Age-related Macular Degeneration (AMD) is a kind of retinal disease that contains deposits affecting the macula. Macula occupies only 4 % of the retinal region but its effect is severe when it is affected. For many patients, the visual impairment associated with AMD means a loss of independence, depression, and increased financial concerns. Currently, these problems can be resolved using image processing techniques. In the existing system, the algorithm does not address the presence of artifacts in image. Also, it takes more time for the processing of the retinal images. Hence, the proposed system masks the input retinal image during preprocessing and keeps only the retinal part, thereby reducing the processing time. Image processing techniques such as generic quality indicators can be applied to assess the quality of the retinal image and the Gabor filter for detecting the retinal images containing macular degeneration (which leads to AMD). Such a retinal image containing artifacts in macula is identified and used for the medical application. Here, the processing time can be reduced effectively using an optimized method. Finally, the outcome is nature of the image, whether the image’s quality is applicable for medical purpose and whether the retinal image is subjected to AMD.
[1]
M. Cree,et al.
Automated Image Detection of Retinal Pathology
,
2009
.
[2]
Filip Sroubek,et al.
Retinal image restoration by means of blind deconvolution.
,
2011,
Journal of biomedical optics.
[3]
Peter F. Sharp,et al.
Evaluation of a System for Automatic Detection of Diabetic Retinopathy From Color Fundus Photographs in a Large Population of Patients With Diabetes
,
2008,
Diabetes Care.
[4]
Ajoy Kumar Ray,et al.
Study of Macular Degeneration with Respect to Artifacts on Retinal Images
,
2013
.
[5]
Q. M. Jonathan Wu,et al.
An Efficient Algorithm for Focus Measure Computation in Constant Time
,
2012,
IEEE Transactions on Circuits and Systems for Video Technology.
[6]
Luís Alberto da Silva Cruz,et al.
Retinal image quality assessment using generic image quality indicators
,
2014,
Inf. Fusion.
[7]
Emanuele Trucco,et al.
FABC: Retinal Vessel Segmentation Using AdaBoost
,
2010,
IEEE Transactions on Information Technology in Biomedicine.