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Please use this identifier to cite or link to this item: http://hdl.handle.net/123456789/3139
Title: Breast Cancer Classification Using Image Processing Technique and Support Vector Machine
Authors: Worku, Biruk
Keywords: Breast Cancer
Mammography
Level Set Method
SVM
Issue Date: Jul-2017
Publisher: St.Mary's University
Abstract: In women world, according to Cancer Prevention and Control (CPC) breast cancer is the second largest cause of death next of lung cancer but if it is diagnosed early it is also one of the curable cancer. Radiologist reads mammography image manually which is a tedious and confusing task making them over sight errors to fail to detect the cancer. This research aims to investigate the possibility of detecting and classifying breast cancer using image processing technique. For better image detection, first the quality of the input mammography image improved at the preprocessing stage by removing noises and enhancing the contrast of the image. Next, thresholding, which is one of the level set methods, is used to obtain the region of interests (ROIs) for each mammogram. Refining the segmentation process is achieved using image masking and image filtering technique. Then, geometrical features are extracted from the ROIs. Finally, Support Vector Machine (SVM) is used as a classifier to distinguish mammograms as normal and abnormal. MATLAB environment is used to train and test the proposed approach using percentage -split (70% for training and 30% for testing) evaluation method. In this study, the experimental result shows that 82.14% and 78.95% overall accuracy achieved using level set method with linear SVM classifier which are applied on 98 (lcc and lmlo) images and also on 193 (all images) local dataset mammography images respectively.
URI: http://hdl.handle.net/123456789/3139
Appears in Collections:Master of computer science

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