Open Access Open Access  Restricted Access Subscription or Fee Access

Exudates Detection in Retinal Images using KNNFP and WKNNFP Classifiers

Asha Gowda Karegowda, Sudeshna Bhattacharyya, M.A. Jayaram, A.S. Manjunath

Abstract


Exudates are one of the primary signs of diabetic retinopathy, which is the main cause of blindness and can be prevented with an early screening process. In this paper, KNNFP and WKNNFP classifiers have been used for automatic exudates detection. The publicly available diabetic retinopathy dataset DIARETDB1 has been used in the evaluation process. The RGB image is converted to HIS color space. The median filter is applied to intensity image of HIS for removal of noise followed by Contrast-Limited Adaptive Histogram Equalization to achieve uniform illumination. Further the optic disk is eliminated since optic disk has properties similar to exudates,which may cause the hindrance with exudates detection. Five pixel level features were selected as input for classfication of exudates and non-exudates pixels: hue from hue image and intensity, mean intensity, standard deviation of intensity and distance between mean of optic disk pixels and pixels of exudates and non-exudates extracted from the preprocessed Intensity image. KNNFP and WKNNFP classifiers have been experimented using two distance easures namely Euclidean distance and Manhattan distance. Investigation reveals that the performance of KNNFP using Euclidean distance is superior when compared to KNNFP using Manhattan distance.WKKNFP has been experimented using three attribute weight assignment methods: Relief, information gain and Gain ratio.Compared to KNNFP, there is substantial improvement of WKKFP performance by assigning the feature weight Gain ratio and Relief method. The classfication accuracy of WKNNFP is found to be 97.50% compared to classfication accuracy of 96.67% with KNNFP classifier.


Keywords


Diabetic Retinopathy, KNNFP and WKNNFP, Image Preprocessing, Exudates

Full Text:

PDF

References


Asha Gowda Karegowda , P.T. Bharathi, M.A. Jayaram, A.S. Manjunath.(2010), “Automatic Detection of Exudates in DiabeticRetinopathy using Traditional & Machine Learning Techniques: An Overview”, International Conference on Computing , NEW DELHI 27-28 December 2010

http://www.nei.nih.gov/health/diabetic/retinopathy.asp

G. Gardner, D. Keating, T. Williamson, and A. Elliott, (1996).Automatic detection of diabetic retinopathy using an artificial neural network: a screening tool, British Journal of Ophthalmology, 80:940-944,(1996).

D. Usher, M. Dumsky, M. Himaga, T.H. Williamson, Sl. Nussey, and J.Boyce(2003). Automated detection of diabetic retinopathy in digital retinal images: a tool for diabetic retinopathy screening, Diametric Medicine, 21, 84-90, (2003).

C. Jayakumari, and T. Santhanam, (2008). An Intelligent Approach to Detect Hard and Soft Exudates Using Echo State Neural Network,Information Technology Journal 7 (2), 386-395, (2008).

A. Osareh, M. Mirmehdi, B. Thomas, R. Markham, (2002). Classfication and Localization of Diabetic-Related Eye Disease, A.Heyden et al(EDS).ECCV 2002, LNCS 2353,pp.502-516, (2002) .

A. Osareh, M. Mirmehdi, B. Thomas, R. Markham,. Comparative Exudates Classification using Support Vector Machine and Neural Networks. 5th International Conference on Medical Image Computing-Assisted Intervention. Dohi, T.; Kikinis,(eds).PP, 413-420.September (2002) .

A. Osareh, M. Mirmehdi, B. Thomas, R. Markham,. (2003). Automated Identification of Diabetic Retinal Exudates, in Digital Colour Images,British J. of Ophthalmology, vol. 87, no. 10, pp.1220--1223, Oct. (2003).

Meindert Niemeijer, Bram van Ginneken, Stephen R. Russell, S.A. Maria,” Automated Detection and Differentiation of Drusen, Exudates,and Cotton-wool Spots in Digital Color Fundus Photographs for Early Diagnosis of Diabetic Retinopathy”, Invest Ophthalmol Vis Sci 2007 , May ; 48(5): 2260–2267 .

Akara Sopharak, Khine Thet Nwe, Yin Aye Moe, Mathew .N.Dailey, and B Uyyanonvar. (2008). Automatic Exudate Detection with a naïve Bayes Classifier, Imaging in the Eye, IV, (2008).

Akara Sopharak, Khine Thet Nwe, Yin Aye Moe, Mathew .N.Dailey, and B Uyyanonvara. (2008). Automatic Exudates Detection us with a support vector machine classifier, Proc, International Conference on Embedded Systems and Intelligent Technology, pp.139-142, (2008).

Akara Sopharak, Buyarit Uyyanonvara and Sarah Barman, (2009).Automatic Exudates Detection form Non dilated Diabetic Retinopathy Retinal Images Using Fuzzy C means Clustering, Sensors (2009), 9, 2148-2161.

Akara Sopharak, Bunyarit Uyyanonvara, SarahBarman and Thomas Williamson. (2009). Comparative Analysis of Automatic Exudates Detection between Machine Learning and Traditional Approaches, The Institute of electronic, Information and Communication Engineers (IEICE) Trans. Vol E92-D, N0 11, Nov (2009)

A.M. Aibinu , M.I. Iqbal , M. Nilson , and M.J.E. Salami (2007) Automatic Diagnosis of DiabeticsFrom Fundus Images Using Digital Signal and Image Processing Techniques,Proceedings of the International Conference on Robotics, Vision, Information and Signal Processing ,pp.510-514, Penang, Malaysia, 28-30 November 2007.

Rafael C. Gonzalez and Richard E.Woods‘Digital Image Processing using MATLAB’, 2nd edition. Prentice Hall, 2002. ISBN 0-201-18075-8.

A. Akkus ,H.A. Guvenir, “Classification on Feature Projections”, in Proc. of the 13th International Conference on Machine Learning.(1996).

Guvenir, HA Sirn I, The Complexity of the CFP , a method for classification based on feature partitioning., Advances in Artificial Intelligence ,Lecture Notes in Artificial Intelligence, LNAI 728, 202-207(1993).

Guvenir, HA Sirn I, Classification by feature partitioning, Machine Learning, 23: 47-67. (1996).

H. Unsal,” Classification with Overlapping Feature Intervals”, Bilkent Universiy, Dept of Computer Engineering and Information Science,MSC, Thesis, 1995.

Altay G uvenir and Aynur Akkus,” Weighted k Nearest Neighbor Classification on Feature Projections”, Department of Computer Engineering and Information Science Bilkent University.

Kenji Kira, Larry A. Rendell: A Practical Approach to Feature Selection.In: Ninth International Workshop on Machine Learning, 249-256, 1992.


Refbacks

  • There are currently no refbacks.