Soybean crop area estimation through image classification normalized by the error matrix
DOI:
https://doi.org/10.1590/S1678-3921.pab2012.v47.11148Keywords:
Glycine max, soybean crop, geotechnology, Kappa index, crop forecasting, TM/Landsat‑5.Abstract
The objective of this work was to estimate soybean crop area by the normalization of the error matrix generated from the supervised classification of TM/Landsat‑5 images. Eight municipalities of the state of Paraná, Brazil, were evaluated using data from the 2003/2004 crop season. Classifications were carried out using the parallelepiped and maximum likelihood methods, resulting in a “soybean mask”. Kappa index values for the eight municipalities were above 0.6. Estimated soybean areas, corrected by the error matrix, were highly correlated with official estimates of the state and with estimates generated from an alternative method called “direct expansion”. Soybean crop area estimation by the normalization of the error matrix is less costly and can aid conventional methods in estimating harvests in a less subjective manner.Downloads
Published
2012-11-09
How to Cite
Antunes, J. F. G., Mercante, E., Esquerdo, J. C. D. M., Lamparelli, R. A. de C., & Rocha, J. V. (2012). Soybean crop area estimation through image classification normalized by the error matrix. Pesquisa Agropecuaria Brasileira, 47(9), 1288–1294. https://doi.org/10.1590/S1678-3921.pab2012.v47.11148
Issue
Section
REMOTE SENSING