Development of Method of Matched Morphological Filtering of Biomedical Signals and Images


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详细

Formalized approach to the analysis of biomedical signals and images with locally concentrated features is developed on the basis of matched morphological filtering taking into account the useful signal models that allowed generalizing the existing methods of digital processing and analysis of biomedical signals and images with locally concentrated features. The proposed matched morphological filter has been adapted to solve such problems as localization of the searched structural elements on biomedical signals with locally concentrated features, estimation of the irregular background aimed at the visualization quality improving of biological objects on X-ray biomedical images, pathologic structures selection on mammogram. The efficiency of the proposed methods of matched morphological filtration of biomedical signals and images with locally concentrated features is proved by experiments.

作者简介

A. Povoroznyuk

Department of Computer Engineering and Programming Faculty of Computer and Information Technologies National Technical University “Kharkiv Polytechnic Institute”

Email: filatova@gmail.com
乌克兰, Kharkiv, 61002

A.E. Filatova

Department of Computer Engineering and Programming Faculty of Computer and Information Technologies National Technical University “Kharkiv Polytechnic Institute”

编辑信件的主要联系方式.
Email: filatova@gmail.com
乌克兰, Kharkiv, 61002

A. Zakovorotniy

Department of Computer Engineering and Programming Faculty of Computer and Information Technologies National Technical University “Kharkiv Polytechnic Institute”

Email: filatova@gmail.com
乌克兰, Kharkiv, 61002

Kh. Shehna

Department of Computer Engineering and Programming Faculty of Computer and Information Technologies National Technical University “Kharkiv Polytechnic Institute”

Email: filatova@gmail.com
乌克兰, Kharkiv, 61002

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