Amo, Ana del and Montero, Javier and Gómez, D.
(2006)
*Fuzzy logic applications to Fire Control systems.*
In
2006 Ieee international conference on fuxxy systems.
IEE monograph series , 1-5
.
Ieee, Vancouver, Canada, pp. 1298-1304.
ISBN 978-0-7803-9488-9

PDF
Restringido a Repository staff only hasta 2020. 720kB |

Official URL: http://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=1681877

## Abstract

The paper objective is to study and solve one of the problems encountered in the development of a Fire Control system. Fire Control encompasses all operations required to apply fire on a target. We can not cover in this paper the whole set of mathematical problems in which Fire Control applications can be divided. Therefore, we will focus in one of the initial phases, the Target Detection problem. In general, the application of a segmentation algorithm to a data set as a preprocessing of the data previous to an unsupervised classification algorithm improves the probability of detection. The paper presents such a combination. Expert information about the encounter classes will be used for a supervised classification of the example picture. In the first place, we will use a segmentation algorithm to found the natural homogeneous classes in the data. These classes will be explored by an unsupervised clustering algorithm. The unsupervised classification will be performed on the segmented. image. Once the classes have been determined that way the classification will be done over the original image.

Item Type: | Book Section |
---|---|

Additional Information: | IEEE International Conference on Fuzzy Systems |

Uncontrolled Keywords: | Computer Science; Artificial Intelligence; Engineering; Electrical & Electronic |

Subjects: | Sciences > Computer science > Artificial intelligence |

ID Code: | 16937 |

References: | R. G. Cogalton and K. Green, “Assessing the accuracy of remote sensed data: Principles and Practices,” Lewis publishers, London, New York and Washington D.C, 1999. T. Calvo, G. Mayor and R. Mesiar, ”Aggregation Operators. Physica-Verlag,” Heidelberg 2002. B.B. Chaudhuri and A. Bhattacharya, ”On correlation between two fuzzy sets” Fuzzy Sets and Systems 118, 447-456, 2001. A. Del Amo, J. Montero and G. Biging, ”Classifying pixels by means of fuzzy relations,” International Journal of General Systems 29:605–621,1999. A. Del Amo, J. Montero, G. Biging and V.Cutello, ”Fuzzy classification systems,” European Journal of Operational Research 156, 459-507,2004. A. Del Amo, J. Montero, A. Fernandez, M. Lopez, J. Tordesillas and G. Biging, ”Spectral fuzzy classification: an application”. IEEE Trans on Systems, Man and Cybernetics, Part C 32:42–48, 2002. A. Del Amo, D. Gomez and J. Montero, ”Spectral Fuzzy Classification:A Supervised Approach” Mathware and Soft Computing, Vol X n 2-3 pp. 141–154, 2003. D. Gomez, J. Montero, J. Yanez and C. Poidomani, ”A graph coloring algorithm approach for image segmentation,” Omega (to appear). D. Gomez, J. Montero and J. Yanez, ”A coloring fuzzy graph approach for image classification,” Information Sciences (to appear). R. C. Gonzalez and R. E. Woods, ”Digital Image Processing” Prentice Hall, 2002. J. R. Jensen, ”Introductory Digital Image Processing. A Remote Sensing Perspective”. Prentice Hall, 1986. A.D. Pearman, J. Montero and J. Tejada: ”Fuzzy multicriteria decision support for budget allocation in the transport sector”. TOP 3:47–68,1995. P.M. Pardalos, T. Mavridou and J. Xue, “The Graph Coloring Problem:A Bibliographic Survey.” in Handbook of Intelligent Control: Neural,Fuzzy, and Adaptive Approaches D.Z. Du and P.M. Pardalos (Eds.):Handbook of Combinatorial Optimization, vol. 2. Kluwer Academic Publishers, Boston; pp. 331-395 1998. L. A. Zadeh, ”Fuzzy Sets” Information and Control 8:338–353, 1965. |

Deposited On: | 30 Oct 2012 09:06 |

Last Modified: | 19 Apr 2016 16:43 |

Repository Staff Only: item control page