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FussCyier: Mamogram images classification based on similarity measure fuzzy soft set

Lashari, Saima Anwar and Ibrahim, Rosziati and Senan, Norhalina (2017) FussCyier: Mamogram images classification based on similarity measure fuzzy soft set. In: 6th International Conference on Computing & Informatics (ICOCI2017), 25 - 27 April 2017, Kuala Lumpur.

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Abstract

Automatic digital mammograms reading become highly enviable, as the number of mammograms to be examined by physician increases enormously.It is premised that the computer aided diagnosis system is mandatory to assist physicians/radiologists to achieve high efficiency and productivity.To handle uncertainties of medical images, fuzzy soft set theory has been merely scrutinized, even though the choice of convenient parameterization makes fuzzy soft set suitable and feasible for decision making applications. Therefore, this study investigates the practicability of fuzzy soft set for classification of digital mammogram images to increase the classification accuracy while lower the classifier complexity.The proposed method FussCyier involves three phases namely: pre-processing, training and testing.Results of the research indicated that proposed method gives high classification performance with wavelet de-noise filter Sym8 with the accuracy 75.64%, recall 84.67% and CPU time 0.0026 seconds.

Item Type: Conference or Workshop Item (Paper)
Additional Information: EISSN 2289-7402 E-ISBN 978-967-0910-33-8 Organized by: School of Computing, Universiti Utara Malaysia
Uncontrolled Keywords: mammogram images, computer aided diagnosis system, fuzzy soft set
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Divisions: School of Computing
Depositing User: Mrs. Norazmilah Yaakub
Date Deposited: 26 Jul 2017 07:37
Last Modified: 26 Jul 2017 07:37
URI: https://repo.uum.edu.my/id/eprint/22795

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