MAMMOGRAPHIC MASS CLASSIFICATION USING WAVELET BASED SUPPORT VECTOR MACHINE
Abstract
Keywords
References
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Details
Primary Language
English
Subjects
-
Journal Section
-
Authors
Pelin Gorgel
This is me
Ahmet Sertbaş
This is me
Niyazi Kılıc
This is me
Osman N. Ucan
This is me
Onur Osman
This is me
Publication Date
February 14, 2012
Submission Date
February 14, 2012
Acceptance Date
-
Published in Issue
Year 2009 Volume: 9 Number: 1