Publication Type : Conference Paper
Publisher : Intelligent Engineering Informatics, Advances in Intelligent Systems and Computing, Springer Singapore, Singapore.
Source : Intelligent Engineering Informatics, Advances in Intelligent Systems and Computing, Springer Singapore, Singapore (2018)
Url : https://link.springer.com/chapter/10.1007/978-981-10-7566-7_21
ISBN : 9789811075667
Keywords : Gamma expansion, GLCM, Haralick method, Mammograms, Normalized graph cuts, SVM
Campus : Amritapuri
School : Department of Computer Science and Engineering, School of Engineering
Center : Computer Vision and Robotics
Department : Computer Science
Verified : No
Year : 2018
Abstract : Mammograms are customarily employed as one of the reliable computer-aided detection (CAD) techniques. We propose an efficient modified graph-cut (GC) segmented, grey-level co-occurrence matrix (GLCM)-based support vector machine (SVM) technique, for classification of tumour. In this work, SVM classification was carried out in single-view mammograms, subsequent to preprocessing, GC segmentation and GLCM feature extraction. Segmentation of pectoral muscles was done first, followed by segmentation of tumour, using kernel space mapped normalized GCs. We believe this process is the first of its kind used in mammograms. A suitably large number of features were extracted from GLCM, using Haralick method, which in turn increased the training efficiency. The proposed method was tested on 322 different mammograms from Mammographic Image Analysis Society (MIAS) and hence successfully verified to provide efficient results. High accuracy rates were achieved by combining best methods at each stage of diagnosis.
Cite this Research Publication : C. A. Ancy and Lekha S. Nair, “Tumour Classification in Graph-Cut Segmented Mammograms Using GLCM Features-Fed SVM”, in Intelligent Engineering Informatics, Advances in Intelligent Systems and Computing, Singapore, 2018