Human ear recognition can be defined as a branch of biometrics that uses images of the ears to identify people. This paper provides a new ear print recognition approach depending on the combination of gradient direction pattern (GDP2) and difference theoretic texture features (DTTF) features. The region of interest (ROI), the gray scale of the ear print was cut off, noise removal by the median filter, histogram equalization, and local normalization (LN) are the first steps in this approach. After the image has been processed, it is used as input for the fusion of GDP2 and DTTF for extracting the features of ear print images. Lastly, the Gaussian distribution (GD) was utilized to compute the distance among fusion feature vectors (FV) for ear...
The structure of ears is not completely random. They have standard part as other biometric traits li...
AbstractBiometric authentication using ear images becoming popular nowadays in the field of security...
We propose an ear recognition system based on 2D ear images which includes three stages: ear enrollm...
The outer ear is an emerging biometric trait that has drawn the attention of the research community ...
A number of researchers have shown that ear recognition is a viable alternative to more common biome...
Ear recognition is a promising biometric measure, especially with the growing interest in multi-moda...
Identifying the people by using their ear is the emerging trend in the modern era. Biometrics deals ...
Human ear recognition has been promoted as a profitable biometric over the past few years. With resp...
This paper presents an ear biometric approach to classify humans. Accordingly an improved local feat...
AbstractThe biometrics recognition has been paid more attention by people with the advancement of te...
An individual's authentication plays a vital role in our daily life. In the last decade, biometric-b...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
In this paper, proposed detection algorithm for human ear print images, the algor...
Local features are effective for ear biometrics. Scale Invariant Feature Transform (SIFT) technique ...
Biometrics is a method used to recognize humans based on one or a few characteristics physical or be...
The structure of ears is not completely random. They have standard part as other biometric traits li...
AbstractBiometric authentication using ear images becoming popular nowadays in the field of security...
We propose an ear recognition system based on 2D ear images which includes three stages: ear enrollm...
The outer ear is an emerging biometric trait that has drawn the attention of the research community ...
A number of researchers have shown that ear recognition is a viable alternative to more common biome...
Ear recognition is a promising biometric measure, especially with the growing interest in multi-moda...
Identifying the people by using their ear is the emerging trend in the modern era. Biometrics deals ...
Human ear recognition has been promoted as a profitable biometric over the past few years. With resp...
This paper presents an ear biometric approach to classify humans. Accordingly an improved local feat...
AbstractThe biometrics recognition has been paid more attention by people with the advancement of te...
An individual's authentication plays a vital role in our daily life. In the last decade, biometric-b...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
In this paper, proposed detection algorithm for human ear print images, the algor...
Local features are effective for ear biometrics. Scale Invariant Feature Transform (SIFT) technique ...
Biometrics is a method used to recognize humans based on one or a few characteristics physical or be...
The structure of ears is not completely random. They have standard part as other biometric traits li...
AbstractBiometric authentication using ear images becoming popular nowadays in the field of security...
We propose an ear recognition system based on 2D ear images which includes three stages: ear enrollm...