Research Article

Automatic Detection of AMD and DME Retinal Pathologies Using Deep Learning

Table 6

Comparison of the results with some state of the art methods.

CNNPreprocessingAccuracy

Karri et al.GoogLeNetBM3D91.3%

Wang et al.VGG16FastNIMeans bilateralFilter91.6%
InceptionV3FastNIMeans bilateralFilter92.7%
VGG19FastNIMeans bilateralFilter98.2%

Proposed architecturesXceptionROI96.83%
Xception+feature extraction from middle layerROI98.02%
Inception-ResnetV2ROI93.43%
Inception-ResnetV2+feature extraction from middle layerROI97.70%
BCNN (Xception, Xception)ROI97.84%
BCNN (Inception-ResnetV2, Inception-ResnetV2)ROI95.55%
The from scratch “OCTorch-Net”Without preprocessing99.68%