Please use this identifier to cite or link to this item: http://repository.ush.edu.sd:8080/xmlui/handle/123456789/492
Title: An Enhancement of Multi Classifiers Voting Method for Mammogram Image Based on Image Histogram Equalization
Authors: Ashraf, Osman Ibrahim
Ali, Ahmed
Anik, Hanifatul Azizah
Saima, Anwar Lashar
Mohamed Alhaj, Alobeed
Shahreen, Kasim
Mohd, Arfian Ismail
Keywords: Breast
cancer
Breast cancer
classifiers
preprocessing
mammogram
Issue Date: 2018
Publisher: International Journal of Integrated Engineering
Series/Report no.: Vol 6;No 10,2018
Abstract: Breast cancer is one the most curable cancer types if it can be diagnosed early. Research efforts have reported with increasing confirmation that the computation methods have greater accurate diagnosis ability. An enhancement of multi classifiers voting technique based on histogram equalization as a pre-processing stage proposed in this paper. The methodology is based on five phases starting by mammogram images collection, preprocessing (histogram equalization and image cropping based region of interest (ROI)), features extracting, classification and last evaluating the classification results. An experimental conducted on different training-testing partitions of the dataset. The numerical results demonstrate that the proposed scheme achieves an accuracy rate of 81.25% and outperformed the accuracy of voting method without using histogram equalization.
Description: Breast cancer is one the most curable cancer types if it can be diagnosed early. Research efforts have reported with increasing confirmation that the computation methods have greater accurate diagnosis ability. An enhancement of multi classifiers voting technique based on histogram equalization as a preprocessing stage proposed in this paper. The methodology is based on five phases starting by mammogram images collection, preprocessing (histogram equalization and image cropping based region of interest (ROI)), features extracting, classification and last evaluating the classification results. An experimental conducted on different training-testing partitions of the dataset. The numerical results demonstrate that the proposed scheme achieves an accuracy rate of 81.25% and outperformed the accuracy of voting method without using histogram equalization.
URI: http://hdl.handle.net/123456789/492
ISSN: 2229-838X
2600-7916
Appears in Collections:Researches and Scientific Papers البحوث والأوراق العلمية



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