Breast cancer is reported as the second most deadly cancer in the world and the main of mortality among the women, on which public awareness has been increasing during the last few decades. This is why several works are made to develop help tools for disease diagnosis. Computer-Assisted Diagnosis (CAD) is based on 3 main steps: segmentation, feature extraction and classification in order to generate a final decision. Classification phase is the key step in this process; for that, many research have been accentuated in this domain and many techniques were be proposed. Kernel combination is a current active topic in the field of machine learning. It takes benefit of classifier algorithms. it allows to choose the kernel functions according to the features vectors. The combination of Kernel-based classifiers was proposed as a research way allowing reliability recognition by using the complementarily which can exist between classifiers. This study investigated a computer-aided diagnosis system for breast cancer by developing a novel classifier fusion scheme based on fusion of three support vector machine classifier. Each one is associated with an homogenous family of features (Hu moments; central moments, Haralick moment) as efficient learning algorithm and diversity between features family as fusion criteria to ensure best performance. Our experiments demonstrated that developed system using Database for Screening Mammography (DDSM) database achieve very encouraging results when compared with past works using the same information.
목차
Abstract 1. Introduction 2. Features Extraction, Selection and complementarity in Classifier combination paradigm 3. New Scheme of SVM Classifier Fusion based on Kernel Function Adaptation and Features Diversity 3.1. The Learning Base 3.2. Features Extraction 3.3. Classification 3.4. SVM (Support Vector Machine) Classifier 3.5. Combination by Majority Vote 4. Experimental Results and Discussion 4.1. Used Database 4.2. Features Extraction 4.3. Classification 5. Conclusion References
키워드
Support Vector Machine classifierComputer-aided diagnosi; mammographyHu moments; central momentsGLCM (Grey Level Co-occurrence Matrix); fusion classifiermajority voting.
저자
Nabiha Azizi [ Computer Science Department, Badji Mokhtar University, Bp n 12, Annaba, 23000, Algeria ]
Yamina Tlili-Guiassa [ Computer Science Department, Badji Mokhtar University, Bp n 12, Annaba, 23000, Algeria ]
Nawel Zemmal [ Computer Science Department, Badji Mokhtar University, Bp n 12, Annaba, 23000, Algeria ]
보안공학연구지원센터(IJMUE) [Science & Engineering Research Support Center, Republic of Korea(IJMUE)]
설립연도
2006
분야
공학>컴퓨터학
소개
1. 보안공학에 대한 각종 조사 및 연구
2. 보안공학에 대한 응용기술 연구 및 발표
3. 보안공학에 관한 각종 학술 발표회 및 전시회 개최
4. 보안공학 기술의 상호 협조 및 정보교환
5. 보안공학에 관한 표준화 사업 및 규격의 제정
6. 보안공학에 관한 산학연 협동의 증진
7. 국제적 학술 교류 및 기술 협력
8. 보안공학에 관한 논문지 발간
9. 기타 본 회 목적 달성에 필요한 사업
간행물
간행물명
International Journal of Multimedia and Ubiquitous Engineering
간기
월간
pISSN
1975-0080
수록기간
2008~2016
등재여부
SCOPUS
십진분류
KDC 505DDC 605
이 권호 내 다른 논문 / International Journal of Multimedia and Ubiquitous Engineering Vol.8 No4