2012 International Conference on Computing, Electronics and Electrical Technologies (ICCEET) 2012
DOI: 10.1109/icceet.2012.6203804
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An efficient automated system for detection of diabetic retinopathy from fundus images using support vector machine and bayesian classifiers

Abstract: The preliminary signs of diabetic retinopathy include micro aneurysms, haemorrhages and exudates. Early diagnosis and timely treatment can prevent vision loss in patients with long term diabetes. In this paper we used two algorithm based on filtering operations, morphological transformation and region growing method to extract features for detection of micro aneurysms, haemorrhage and non linear diffusion segmentation followed by colour histogram based clustering techniques is used to differentiate hard and so… Show more

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Cited by 22 publications
(7 citation statements)
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“…Without the use of any contrast enhancement procedure optimal AM-FM results in true candidates extraction to prove as reliable algorithm to not only enhance the low intensity of the images but also extraction of multiple features to detect actual candidates through classification in [127][128]. First white top hat transforms the geodesic detection followed by color histogram thresholding is the sequential steps provided in preprocessing module by [129]. Goatman et al [130] proposed a method for contrast enhancement in which the image contrast stretching was used to cover full pixel dynamic range excluding the dark surrounding border pixels for normalization.…”
Section: Mask Generationmentioning
confidence: 99%
“…Without the use of any contrast enhancement procedure optimal AM-FM results in true candidates extraction to prove as reliable algorithm to not only enhance the low intensity of the images but also extraction of multiple features to detect actual candidates through classification in [127][128]. First white top hat transforms the geodesic detection followed by color histogram thresholding is the sequential steps provided in preprocessing module by [129]. Goatman et al [130] proposed a method for contrast enhancement in which the image contrast stretching was used to cover full pixel dynamic range excluding the dark surrounding border pixels for normalization.…”
Section: Mask Generationmentioning
confidence: 99%
“…Vlachos et al [9] utilized the model used by Forachhia et al [8] for background normalization. In [10], Narasimhan et al filtered the green plane image by median filter and divided green plane image by median filtered image for normalization. Goatman et al [11] proposed a method for contrast enhancement in which the image contrast stretching was used to cover full pixel dynamic range excluding the dark surrounding border pixels for normalization.…”
Section: Image Normalizationmentioning
confidence: 99%
“…As a preprocessing step, color normalization and contrast enhancement were done. Narasimhan et al [10] proposed adaptive thresholding and region growing in combination with Bayesian and SVM classifiers for the MAs classification. In the preprocessing step green plane extraction, normalization of image by median filter, white top hat transform and geodesic dilation were utilized.…”
Section: Classification Of Microaneurysm and Hemorrhagesmentioning
confidence: 99%
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“…This results from the existing of interference such as other light lesion regions that have same intensities as HEs. After defining some inherent features such as geometry, color, contrast and texture features, many machine learning methods such as k-nearest neighbor classifier and linear discriminant classifier [11], statistical classification [12], neural network [13], [14], Bayesian classifiers [15] and SVM [16] can used to classify the true HEs.…”
Section: Introductionmentioning
confidence: 99%