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Multifilters-Based Unsupervised Method for Retinal Blood Vessel Segmentation

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TLDR
An unsupervised approach for vessels segmentation out of retinal images using Contrast Limited Histogram Equalization as well as Fuzzy Histogram Based Equalization for contrast enhancement is suggested.
Abstract
Fundus imaging is one of the crucial methods that help ophthalmologists for diagnosing the various eye diseases in modern medicine. An accurate vessel segmentation method can be a convenient tool to foresee and analyze fatal diseases, including hypertension or diabetes, which damage the retinal vessel’s appearance. This work suggests an unsupervised approach for vessels segmentation out of retinal images. The proposed method includes multiple steps. Firstly, from the colored retinal image, green channel is extracted and preprocessed utilizing Contrast Limited Histogram Equalization as well as Fuzzy Histogram Based Equalization for contrast enhancement. To expel geometrical articles (macula, optic disk) and noise, top-hat morphological operations are used. On the resulted enhanced image, matched filter and Gabor wavelet filter are applied, and the outputs from both is added to extract vessels pixels. The resulting image with the now noticeable blood vessel is binarized using human visual system (HVS). A final image of segmented blood vessel is obtained by applying post-processing. The suggested method is assessed on two public datasets (DRIVE and STARE) and showed comparable results with regard to sensitivity, specificity and accuracy. The results we achieved with respect to sensitivity, specificity together with accuracy on DRIVE database are 0.7271, 0.9798 and 0.9573, and on STARE database these are 0.7164, 0.9760, and 0.9560, respectively, in less than 3.17 s on average per image.

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TL;DR: A comprehensive review of the state-of-the-art methods for the detection and segmentation of retinal image features is presented in this article , where several notable techniques for retinal features are categorized into essential groups and compared in depth.
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Hydrothermal Liquefaction of Lignocellulosic and Protein-Containing Biomass: A Comprehensive Review

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Real-Time CLAHE Algorithm Implementation in SoC FPGA Device for 4K UHD Video Stream

TL;DR: The CLAHE algorithm can be a component of a larger vision system, such as in autonomous vehicles or drones, but it can also support the analysis of underwater, thermal, or medical images both by humans and in an automated system.
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Retinal image blood vessel classification using hybrid deep learning in cataract diseased fundus images

TL;DR: In this paper , a hybrid deep learning technique was proposed for segmentation and classification of retinal vessels, where the retinal images are pre-processed to enhance the image quality by performing two steps such as image cropping and colour channel conversion.
References
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Journal ArticleDOI

Ridge-based vessel segmentation in color images of the retina

TL;DR: A method is presented for automated segmentation of vessels in two-dimensional color images of the retina based on extraction of image ridges, which coincide approximately with vessel centerlines, which is compared with two recently published rule-based methods.
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Image Analysis Using Mathematical Morphology

TL;DR: The tutorial provided in this paper reviews both binary morphology and gray scale morphology, covering the operations of dilation, erosion, opening, and closing and their relations.
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Locating blood vessels in retinal images by piecewise threshold probing of a matched filter response

TL;DR: An automated method to locate and outline blood vessels in images of the ocular fundus that uses local and global vessel features cooperatively to segment the vessel network is described.
Journal ArticleDOI

Detection of blood vessels in retinal images using two-dimensional matched filters

TL;DR: The concept of matched filter detection of signals is used to detect piecewise linear segments of blood vessels in these images and the results are compared to those obtained with other methods.
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