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Hybrid Segmentation and Feature Extraction Approach to Detect Tumour Based on Fuzzy Rough-in Mammogram Images

Published: 01 January 2019 Publication History

Abstract

Tumor classification plays a significant area of research in mammogram images. In this paper, we introduce the tumor classification method in mammogram images by using Fuzzy rough set theory (FRST) and it offers an accurate approach of texture and feature extraction. The core purpose of deploying FRST is feature extraction which is achieved by using a quick reduct algorithm which helps to identify the tumor without loss of pixels in a short period. Fuzzy rough instance selection (FRIS) is applied to remove the noise from the mammogram image and finally the combination of fuzzy-rough nearest neighbor (FRNN) method is used in segmentation. The results obtained using the proposed methods are compared in various performance measures such as accuracy, sensitivity and specificity are calculated accurately.

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        Published In

        cover image Procedia Computer Science
        Procedia Computer Science  Volume 165, Issue C
        2019
        795 pages
        ISSN:1877-0509
        EISSN:1877-0509
        Issue’s Table of Contents

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        Elsevier Science Publishers B. V.

        Netherlands

        Publication History

        Published: 01 January 2019

        Author Tags

        1. FRST
        2. Quick Reduct
        3. FRIS
        4. FRNN
        5. Image Segmentation
        6. Feature Extraction

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