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SEGMENTATION OF OBJECTS ON BIOMEDICAL IMAGES USING LIBRARIES OF TEMPLATES

Abstract

The purpose of this paper is to introduce a robust framework to facilitate simultaneous detection and segmentation of objects with arbitrary size and shape on different kinds of medical images using a library of arbitrary irregular smooth shapes.

About the Authors

M. M. Alilou
Объединенный институт проблем информатики НАН Беларуси
Russian Federation


M. V. Sprindzuk
Объединенный институт проблем информатики НАН Беларуси
Russian Federation


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Review

For citations:


Alilou M.M., Sprindzuk M.V. SEGMENTATION OF OBJECTS ON BIOMEDICAL IMAGES USING LIBRARIES OF TEMPLATES. Informatics. 2013;(4):23-29. (In Russ.)

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ISSN 1816-0301 (Print)
ISSN 2617-6963 (Online)