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Journal ArticleDOI

Automatic Detection of Optic Disc Based on PCA and Mathematical Morphology

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TLDR
The algorithm proposed in this paper allows to automatically segment the optic disc from a fundus image to facilitate the early detection of certain pathologies and to fully automate the process so as to avoid specialist intervention.
Abstract
The algorithm proposed in this paper allows to automatically segment the optic disc from a fundus image. The goal is to facilitate the early detection of certain pathologies and to fully automate the process so as to avoid specialist intervention. The method proposed for the extraction of the optic disc contour is mainly based on mathematical morphology along with principal component analysis (PCA). It makes use of different operations such as generalized distance function (GDF), a variant of the watershed transformation, the stochastic watershed, and geodesic transformations. The input of the segmentation method is obtained through PCA. The purpose of using PCA is to achieve the grey-scale image that better represents the original RGB image. The implemented algorithm has been validated on five public databases obtaining promising results. The average values obtained (a Jaccard's and Dice's coefficients of 0.8200 and 0.8932, respectively, an accuracy of 0.9947, and a true positive and false positive fractions of 0.9275 and 0.0036) demonstrate that this method is a robust tool for the automatic segmentation of the optic disc. Moreover, it is fairly reliable since it works properly on databases with a large degree of variability and improves the results of other state-of-the-art methods.

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Book ChapterDOI

Deep Retinal Image Understanding

TL;DR: Deep Retinal Image Understanding is presented, a unified framework of retinal image analysis that provides both retinal vessel and optic disc segmentation and shows super-human performance, that is, it shows results more consistent with a gold standard than a second human annotator used as control.
Journal ArticleDOI

CNNs for automatic glaucoma assessment using fundus images: an extensive validation

TL;DR: Using ImageNet-trained models is a robust alternative for automatic glaucoma screening system and the high specificity and sensitivity obtained are supported by an extensive validation using not only the cross-validation strategy but also theCross-testing validation on, to the best of the authors’ knowledge, all publicly available glAUcoma-labelled databases.
Journal ArticleDOI

IDRiD: Diabetic Retinopathy – Segmentation and Grading Challenge

TL;DR: The set-up and results of this challenge that is primarily based on Indian Diabetic Retinopathy Image Dataset (IDRiD), which received a positive response from the scientific community, have the potential to enable new developments in retinal image analysis and image-based DR screening in particular.
Book ChapterDOI

Deep Retinal Image Understanding

TL;DR: Deep Retinal Image Understanding (DRIU) as mentioned in this paper uses a base network architecture on which two set of specialized layers are trained to solve both the retinal vessel and optic disc segmentation.
Journal ArticleDOI

Segmentation of optic disk and optic cup from digital fundus images for the assessment of glaucoma

TL;DR: A novel implicit region based active contour model is proposed for OD segmentation which incorporates the image information at the point of interest from multiple image channels to have robustness against the variations found in and around the OD region.
References
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Some methods for classification and analysis of multivariate observations

TL;DR: The k-means algorithm as mentioned in this paper partitions an N-dimensional population into k sets on the basis of a sample, which is a generalization of the ordinary sample mean, and it is shown to give partitions which are reasonably efficient in the sense of within-class variance.
Book

Image Analysis and Mathematical Morphology

Jean Serra
TL;DR: This invaluable reference helps readers assess and simplify problems and their essential requirements and complexities, giving them all the necessary data and methodology to master current theoretical developments and applications, as well as create new ones.
Book

Digital Image Processing Using MATLAB

TL;DR: 1. Fundamentals of Image Processing, 2. Intensity Transformations and Spatial Filtering, and 3. Frequency Domain Processing.
Proceedings ArticleDOI

Image inpainting

TL;DR: A novel algorithm for digital inpainting of still images that attempts to replicate the basic techniques used by professional restorators, and does not require the user to specify where the novel information comes from.
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