Information (Nov 2017)

Land Cover Classification from Multispectral Data Using Computational Intelligence Tools: A Comparative Study

  • André Mora,
  • Tiago M. A. Santos,
  • Szymon Łukasik,
  • João M. N. Silva,
  • António J. Falcão,
  • José M. Fonseca,
  • Rita A. Ribeiro

DOI
https://doi.org/10.3390/info8040147
Journal volume & issue
Vol. 8, no. 4
p. 147

Abstract

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This article discusses how computational intelligence techniques are applied to fuse spectral images into a higher level image of land cover distribution for remote sensing, specifically for satellite image classification. We compare a fuzzy-inference method with two other computational intelligence methods, decision trees and neural networks, using a case study of land cover classification from satellite images. Further, an unsupervised approach based on k-means clustering has been also taken into consideration for comparison. The fuzzy-inference method includes training the classifier with a fuzzy-fusion technique and then performing land cover classification using reinforcement aggregation operators. To assess the robustness of the four methods, a comparative study including three years of land cover maps for the district of Mandimba, Niassa province, Mozambique, was undertaken. Our results show that the fuzzy-fusion method performs similarly to decision trees, achieving reliable classifications; neural networks suffer from overfitting; while k-means clustering constitutes a promising technique to identify land cover types from unknown areas.

Keywords