The Design of Diabetic Retinopathy Classifier Based on Parameter Optimization SVM

Diabetic retinopathy is a kind of disease which can seriously damage eyesight. Early diagnosis and regular treatment can effectively reduce visual deterioration. Artificial judgment of fundus images is time-consuming and easy to misdiagnose. Machine learning is an algorithm which automatically analyzes rules from data and uses rules to predict unknown data. Support Vector Machine (SVM) is one of the most important methods of machine learning. SVM is a classifier with learning ability. It is broadly applied to image recognition and image processing. Based on machine learning, a parametric optimized SVM classifier for diabetic retinopathy is proposed. Firstly, the classifier uses PCA and KPCA method to extract the prominent features of the image without artificial recognizing the features of the image, eliminates the specific feature extraction method, reduces the algorithm complexity, increases the generalization ability of the algorithm, and greatly improves the image processing speed. Secondly, grid search and genetic algorithm are used to optimize the parameters, avoid the problem of slow operation speed and low classification accuracy due to the large amount of data or the unsuitable selection of kernel parameters. Finally, a combinatorial optimization algorithm of KPCA and grid search is created. Meanwhile, the designed experiments verify that this combination optimization algorithm can make the classifier achieve the best classification state. The experimental results show that the classification accuracy of this combinatorial optimization algorithm reaches 98.33%, which can realize the automatic classification of diabetic retinopathy more accurately and rapidly.

[1]  F. Segovia,et al.  Neurological image classification for the Alzheimer's Disease diagnosis using Kernel PCA and Support Vector Machines , 2009, 2009 IEEE Nuclear Science Symposium Conference Record (NSS/MIC).

[2]  Sangramsing N. Kayte,et al.  Automated Diagnosis Non-proliferative Diabetic Retinopathy in Fundus Images using Support Vector Machine , 2015 .

[3]  Devvi Sarwinda,et al.  Fundus image texture features analysis in diabetic retinopathy diagnosis , 2017, 2017 Eleventh International Conference on Sensing Technology (ICST).

[4]  A. V. Deorankar,et al.  Diabetic Retinopathy using morphological operations and machine learning , 2015, 2015 IEEE International Advance Computing Conference (IACC).

[5]  Huanhuan Chen,et al.  Decision tree support vector machine based on genetic algorithm for multi-class classification , 2011 .

[6]  Marios S. Pattichis,et al.  Automatic system for diabetic retinopathy screening based on AM-FM, partial least squares, and support vector machines , 2010, 2010 IEEE International Symposium on Biomedical Imaging: From Nano to Macro.

[7]  S. Haneda,et al.  [International clinical diabetic retinopathy disease severity scale]. , 2010, Nihon rinsho. Japanese journal of clinical medicine.

[8]  Huijun Gao,et al.  PCA and KPCA integrated Support Vector Machine for multi-fault classification , 2016, IECON 2016 - 42nd Annual Conference of the IEEE Industrial Electronics Society.

[9]  Enrique V. Carrera,et al.  Automated detection of diabetic retinopathy using SVM , 2017, 2017 IEEE XXIV International Conference on Electronics, Electrical Engineering and Computing (INTERCON).