# Inlämning av Examensarbete / Submission of Thesis

Ehsanul Karim; Sri Phani Venkata Siva Krishna Madani; Feng Yun 2010:03, pp. 63. ING/School of Engineering, 2010.

## The work

Url (don't fill in this field it is used to fool spam robots): Ehsanul Karim, Sri Phani Venkata Siva Krishna Madani, Feng Yun lizon_bd@hotmail.com, phanikrishna034@yahoo.co.in, feng466198643@hotmail.com Fuzzy Clustering Analysis The Objective of this thesis is to talk about the usage of Fuzzy Logic in pattern recognition. There are different fuzzy approaches to recognize the pattern and the structure in data. The fuzzy approach that we choose to process the data is completely depends on the type of data. Pattern reorganization as we know involves various mathematical transforms so as to render the pattern or structure with the desired properties such as the identification of a probabilistic model which provides the explaination of the process generating the data clarity seen and so on and so forth. With this basic school of thought we plunge into the world of Fuzzy Logic for the process of pattern recognition. Fuzzy Logic like any other mathematical field has its own set of principles, types, representations, usage so on and so forth. Hence our job primarily would focus to venture the ways in which Fuzzy Logic is applied to pattern recognition and knowledge of the results. That is what will be said in topics to follow. Pattern recognition is the collection of all approaches that understand, represent and process the data as segments and features by using fuzzy sets. The representation and processing depend on the selected fuzzy technique and on the problem to be solved. In the broadest sense, pattern recognition is any form of information processing for which both the input and output are different kind of data, medical records, aerial photos, market trends, library catalogs, galactic positions, fingerprints, psychological profiles, cash flows, chemical constituents, demographic features, stock options, military decisions.. Most pattern recognition techniques involve treating the data as a variable and applying standard processing techniques to it. Mathematics\Probability and Statistics Mathematics\General Mathematics\Analysis Fuzzy Clustering, Pattern Recognition

## Publication info

Dokument id / Document id: Mathematical Modelling and Simulation 05/05/2010 Masterarbete/Master's Thesis (120 credits)

## Context

 Handledare / Supervisor: Elisabeth Rakus Andersson elisabeth.andersson@bth.se Blekinge Institute of Technology ING/School of Engineering +46 455 38 50 00

## Files & Access

Bifogad uppsats fil(er) / Files attached: ms_thesis_fuzzy clustering final.pdf (1334 kB, öppnas i nytt fönster)