1,142 research outputs found

    Optic nerve head segmentation

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    Reliable and efficient optic disk localization and segmentation are important tasks in automated retinal screening. General-purpose edge detection algorithms often fail to segment the optic disk due to fuzzy boundaries, inconsistent image contrast or missing edge features. This paper presents an algorithm for the localization and segmentation of the optic nerve head boundary in low-resolution images (about 20 /spl mu//pixel). Optic disk localization is achieved using specialized template matching, and segmentation by a deformable contour model. The latter uses a global elliptical model and a local deformable model with variable edge-strength dependent stiffness. The algorithm is evaluated against a randomly selected database of 100 images from a diabetic screening programme. Ten images were classified as unusable; the others were of variable quality. The localization algorithm succeeded on all bar one usable image; the contour estimation algorithm was qualitatively assessed by an ophthalmologist as having Excellent-Fair performance in 83% of cases, and performs well even on blurred image

    New Proposed Methodologies for Detection of Eye Diseases in Human Beings using HDL, Modelsim Matlab, Python & Tensor Flow w.r.t. the Bio-Medical Image Processing Point of View

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    In this research paper, the proposed methodologies for glaucoma detection are presented using different hardware & software tools

    Review on Optic Disc Localization Techniques

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    The optic disc (OD) is one of the important part of the eye for detecting various diseases such as Diabetic Retinopathy and Glaucoma. The localization of optic disc is extremely important for determining hard exudates and lesions. Diagnosis of the disease can prevent people from vision loss. This paper analyzes various techniques which are proposed by different authors for the exact localization of optic disc to prevent vision loss

    Retinal Fundus Image Analysis for Diagnosis of Glaucoma: A Comprehensive Survey

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    © 2016 IEEE. The rapid development of digital imaging and computer vision has increased the potential of using the image processing technologies in ophthalmology. Image processing systems are used in standard clinical practices with the development of medical diagnostic systems. The retinal images provide vital information about the health of the sensory part of the visual system. Retinal diseases, such as glaucoma, diabetic retinopathy, age-related macular degeneration, Stargardt's disease, and retinopathy of prematurity, can lead to blindness manifest as artifacts in the retinal image. An automated system can be used for offering standardized large-scale screening at a lower cost, which may reduce human errors, provide services to remote areas, as well as free from observer bias and fatigue. Treatment for retinal diseases is available; the challenge lies in finding a cost-effective approach with high sensitivity and specificity that can be applied to large populations in a timely manner to identify those who are at risk at the early stages of the disease. The progress of the glaucoma disease is very often quiet in the early stages. The number of people affected has been increasing and patients are seldom aware of the disease, which can cause delay in the treatment. A review of how computer-aided approaches may be applied in the diagnosis and staging of glaucoma is discussed here. The current status of the computer technology is reviewed, covering localization and segmentation of the optic nerve head, pixel level glaucomatic changes, diagonosis using 3-D data sets, and artificial neural networks for detecting the progression of the glaucoma disease

    A Region-Aided Color Geometric Snake

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    Segmentación del disco óptico mediante level-sets con información de color

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    La segmentación del Disco Óptico (DO) es un paso esencial para la extracción automática de estructuras anatómicas y lesiones retinianas. La mayoría de los algoritmos de segmentación de la literatura procesan exclusivamente un solo plano de la retinografía, descartando la información de color. En este artículo se presenta un nuevo algoritmo de segmentación del DO. En primer lugar se realiza un preprocesamiento para eliminar los vasos sanguíneos. A continuación se aplica un algoritmo de level-sets basado en bordes. La mayor contribución del artículo es la utilización de la información de color para el proceso de segmentación. Se calculan gradientes vectoriales en el espacio de color L*a*b* que son utilizados por el algoritmo de level-sets. En lugar de utilizar la norma Euclídea, se aplica la fórmula de diferencia de color CIE94 en los gradientes vectoriales. Se ha probado con 22 retinografías donde los médicos han detectado manualmente los bordes del DO. El algoritmo ha detectado automáticamente el DO en todos los casos, con un 92.35% de intersección entre el área marcada por los expertos y la detectada. La Distancia Media al Punto más Cercano está por debajo de 5 píxeles en el 100% de las imágenes.Ministerio de Ciencia e Innovación TEC 2010-21619-C04-0

    Automated retinal analysis

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    Diabetes is a chronic disease affecting over 2% of the population in the UK [1]. Long-term complications of diabetes can affect many different systems of the body including the retina of the eye. In the retina, diabetes can lead to a disease called diabetic retinopathy, one of the leading causes of blindness in the working population of industrialised countries. The risk of visual loss from diabetic retinopathy can be reduced if treatment is given at the onset of sight-threatening retinopathy. To detect early indicators of the disease, the UK National Screening Committee have recommended that diabetic patients should receive annual screening by digital colour fundal photography [2]. Manually grading retinal images is a subjective and costly process requiring highly skilled staff. This thesis describes an automated diagnostic system based oil image processing and neural network techniques, which analyses digital fundus images so that early signs of sight threatening retinopathy can be identified. Within retinal analysis this research has concentrated on the development of four algorithms: optic nerve head segmentation, lesion segmentation, image quality assessment and vessel width measurements. This research amalgamated these four algorithms with two existing techniques to form an integrated diagnostic system. The diagnostic system when used as a 'pre-filtering' tool successfully reduced the number of images requiring human grading by 74.3%: this was achieved by identifying and excluding images without sight threatening maculopathy from manual screening
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