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Journal ArticleDOI

Evaluating the Efficacy of Second Order Statistical Features for Classification of Mammograms

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TLDR
A computer aided classification system has been proposed for classification of mammogram images into normal, benign and cancer classes and indicates that GLCM mean and range features computed at d=1 yield the maximum overall classification accuracy.
Abstract
In the present work, a computer aided classification system has been proposed for classification of mammogram images into normal, benign and cancer classes. The work has been carried out on thirty Digital Database for Screening mammography (DDSM) cases consisting of 10 normal, 10 benign and 10 cancer images. The regions of interest (ROI) have been extracted from the right Medio Lateral Oblique (RMLO) part of the mammogram. We extracted 256×256 pixel size ROI from each case. Texture descriptors based on gray level co-occurrence method by varying the value of inter pixel distance 'd' from 1 to 8 have been used. The SVM classifier has been used for the classification task. The result of the study indicates that GLCM mean and range features computed at d=1 yield the maximum overall classification accuracy of 75% and 65 % respectively.

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References
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Journal ArticleDOI

Textural Features for Image Classification

TL;DR: These results indicate that the easily computable textural features based on gray-tone spatial dependancies probably have a general applicability for a wide variety of image-classification applications.
Book

Texture analysis

TL;DR: The geometric, random field, fractal, and signal processing models of texture are presented and major classes of texture processing such as segmentation, classification, and shape from texture are discussed.
Book ChapterDOI

A User's Guide to Support Vector Machines

TL;DR: This work provides a basic understanding of the theory behind SVMs and focuses on their use in practice, describing the effect of the SVM parameters on the resulting classifier, how to select good values for those parameters, data normalization, factors that affect training time, and software for training SVMs.
Journal ArticleDOI

Automated classification of parenchymal patterns in mammograms

TL;DR: The method was designed to study the relation between breast cancer risk and changes of mammographic density and includes a new method for automatic segmentation of the pectoral muscle in oblique mammograms, based on application of the Hough transform.
Proceedings ArticleDOI

Automatic classification of mammographic parenchymal patterns: a statistical approach

TL;DR: A new approach to breast parenchymal pattern classification is presented, which uses texture models to capture the mammographic appearance within the breast area and is modelled as a statistical distribution of clustered, rotationally invariant filter responses in a low dimensional space.
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