GRD Journals | Global Research and Development Journal for Engineering | International Conference on Innovations in Engineering and Technology (ICIET) - 2016 | July 2016
e-ISSN: 2455-5703
Segmentation of Lung Structures with Fuzzy Clustering Algorithm 1Dr.
A. Umarani 2R. Arunjunai Rani 3Su. Raja Subhashini 1 Assistant Professor 2Student 1,2,3 Department of Electronics and Instrumentation 1,2,3 K.L.N College of Engineering Abstract
Cancer are considered to be the major health threat in several regions of the world. After HIV, it is the second foremost infectious disease in worldwide causing death. When it is left undiagnosed and untreated, humanity rates of patients are high. The diagnostic methods are slow and still unreliable to detect. In order to reduce the liability of the disease, this work presents our automatic methodology for identifying Cancer. Initially, the extraction of the lung region is done using a graph cut segmentation method. Using this lung region, we figure out a set of texture and shape features, which enable the X-rays to be classified as normal or abnormal using the SVM classifier. This paper presents a simplified methodology using fuzzy logic segmentation from the natural image processing to lung segmentation tasks over GC segmentation. The proposed indicative system for analyzing CANCER segmentation achieves a better performance than the approaches of graph cut segmentation Keyword- Segmentation, Lung Structures, Fuzzy Clustering __________________________________________________________________________________________________
I. INTRODUCTION Lung cancer seems to be the common cause of death among people throughout the world. Early detection of lung cancer can increase the chance of survival among people. The overall 5-year survival rate for lung cancer patients increases from 14 to 49% if the disease is detected in time. Although Computed Tomography (CT) can be more efficient than X-ray. However, problem seemed to merge due to time constraint in detecting the present of lung cancer regarding on the several diagnosing method used. Hence, a lung cancer detection system using image processing is used to classify the present of lung cancer in a CT- images. In this study, MATLAB have been used through every procedures made. In image processing procedures, process such as image preprocessing, segmentation and feature extraction have been discussed in detail. We are aiming to get the more accurate results by using various enhancement and segmentation technique. Computers excel in quantitative assessment of images and computational analysis is therefore important in order to analyse large amounts of data and to aid radiologists and researchers with better quantitative, time-saving and objective measures. The image segmentation approaches can be divided into four categories: thresholding, clustering, edge detection and region extraction. In this paper, a Fuzzy based clustering method for Image segmentation will be considered and compared with the graph cut approach Routing.
II. EXISTING METHODOLOGY
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