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A novel optic disc detection scheme on retinal images
Authors:Hung-Kuei Hsiao  Chen-Chung Liu  Chun-Yuan Yu  Shiau-Wei Kuo  Shyr-Shen Yu
Affiliation:1. División de Electrónica y Computación, Universidad de Guadalajara, CUCEI, Av. Revolución 1500, C.P. 44430, Guadalajara, Jal., Mexico;2. DeustoTech, Faculty of Engineering, University of Deusto, Av. Universidades, 24, 48007 Bilbao, Spain;3. IN3 - Computer Science Dept., Universitat Oberta de Catalunya, Castelldefels, Spain;4. Faculty of Computers and AI, Cairo University, Giza, Egypt;5. UC Davis Eyepod Imaging Laboratory, Dept. of Cell Biology and Human Anatomy, University of California Davis, Davis, CA 95616, USA;6. Dept. of Ophthalmology & Vision Science, University of California Davis, Sacramento, CA, USA;1. Department of Informatics Engineering, Technological Educational Institute of Crete, Heraklion, Greece;2. Institute of Computer Science, FORTH, Heraklion, Greece
Abstract:Robust and effective optic disc detection is a necessary processing component in automatic retinal screening systems. In this paper, optic disc localization is achieved by a novel illumination correction operation, and contour segmentation is completed by a supervised gradient vector flow snake (SGVF snake) model. Conventional GVF snake is not sufficient to segment contour due to vessel occlusion and fuzzy disc boundaries. In view of this reason, the SGVF snake is extended in each time of deformation iteration, so that the contour points can be classified and updated according to their corresponding feature information. The classification relies on the feature vector extraction and the statistical information generated from training images. This approach is evaluated by means of two publicly available databases, Digital Retinal Images for Vessel Extraction (DRIVE) database and Structured Analysis of the Retina (STARE) database, of color retinal images. The experimental results show that the overall performance is with 95% correct optic disc localization from the two databases and 91% disc boundaries are correctly segmented by the SGVF snake algorithm.
Keywords:
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