2010
DOI: 10.1109/tmi.2010.2053042
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Detecting the Optic Disc Boundary in Digital Fundus Images Using Morphological, Edge Detection, and Feature Extraction Techniques

Abstract: Abstract-Optic disc (OD) detection is an important step in developing systems for automated diagnosis of various serious ophthalmic pathologies. This paper presents a new template-based methodology for segmenting the OD from digital retinal images. This methodology uses morphological and edge detection techniques followed by the Circular Hough Transform to obtain a circular OD boundary approximation. It requires a pixel located within the OD as initial information. For this purpose, a location methodology base… Show more

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Cited by 447 publications
(237 citation statements)
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“…where SBF (x i , y i ) is the filter response at point (x i , y i ) using (4), and x m and y m represent the centroid of the K points. After excluding the outliers, the new centroid of the remaining points in set Q is the new candidate for ODC (O l1 ), that will be the center of the new ROI to apply the high-resolution SBF in the next phase.…”
Section: Low-resolution Sbfmentioning
confidence: 99%
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“…where SBF (x i , y i ) is the filter response at point (x i , y i ) using (4), and x m and y m represent the centroid of the K points. After excluding the outliers, the new centroid of the remaining points in set Q is the new candidate for ODC (O l1 ), that will be the center of the new ROI to apply the high-resolution SBF in the next phase.…”
Section: Low-resolution Sbfmentioning
confidence: 99%
“…Similarly to [8] and [4], we excluded the images with no discernible OD or with severe enough cataracts to prevent meaningful segmentation, leaving a final set of 90 images for assessing the SBF method. The size of the images in this dataset is equal to the reference size.…”
Section: Onhsdmentioning
confidence: 99%
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