Biometric retina identification using artificial approach
Abstract
In this paper, we considered recognizing 2D retina pictures with a Convolutional
Neural Network (CNN) for greater accuracy since retina-based identification is the
most secure way of establishing identity and identifying people. An artificial neural
network that is used to examine pixel input and recognize and process images
is called a CNN. CNN algorithm has been selected to identify 2D retina images
because through the CNN algorithm faster and better accuracy can be achieved.
The retina identification process includes gray scaling of the RGB retina images,
vessel extraction of the retina in the 2D images and then data augmentation is
performed to increase datasets. Our method was evaluated on 3 databases- ARIA,
DRIVE and STARE and we achieved test accuracy of 1 multiple times within 45
epochs. Test accuracy of 0.983 is received as the highest average accuracy among
every 10 epochs. The implementation of the identification process was done using
the PyTorch package.