Javascript must be enabled to continue!
ScatT-LOOP: scattering tetrolet-LOOP descriptor and optimized NN for iris recognition at-a-distance
View through CrossRef
Abstract
Iris Recognition at-a Distance (IAAD) is a major challenge for researchers due to the defects associated with the visual imaging and poor image quality in dynamic environments, which imposed bad impacts on the accuracy of recognition. Thus, in order to enable the effective IAAD, this paper proposes a new method, named, Chronological Monarch Butterfly Optimization (Chronological MBO)-enabled Neural Network (NN). The recognition of iris using NN is trained with the proposed Chronological MBO, which is developed through the combination of Chronological theory in Monarch Butterfly Optimization (MBO). The recognition becomes effective with the automatic segmentation and the normalization of iris image on the basis of Hough Transform (HT) and Daugman’s rubber sheet model followed with the process of feature extraction with the developed ScatT-LOOP descriptor, which is the integration of scattering transform (ST), Local Optimal Oriented Pattern (LOOP) descriptor, and Tetrolet transform (TT). The developed ScatT-LOOP descriptor extracts the texture as well as the orientation details of image for effective recognition. The analysis is evaluated with the CASIA Iris dataset with respect to the evaluation metrics, accuracy, False Acceptance Rate (FAR), and False Rejection Rate (FRR). The proposed method has the accuracy, FRR, and FAR of 0.97, 0.005, and 0.005, respectively. The experimental results proved that the proposed method is effective than the existing methods of iris recognition.
Walter de Gruyter GmbH
Title: ScatT-LOOP: scattering tetrolet-LOOP descriptor and optimized NN for iris recognition at-a-distance
Description:
Abstract
Iris Recognition at-a Distance (IAAD) is a major challenge for researchers due to the defects associated with the visual imaging and poor image quality in dynamic environments, which imposed bad impacts on the accuracy of recognition.
Thus, in order to enable the effective IAAD, this paper proposes a new method, named, Chronological Monarch Butterfly Optimization (Chronological MBO)-enabled Neural Network (NN).
The recognition of iris using NN is trained with the proposed Chronological MBO, which is developed through the combination of Chronological theory in Monarch Butterfly Optimization (MBO).
The recognition becomes effective with the automatic segmentation and the normalization of iris image on the basis of Hough Transform (HT) and Daugman’s rubber sheet model followed with the process of feature extraction with the developed ScatT-LOOP descriptor, which is the integration of scattering transform (ST), Local Optimal Oriented Pattern (LOOP) descriptor, and Tetrolet transform (TT).
The developed ScatT-LOOP descriptor extracts the texture as well as the orientation details of image for effective recognition.
The analysis is evaluated with the CASIA Iris dataset with respect to the evaluation metrics, accuracy, False Acceptance Rate (FAR), and False Rejection Rate (FRR).
The proposed method has the accuracy, FRR, and FAR of 0.
97, 0.
005, and 0.
005, respectively.
The experimental results proved that the proposed method is effective than the existing methods of iris recognition.
Related Results
Iris Recognition Method Based on Parallel Iris Localization Algorithm and Deep Learning Iris Verification
Iris Recognition Method Based on Parallel Iris Localization Algorithm and Deep Learning Iris Verification
Biometric recognition technology has been widely used in various fields of society. Iris recognition technology, as a stable and convenient biometric recognition technology, has be...
Iris Recognition at-a-Distance by Means of Chronological MBO-Based DBN
Iris Recognition at-a-Distance by Means of Chronological MBO-Based DBN
Now a days, Iris recognition is wieldy used for the identification of person. The superior bit of 1 countries exploits biometric system for safety reason with the conclusion goal t...
Incidence and Clinical Parameters of HIV-1 Paradoxical and Unmasking Immune Reconstitution Syndrome in Antiretroviral Naïve Pregnant Women attending selected facilities in Kenya
Incidence and Clinical Parameters of HIV-1 Paradoxical and Unmasking Immune Reconstitution Syndrome in Antiretroviral Naïve Pregnant Women attending selected facilities in Kenya
Background
Following ART initiation, a spectrum of HIV-associated immune reconstitution inflammatory syndrome (IRIS), as opportunistic infections occurs, presenti...
Deteksi Iris Berdasarkan Metode Black Hole dan Circle Curve Fitting
Deteksi Iris Berdasarkan Metode Black Hole dan Circle Curve Fitting
<p class="Abstract">Sistem pengenalan identitas personal berdasarkan ciri biometrika adalah suatu sistem pengenalan seseorang berdasarkan pada ciri biometrika yang melekat pa...
Deteksi Iris Berdasarkan Metode Black Hole dan Circle Curve Fitting
Deteksi Iris Berdasarkan Metode Black Hole dan Circle Curve Fitting
Sistem pengenalan identitas personal berdasarkan ciri biometrika adalah suatu sistem pengenalan seseorang berdasarkan pada ciri biometrika yang melekat pada orang tersebut. Iris ma...
Biometric Private Iris Recognition From An Image at Long Distance: A survey
Biometric Private Iris Recognition From An Image at Long Distance: A survey
The specially finished annular element of the person eye which is remotely visible is - iris. This iris recognition is useful to identify the individual. In number of applications ...
Local gradient pattern and deep learning-based approach for the iris recognition at-a-distance
Local gradient pattern and deep learning-based approach for the iris recognition at-a-distance
One of the biometric techniques utilized to predict the human is based on the iris. The recognition of iris is performed by discovering an individual without human intervention uti...
LRFID-Net: A Local-Region-Based Fake-Iris Detection Network for Fake Iris Images Synthesized by a Generative Adversarial Network
LRFID-Net: A Local-Region-Based Fake-Iris Detection Network for Fake Iris Images Synthesized by a Generative Adversarial Network
Iris recognition is a biometric method using the pattern of the iris seated between the pupil and the sclera for recognizing people. It is widely applied in various fields owing to...

