Age-related macular generation (AMD) is the
major reason of sight loss for persons above 50 years of
age. Automated algorithm makes possible in the early
detection of AMD, by discovering variations in the
blood vessel and arrays in the retina. AMD is steady
damage of eye vision by rust of macula and general
cause of permanent vision loss. The aim of this paper is
to firstly detect the retinal disease AMD and to
categorize the two kinds. In this paper, a Discrete
Wavelet Transform (DWT) joined with LSDA for
automated detection of AMD is proposed. The image is
firstly preprocessed from chale. The extracted features
are subjected to reduction through LSDA. The
performance of classifier namely Deep Convolutional
Neural Network (DCNN) is applied to detect the AMD
disease and likened to automatically differentiate to wet
and dry groups using classified LSDA factors. The
results showed a classification of 97%.
Keywords : Age-Related Macular Degeneration, Fungus Images, Discrete Wavelet Transform, Deep Convolutional Neural Network.