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Reseach Article

A Comparative Study of Binarisation of Ultrasound Images

Published on September 2016 by Monika Pathak, Harsh Sadawarti, Sukhdev Singh
International Conference on Advances in Emerging Technology
Foundation of Computer Science USA
ICAET2016 - Number 6
September 2016
Authors: Monika Pathak, Harsh Sadawarti, Sukhdev Singh
cb199859-a404-43a4-b2a1-24624828ce27

Monika Pathak, Harsh Sadawarti, Sukhdev Singh . A Comparative Study of Binarisation of Ultrasound Images. International Conference on Advances in Emerging Technology. ICAET2016, 6 (September 2016), 17-19.

@article{
author = { Monika Pathak, Harsh Sadawarti, Sukhdev Singh },
title = { A Comparative Study of Binarisation of Ultrasound Images },
journal = { International Conference on Advances in Emerging Technology },
issue_date = { September 2016 },
volume = { ICAET2016 },
number = { 6 },
month = { September },
year = { 2016 },
issn = 0975-8887,
pages = { 17-19 },
numpages = 3,
url = { /proceedings/icaet2016/number6/25913-t091/ },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Proceeding Article
%1 International Conference on Advances in Emerging Technology
%A Monika Pathak
%A Harsh Sadawarti
%A Sukhdev Singh
%T A Comparative Study of Binarisation of Ultrasound Images
%J International Conference on Advances in Emerging Technology
%@ 0975-8887
%V ICAET2016
%N 6
%P 17-19
%D 2016
%I International Journal of Computer Applications
Abstract

The ultrasound imaging is one of most trustful tool to diagnosis the abnormities in kidney. The urinary tract infection is major problem rise due to presence of stones in the kidneys. Automatic detection of region of stone is a challenging task as ultrasound image suffers with speckle noise which is coherent in nature. The present research is aimed to test various binarisation algorithms and conduct statistical analyzes to find the algorithm best suitable for the binarisation of ultrasound images. A comparative study is conducted on clinical and synthetic ultrasound images. The binarisation algorithms are classified into two broad categories namely global and local thresholding. The study included binarisation algorithms such as Otsu's binarisation algorithm under global binarisation, whereas, Souvola's binarisation, Niblack's Binarisation, Bernsen's Binarisation, Morphological binarisation and adaptive binarisation are considered for analysis under local binarisation. These algorithms are tested on 50 ultrasound images collected from ultrasound centres. The statistical metrics considered for testing are Visual Observation and PSNR (Peak signal to noise ratio). The statistical analysis revels that presence of speck is the major hindrance in the segmentation of ultrasound images. Among the tested algorithms, adaptive binarisation and morphological operations based binarisation have shown better results. The speckle noise needs to be suppressed keeping the fine detail like edge information while separating the background from region of interest.

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Index Terms

Computer Science
Information Sciences

Keywords

Binarization Global Binarisation Local Binarisation Segmentation Ultrasound Images Speckle Noise