DeepIris: Iris Recognition Using A Deep Learning Approach

by   Shervin Minaee, et al.

Iris recognition has been an active research area during last few decades, because of its wide applications in security, from airports to homeland security border control. Different features and algorithms have been proposed for iris recognition in the past. In this paper, we propose an end-to-end deep learning framework for iris recognition based on residual convolutional neural network (CNN), which can jointly learn the feature representation and perform recognition. We train our model on a well-known iris recognition dataset using only a few training images from each class, and show promising results and improvements over previous approaches. We also present a visualization technique which is able to detect the important areas in iris images which can mostly impact the recognition results. We believe this framework can be widely used for other biometrics recognition tasks, helping to have a more scalable and accurate systems.


page 1

page 3

page 4


FingerNet: Pushing The Limits of Fingerprint Recognition Using Convolutional Neural Network

Fingerprint recognition has been utilized for cellphone authentication, ...

IS (Iris Security)

In the paper will be presented a safety system based on iridology. The r...

A Robust Iris Authentication System on GPU-Based Edge Devices using Multi-Modalities Learning Model

In recent years, mobile Internet has accelerated the proliferation of sm...

Texture Aware Autoencoder Pre-training And Pairwise Learning Refinement For Improved Iris Recognition

This paper presents a texture aware end-to-end trainable iris recognitio...

Iris and periocular recognition in arabian race horses using deep convolutional neural networks

This paper presents a study devoted to recognizing horses by means of th...

On Benchmarking Iris Recognition within a Head-mounted Display for AR/VR Application

Augmented and virtual reality is being deployed in different fields of a...

Please sign up or login with your details

Forgot password? Click here to reset