2006
DOI: 10.1109/tmi.2006.884190
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Retinal Vessel Centerline Extraction Using Multiscale Matched Filters, Confidence and Edge Measures

Abstract: Motivated by the goals of improving detection of low-contrast and narrow vessels and eliminating false detections at non-vascular structures, a new technique is presented for extracting vessels in retinal images. The core of the technique is a new likelihood ratio test that combines matchedfilter responses, confidence measures and vessel boundary measures. Matched filter responses are derived in scale-space to extract vessels of widely varying widths. A vessel confidence measure is defined as a projection of a… Show more

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Cited by 312 publications
(191 citation statements)
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References 64 publications
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“…blood vessels, in digital images (Chaudhuri et al, 1989;Zhang et al, 2010;Fraz et al, 2012). Here, we apply a filter kernel, as proposed in Sofka and Stewart (2006). The rectangular kernel mask is composed of a Mexican hat profile in normal and a constant profile in tangential direction.…”
Section: Cell Boundary Segmentation and Region Filteringmentioning
confidence: 99%
“…blood vessels, in digital images (Chaudhuri et al, 1989;Zhang et al, 2010;Fraz et al, 2012). Here, we apply a filter kernel, as proposed in Sofka and Stewart (2006). The rectangular kernel mask is composed of a Mexican hat profile in normal and a constant profile in tangential direction.…”
Section: Cell Boundary Segmentation and Region Filteringmentioning
confidence: 99%
“…Typically, these methods can be classified into intensity-based, featurebased, or hybrid-based methods. Feature-based methods extract features from a retinal image first, such as vascular bifurcation points [3], whole vasculature [4], and optic disk [5]. Then, the registration process that finds the best transform parameters is performed by maximizing a similarity measure based on correspondences of the extracted features.…”
Section: Introductionmentioning
confidence: 99%
“…This method has been used primarily for vessel detection [19,20] and tissue classification [21] in the field of medical image analysis. In this study, multiple scale analysis is used to correctly detect the lung junction with various sizes.…”
Section: The Proposed Lung Separation Methodsmentioning
confidence: 99%