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Border detection in dermoscopy images using statistical region merging.

Authors :
Celebi ME
Kingravi HA
Iyatomi H
Aslandogan YA
Stoecker WV
Moss RH
Malters JM
Grichnik JM
Marghoob AA
Rabinovitz HS
Menzies SW
Source :
Skin research and technology : official journal of International Society for Bioengineering and the Skin (ISBS) [and] International Society for Digital Imaging of Skin (ISDIS) [and] International Society for Skin Imaging (ISSI) [Skin Res Technol] 2008 Aug; Vol. 14 (3), pp. 347-53.
Publication Year :
2008

Abstract

Background: As a result of advances in skin imaging technology and the development of suitable image processing techniques, during the last decade, there has been a significant increase of interest in the computer-aided diagnosis of melanoma. Automated border detection is one of the most important steps in this procedure, because the accuracy of the subsequent steps crucially depends on it.<br />Methods: In this article, we present a fast and unsupervised approach to border detection in dermoscopy images of pigmented skin lesions based on the statistical region merging algorithm.<br />Results: The method is tested on a set of 90 dermoscopy images. The border detection error is quantified by a metric in which three sets of dermatologist-determined borders are used as the ground-truth. The proposed method is compared with four state-of-the-art automated methods (orientation-sensitive fuzzy c-means, dermatologist-like tumor extraction algorithm, meanshift clustering, and the modified JSEG method).<br />Conclusion: The results demonstrate that the method presented here achieves both fast and accurate border detection in dermoscopy images.

Details

Language :
English
ISSN :
1600-0846
Volume :
14
Issue :
3
Database :
MEDLINE
Journal :
Skin research and technology : official journal of International Society for Bioengineering and the Skin (ISBS) [and] International Society for Digital Imaging of Skin (ISDIS) [and] International Society for Skin Imaging (ISSI)
Publication Type :
Academic Journal
Accession number :
19159382
Full Text :
https://doi.org/10.1111/j.1600-0846.2008.00301.x