In this work, we design a fully complex-valued neural network for the task of iris recognition. Unlike the problem of general object recognition, where real-valued neural networks can be used to extract pertinent features, iris recognition depends on the extraction of both phase and magnitude information from the input iris texture in order to better represent its biometric content. This necessitates the extraction and processing of phase information that cannot be effectively handled by a real-valued neural network. In this regard, we design a fully complex-valued neural network that can better capture the multi-scale, multi-resolution, and multi-orientation phase and amplitude features of the iris texture. We show a strong correspondence ...
Abstract Iris biometrics is one of the fastest‐growing technologies, and it has received a lot of at...
This paper presents a novel iris recognition system using 1D log polar Gabor wavelet and Euler numbe...
In this study, an end-to-end human iris recognition system is presented to automatically identify in...
Iris recognition refers to the automated process of recognizing individuals based on their iris patt...
Abstract: This paper presents a novel approach of iris recognition based on feedforward neural netwo...
In Deep Learning, recent works show that neural networks have a high potential in the field of biome...
Iris is a powerful tool for reliable human identification. It has the potential to identify individu...
Iris recognition faces two important issues. they are how to decompose finely and reconstruct the sp...
Image categorization is often performed manually, which can be a time consuming and a very difficult...
Biometrics is the science of verifying the identity of an individual through physiological measureme...
AbstractIris recognition is a challenging problem in the noisy environment. Our primary focus is to ...
Among biometric systems for user verification, iris recognition systems represent a relatively new t...
The consistent and efficient method for the identification of biometrics is the iris recognition in ...
This paper presents biometric personal identification based on iris recognition using artificial neu...
Abstract: This paper compares two different techniques of iris recognition and explains the steps of...
Abstract Iris biometrics is one of the fastest‐growing technologies, and it has received a lot of at...
This paper presents a novel iris recognition system using 1D log polar Gabor wavelet and Euler numbe...
In this study, an end-to-end human iris recognition system is presented to automatically identify in...
Iris recognition refers to the automated process of recognizing individuals based on their iris patt...
Abstract: This paper presents a novel approach of iris recognition based on feedforward neural netwo...
In Deep Learning, recent works show that neural networks have a high potential in the field of biome...
Iris is a powerful tool for reliable human identification. It has the potential to identify individu...
Iris recognition faces two important issues. they are how to decompose finely and reconstruct the sp...
Image categorization is often performed manually, which can be a time consuming and a very difficult...
Biometrics is the science of verifying the identity of an individual through physiological measureme...
AbstractIris recognition is a challenging problem in the noisy environment. Our primary focus is to ...
Among biometric systems for user verification, iris recognition systems represent a relatively new t...
The consistent and efficient method for the identification of biometrics is the iris recognition in ...
This paper presents biometric personal identification based on iris recognition using artificial neu...
Abstract: This paper compares two different techniques of iris recognition and explains the steps of...
Abstract Iris biometrics is one of the fastest‐growing technologies, and it has received a lot of at...
This paper presents a novel iris recognition system using 1D log polar Gabor wavelet and Euler numbe...
In this study, an end-to-end human iris recognition system is presented to automatically identify in...