This paper aims to introduce an improved model for Diabetic Recognition (DR) recognition. Accordingly, the proposed model is executed under two stages, the initial one is the blood vessel segmentation and next step is the DR recognition. Using tophat by reconstruction of red portions in the green plane image, the two thresholds binary images are obtained in vessel segmentation. The areas that are found similar to two binary images are extracted as the main vessels. Additionally, the residual pixels in both the binary images are integrated in order to form a vessel sub-image i.e. facilitated to a classification of Gaussian Mixture Model (GMM). As a result, the complete pixels in the sub-image that are classified as vessels are amalgamated with the main vessels to obtain the segmented vasculature. Moreover, from the segmented blood vessel, the extraction of GLRM and Gray-Level Co-Occurrence Matrix (GLCM) features is performed that are subsequently classified by exploiting Neural Network. To enhance the accurateness, training is performed using Enhanced Crow Search with Levy Flight (ECS-LF) algorithm, so the error among actual output and predicted must be least.
Asieh Naderi, Reza Zahed, Leila Aghajanpour, Fahimeh Asadi Amoli, Alireza Lashay,"Long term features of diabetic retinopathy in streptozotocin-induced diabetic Wistar rats", Experimental Eye Research, Volume 184, July 2019, Pages 213-220.
Arul J. Duraisamy, Ghulam Mohammad, Renu A. Kowluru,"Mitochondrial fusion and maintenance of mitochondrial homeostasis in diabetic retinopathy", Biochimica et Biophysica Acta (BBA) - Molecular Basis of Disease, Volume 1865, Issue 6, 1 June 2019, Pages 1617-1626.
Ugur Gurlevik, Yasemin Ozdamar Erol, Erdogan Yasar,"Serum and vitreous resistin levels in patıents with proliferative diabetic retinopathy Diabetes Research and Clinical Practice, Volume 155, September 2019.
T. Shanthi, R. S. Sabeenian,"Modified Alexnet architecture for classification of diabetic retinopathy images", Computers & Electrical Engineering, Volume 76, June 2019, Pages 56-64.
X. Zeng, H. Chen, Y. Luo and W. Ye, "Automated Diabetic Retinopathy Detection Based on Binocular SiameseLike Convolutional Neural Network," IEEE Access, vol. 7, pp. 30744-30753, 2019.
Y. Sun, "The Neural Network of One-Dimensional Convolution-An Example of the Diagnosis of Diabetic Retinopathy," IEEE Access, vol. 7, pp. 69657-69666, 2019.
P. Soille, Morphological Image Analysis – Principle and Applications, Springer,Germany, 2003.
Sina Khanmohammadi, Chun-An Chou, "A Gaussian Mixture Model Based Discretization Algorithm for Associative ClassiÞcation of Medical Data", Department of Systems Science and Industrial Engineering, 26 March 2016.
Dhanashree Gadkari, "Image Quality Analysis using GLCM", 2004
] Manavalan Radhakrishnan and Thangavel Kuttiannan, "Comparative Analysis of Feature Extraction Methods for the Classification of Prostate Cancer from TRUS Medical Images", IJCSI International Journal of Computer Science Issues, Vol. 9, no.1, January 2012.
Yogeswaran Mohan, Sia Seng Chee, Donica Kan Pei Xin and Lee Poh Foong, "Artificial Neural Network for Classification of Depressive and Normal in EEG", 2016 IEEE EMBS Conference on Biomedical Engineering and Sciences (IECBES), 2016.
Askarzadeh, A. A novel metaheuristic method for solving constrained engineering optimization problems: Crow search algorithm. Comput. Struct. 2016, 169, 1–12.
Emery, N.J.; Clayton, N.S. The Mentality of Crows: Convergent Evolution of Intelligence in Corvids and Apes. Science 2004, 306, 1903–1907.
Holzhaider, J.C.; Hunt, G.R.; Gray, R.D. Social learning in New Caledonian crows. Learn. Behav. 2010, 38, 206– 219
N. Chakrabarty, "A Deep Learning Method for the detection of Diabetic Retinopathy," 2018 5th IEEE Uttar Pradesh Section International Conference on Electrical, Electronics and Computer Engineering (UPCON), Gorakhpur, 2018, pp. 1-5
A. L. Nanayakkara, N. D. Kodikara, A. S. Karunananda and M. M. Dissanayake, "Classification of stages of diabetic retinopathy in human retina," 2016 Sixteenth International Conference on Advances in ICT for Emerging Regions (ICTer), Negombo, 2016, pp. 322-322.
Remmiya R and Abisha C,"Artifacts Removal in EEG Signal Using a NARX Model Based CS Learning Algorithm",Multimedia Research, Volume 1, Issue 1, October 2018.
Ninu preetha and Praveena S,"Multiple Feature Sets and SVM Classifier for the Detection of Diabetic Retinopathy Using Retinal Images ",Multimedia Research, Volume 1, Issue 1, October 2018.
Baronchelli, A.; Radicchi, F. Lévy flights in human behavior and cognition. Chaos Solitons Fractals 2013, 56,101–105.
Yang, X.-S.; Ting, T.O.; Karamanoglu, M. Random Walks, Lévy Flights, Markov Chains and Metaheuristic Optimization; Springer: Dordrecht, The Netherlands, 2013; pp. 1055–1064.
Yang, X.-S. Nature-Inspired Metaheuristic Algorithms; Luniver Press: Beckington, UK, 2010
Karaboga, D.; Basturk, B. A powerful and efficient algorithm for numerical function optimization: Artificial bee colony (ABC) algorithm. J. Glob. Optim. 2007, 39, 459–471.
Abràmoff, M., Garvin, M. and Sonka, M., 2010. Retinal imaging and image analysis. Biomedical Engineering, IEEE Reviews in, 3, pp.169--208.