학술논문

Automated classification of exudates from digital fundus images
Document Type
Conference
Source
2017 International Conference and Workshop on Bioinspired Intelligence (IWOBI) Bioinspired Intelligence (IWOBI), 2017 International Conference and Workshop on. :1-6 Jul, 2017
Subject
Bioengineering
Components, Circuits, Devices and Systems
Computing and Processing
Signal Processing and Analysis
Optical filters
Optical imaging
Image segmentation
Adaptive optics
Diabetes
Support vector machines
Databases
Medical Imaging
Diabetic Macular Edema
Fundus Image
Anisotropic Diffusion
Classification
SVM
Exudates
Language
Abstract
Diabetic Retinopathy and Diabetic Macular Edema are diseases that affect vision and eventually may lead to blindness. Early detection is a must to prevent the progression of the disease imploring the need for effective computer-aided diagnostic techniques. In the following research paper, a robust method has been proposed to segment hard exudates from digital, color fundus images using anisotropic diffusion and adaptive thresholding followed by a support vector machine for classification. The geometrical, shape and orientation features have been used to correctly classify the segmented objects as exudates or false pixels. The proposed technique has a high specificity and eliminates false positives correctly when applied across a wide range of images. The exudates segmented have a high degree of accuracy and no false positives are generated in case of non-diseased images. The proposed method has been tested on a total 189 images of the DIARETDB1 and MESSIDOR database and achieves an accuracy of 92.13% and 90% respectively. The proposed method can be used in the development for some computer aided technology for ocular diseases detection from fundus images.