Cellular automata applied in remote sensing to implement contextual Pseudo-fuzzy classification

  • Authors:
  • Moisés Espínola;Rosa Ayala;Saturnino Leguizamón;Luis Iribarne;Massimo Menenti

  • Affiliations:
  • University of Almería, Spain;University of Almería, Spain;Regional Faculty, National Technnological University, Mendoza, Argentina;University of Almería, Spain;Aerospace Engineering Optical and Laser Remote Sensing, TU Delft, Netherlands

  • Venue:
  • ACRI'10 Proceedings of the 9th international conference on Cellular automata for research and industry
  • Year:
  • 2010

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Abstract

Nowadays, remote sensing is used in many environmental applications, helping to solve and improve the social problems derived from them. Examples of remotely sensed applications include soil quality studies, water resources searching, environmental protection or meteorology simulations. The classification algorithms are one of the most important techniques used in remote sensing that help developers to interpret the information contained in the satellite images. At present, there are several classification processes, i.e., maximum likelihood, paralelepiped or minimum distance classifier. In this paper we investigate a new satellite image classification Algorithm based on Cellular Automata (ACA), a technique usually used by researchers on complex systems. There are not previous works related to satellite image classification with cellular automata. This new kind of satellite image classifier, that improves the results obtained by classical algorithms in several aspects, has been validated and experimented in the SOLERES framework.