In recent years, there has been increasing interest in the potential of precisely identifying individuals through ear images within the biometric community, owing to the distinctive characteristics of the human ear. This paper introduces deep neural network architecture for ear recognition. The suggested method incorporates a preprocessing stage that enhances significant features in ear images through contrast-limited adaptive histogram equalization. Subsequently, a classifier with deep convolutional neural network is employed to recognize the preprocessed ear images. Experimental results demonstrate a remarkable testing accuracy of 97.92% for the proposed recognition system
A number of researchers have shown that ear recognition is a viable alternative to more common biome...
This document provides an approach to biometrics analysis which consists in the location and identif...
Biometrics is an automated method of recognizing a person based on a physiological (e.g. face, iris,...
Ear based biometric identification can be the solution for instance such as surveillance where other...
Automatic identity recognition of ear images represents an active area of interest within the biomet...
The process of precisely recognize people by ears has been getting major attention in recent years. ...
Due to the recent challenges in access control, surveillance and security, there is an increased nee...
This paper offers an approach to biometric analysis using ears for recognition. The ear has all the ...
This paper offers an approach to biometric analysis using ears for recognition. The ear has all the ...
Abstract: Using ears in identifying people has been interesting at least 100 years. The researches s...
This paper presents a framework that uses ear images for human identification. The framework makes u...
People have become more interested in biometrics recognition as technology has advanced. Biometrics ...
People have become more interested in biometrics recognition as technology has advanced. Biometrics ...
This article presents an Industry 4.0 compliant ear biometric recognition technique using dense conv...
The purpose of this paper is to offer an approach in the biometrics analysis field, using ears to re...
A number of researchers have shown that ear recognition is a viable alternative to more common biome...
This document provides an approach to biometrics analysis which consists in the location and identif...
Biometrics is an automated method of recognizing a person based on a physiological (e.g. face, iris,...
Ear based biometric identification can be the solution for instance such as surveillance where other...
Automatic identity recognition of ear images represents an active area of interest within the biomet...
The process of precisely recognize people by ears has been getting major attention in recent years. ...
Due to the recent challenges in access control, surveillance and security, there is an increased nee...
This paper offers an approach to biometric analysis using ears for recognition. The ear has all the ...
This paper offers an approach to biometric analysis using ears for recognition. The ear has all the ...
Abstract: Using ears in identifying people has been interesting at least 100 years. The researches s...
This paper presents a framework that uses ear images for human identification. The framework makes u...
People have become more interested in biometrics recognition as technology has advanced. Biometrics ...
People have become more interested in biometrics recognition as technology has advanced. Biometrics ...
This article presents an Industry 4.0 compliant ear biometric recognition technique using dense conv...
The purpose of this paper is to offer an approach in the biometrics analysis field, using ears to re...
A number of researchers have shown that ear recognition is a viable alternative to more common biome...
This document provides an approach to biometrics analysis which consists in the location and identif...
Biometrics is an automated method of recognizing a person based on a physiological (e.g. face, iris,...