Engenharia Agrícola (Jun 2013)

Data mining techniques for identification of spectrally homogeneous areas using NDVI temporal profiles of soybean crop

  • Jerry A. Johann,
  • Jansle V. Rocha,
  • Stanley R. de M. Oliveira,
  • Luiz H. A. Rodrigues,
  • Rubens A. C. Lamparelli

DOI
https://doi.org/10.1590/S0100-69162013000300008
Journal volume & issue
Vol. 33, no. 3
pp. 511 – 524

Abstract

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The aim of this study was to group temporal profiles of 10-day composites NDVI product by similarity, which was obtained by the SPOT Vegetation sensor, for municipalities with high soybean production in the state of Paraná, Brazil, in the 2005/2006 cropping season. Data mining is a valuable tool that allows extracting knowledge from a database, identifying valid, new, potentially useful and understandable patterns. Therefore, it was used the methods for clusters generation by means of the algorithms K-Means, MAXVER and DBSCAN, implemented in the WEKA software package. Clusters were created based on the average temporal profiles of NDVI of the 277 municipalities with high soybean production in the state and the best results were found with the K-Means algorithm, grouping the municipalities into six clusters, considering the period from the beginning of October until the end of March, which is equivalent to the crop vegetative cycle. Half of the generated clusters presented spectro-temporal pattern, a characteristic of soybeans and were mostly under the soybean belt in the state of Paraná, which shows good results that were obtained with the proposed methodology as for identification of homogeneous areas. These results will be useful for the creation of regional soybean "masks" to estimate the planted area for this crop.

Keywords