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Title: Fusion based analysis of ophthalmologic image data (English)
Author: Jan, Jiří
Author: Kolář, Radim
Author: Kubečka, Libor
Author: Odstrčilík, Jan
Author: Gazárek, Jiří
Language: English
Journal: Kybernetika
ISSN: 0023-5954
Volume: 47
Issue: 3
Year: 2011
Pages: 455-481
Summary lang: English
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Category: math
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Summary: The paper presents an overview of image analysis activities of the Brno DAR group in the medical application area of retinal imaging. Particularly, illumination correction and SNR enhancement by registered averaging as preprocessing steps are briefly described; further mono- and multimodal registration methods developed for specific types of ophthalmological images, and methods for segmentation of optical disc, retinal vessel tree and autofluorescence areas are presented. Finally, the designed methods for neural fibre layer detection and evaluation on retinal images, utilising different combined texture analysis approaches and several types of classifiers, are shown. The results in all the areas are shortly commented on at the respective sections. In order to emphasise methodological aspects, the methods and results are ordered according to consequential phases of processing rather then divided according to individual medical applications. (English)
Keyword: image fusion
Keyword: image analysis
Keyword: 2D and 3D image registration
Keyword: ophthalmology
Keyword: retina imaging
Keyword: subtractive angiography
Keyword: computed tomography
Keyword: illumination correction
Keyword: image averaging
Keyword: spatial transforms
MSC: 62A10
MSC: 93E12
idZBL: Zbl 1222.68404
idMR: MR2857198
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Date available: 2011-06-23T13:04:17Z
Last updated: 2013-09-22
Stable URL: http://hdl.handle.net/10338.dmlcz/141596
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