with a global accuracy value of 78%, and Pearson Correlation coefficient of 0.64. The application of this technique to other imagery sensors (such as RapidEye, Landsat 8 and Sentinel 2) is highly encouraged due a better spatial and temporal resolution (when applied together in a temporal image cube), ensuring more efficient crop monitoring in Brazil. aAgriculture aRemote sensing aSoybeans aTime series analysis aVegetation index aCerrado aSensoriamento Remoto aSoja aEnhanced Vegetation Index aÍndice de vegetação EVI aSéries temporais1 aFERREIRA, M. E.1 aCOUTINHO, A. C.1 aESQUERDO, J. C. D. M. tAustralian Journal of Crop Sciencegv. 13, n. 09, p. 1456-1466, Sept. 2019.