DocumentCode :
1776138
Title :
Automated algorithm for retinal image exudates and drusens detection, segmentation, and measurement
Author :
Aqeel, Aqeel F. ; Ganesan, S.
Author_Institution :
Oakland Univ., Rochester, MI, USA
fYear :
2014
fDate :
5-7 June 2014
Firstpage :
206
Lastpage :
215
Abstract :
Exudates and drusens detection and measurement from the retina background makes a significant impact on the diagnosis of retinal pathologies. These diseases usually appear as cotton wall spots, yellowish exudates and drusens (macula degeneration). Information about illness severity can be inferred by the measurement of the sizes of the exudates and drusens and comparing them to the retina background size. In this paper, we have proposed robust algorithm for automatic exudates and drusens detection, segmentation, and measurement on 2D retinal images. The applied methods we suggest for exudates and drusens measuring are mathematic (labeling function) and numerical methods. Numerical methods have more sophisticated calculation steps and can be used to approximate more complicated area of exudates using a poly Area function. In our algorithms, prior to measuring exudates and drusens (AMD), a preprocessing takes place, in which first exudates and drusens detection and segmentation were implemented. For these implemented processes, we applied preprocessing operations, including image filtration, correction of non-uniform illumination, and color contrast enhancement, and then the combined approaches for image segmentation and classification were implemented using: two methods of texture, an adaptive threshold, and morphological operators. Moreover, we introduce methods to eliminate the optic disc completely for exudates detection and measuring. After applying these approaches to a number of images provided from ophthalmologists as well as Drive database, this automated diagnostic algorithm resulted in more accurate yields of exudates and Drusens detection and measurements especially for low intensity and less color contrast images from non-dilated eye pupils. This automated algorithm helps ophthalmologists monitor the progression of diabetic retinopathy.
Keywords :
eye; image classification; image colour analysis; image segmentation; image texture; medical image processing; numerical analysis; object detection; 2D retinal images; AMD; adaptive threshold; automated diagnostic algorithm; color contrast enhancement; color contrast images; cotton wall spots; diabetic retinopathy; drive database; illness severity; image classification; image filtration; image texture method; labeling function; mathematic methods; morphological operators; nondilated eye pupils; nonuniform illumination correction; numerical methods; ophthalmologists; optic disc; poly area function; retina background size; retinal image drusens detection; retinal image exudates detection; retinal image measurement; retinal image segmentation; retinal pathology diagnosis; Histograms; Image color analysis; Image segmentation; Optical filters; Optical imaging; Retina; Size measurement; Detection and Segmentation Operations; Exudates and Drusens; Exudates measurement; Optic Disc; Retina;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Electro/Information Technology (EIT), 2014 IEEE International Conference on
Conference_Location :
Milwaukee, WI
Type :
conf
DOI :
10.1109/EIT.2014.6871763
Filename :
6871763
Link To Document :
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