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A New Biometric Modality for Human Authentication Using Eye Blinking

Research Abstract
This paper proposes a new biometric identifier for humans based on eye blinking waveform extracted from brain waves. Brain waves were recorded using Neurosky Mindwave headset from 25 volunteers. Two approaches are adopted for the pre-processing stage; the first approach uses empirical mode decomposition to isolate electro-oculogram signal from brain waves, then, extracts eye blinking signal. The second approach extracts eye blinking signal directly from brain waves. Features are extracted based on time delineation of the eye blinking waveform and classified using linear discriminant analysis. The best correct identification and equal error rates achieved are 98.51% and 2.5% for identification and verification modes respectively. The obtained results in this paper confirm that eye blinking waveform carries discriminant information and is therefore appropriate as a basis for human recognition task.
Research Authors
Mohammed Abo-Zahhad, Sabah M. Ahmed, and Sherif N. Abbas
Research Department
Research Journal
Biomedical Engineering Conference (CIBEC), 2014 Cairo International
Research Member
Research Pages
NULL
Research Publisher
IEEE
Research Rank
3
Research Vol
NULL
Research Website
NULL
Research Year
2014

A New Biometric Modality for Human Authentication Using Eye Blinking

Research Abstract
This paper proposes a new biometric identifier for humans based on eye blinking waveform extracted from brain waves. Brain waves were recorded using Neurosky Mindwave headset from 25 volunteers. Two approaches are adopted for the pre-processing stage; the first approach uses empirical mode decomposition to isolate electro-oculogram signal from brain waves, then, extracts eye blinking signal. The second approach extracts eye blinking signal directly from brain waves. Features are extracted based on time delineation of the eye blinking waveform and classified using linear discriminant analysis. The best correct identification and equal error rates achieved are 98.51% and 2.5% for identification and verification modes respectively. The obtained results in this paper confirm that eye blinking waveform carries discriminant information and is therefore appropriate as a basis for human recognition task.
Research Authors
Mohammed Abo-Zahhad, Sabah M. Ahmed, and Sherif N. Abbas
Research Department
Research Journal
Biomedical Engineering Conference (CIBEC), 2014 Cairo International
Research Member
Research Pages
NULL
Research Publisher
IEEE
Research Rank
3
Research Vol
NULL
Research Website
NULL
Research Year
2014

PCG biometric identification system based on feature level fusion using canonical correlation analysis

Research Abstract
In this paper, a new technique for human identification task based on heart sound signals has been proposed. It utilizes a feature level fusion technique based on canonical correlation analysis. For this purpose a robust pre-processing scheme based on the wavelet analysis of the heart sounds is introduced. Then, three feature vectors are extracted depending on the cepstral coefficients of different frequency scale representation of the heart sound namely; the mel, bark, and linear scales. Among the investigated feature extraction methods, experimental results show that the mel-scale is the best with 94.4% correct identification rate. Using a hybrid technique combining MFCC and DWT, a new feature vector is extracted improving the system's performance up to 95.12%. Finally, canonical correlation analysis is applied for feature fusion. This improves the performance of the proposed system up to 99.5%. The experimental results show significant improvements in the performance of the proposed system over methods adopting single feature extraction.
Research Authors
M. Abo-Zahhad, Sabah M. Ahmed, Sherif N. Abbas
Research Department
Research Journal
Electrical and Computer Engineering (CCECE), 2014 IEEE 27th Canadian Conference on
Research Member
Research Pages
NULL
Research Publisher
IEEE
Research Rank
3
Research Vol
NULL
Research Website
NULL
Research Year
2014

PCG biometric identification system based on feature level fusion using canonical correlation analysis

Research Abstract
In this paper, a new technique for human identification task based on heart sound signals has been proposed. It utilizes a feature level fusion technique based on canonical correlation analysis. For this purpose a robust pre-processing scheme based on the wavelet analysis of the heart sounds is introduced. Then, three feature vectors are extracted depending on the cepstral coefficients of different frequency scale representation of the heart sound namely; the mel, bark, and linear scales. Among the investigated feature extraction methods, experimental results show that the mel-scale is the best with 94.4% correct identification rate. Using a hybrid technique combining MFCC and DWT, a new feature vector is extracted improving the system's performance up to 95.12%. Finally, canonical correlation analysis is applied for feature fusion. This improves the performance of the proposed system up to 99.5%. The experimental results show significant improvements in the performance of the proposed system over methods adopting single feature extraction.
Research Authors
M. Abo-Zahhad, Sabah M. Ahmed, Sherif N. Abbas
Research Department
Research Journal
Electrical and Computer Engineering (CCECE), 2014 IEEE 27th Canadian Conference on
Research Member
Research Pages
NULL
Research Publisher
IEEE
Research Rank
3
Research Vol
NULL
Research Website
NULL
Research Year
2014

Biometric authentication based on PCG and ECG signals: present status and future directions

Research Abstract
Due to the great advances in biomedical digital signal processing, new biometric traits have showed noticeable improvements in authentication systems. Recently, the ElectroCardioGram (ECG) and the PhonoCardioGraph (PCG) have been proposed as novel biometrics. This paper aims to review the previous studies related to the usage of the ECG and PCG signals in human recognition. In addition, we discuss briefly the most important techniques and methodologies used by researchers in the preprocessing, feature extraction and classification of the ECG and PCG signals. At the end, we introduce some future considerations that can be applied in this topic such as: the fusion between different techniques previously used, use both ECG and PCG signals in a multimodal biometric authentication system and building a prototype system for real-time authentication.
Research Authors
M. Abo-Zahhad, Sabah M. Ahmed, Sherif N. Abbas
Research Department
Research Journal
Signal, Image and Video Processing
Research Member
Research Pages
pp. 739-751
Research Publisher
Springer
Research Rank
1
Research Vol
vol.8, no. 4
Research Website
NULL
Research Year
2014

Biometric authentication based on PCG and ECG signals: present status and future directions

Research Abstract
Due to the great advances in biomedical digital signal processing, new biometric traits have showed noticeable improvements in authentication systems. Recently, the ElectroCardioGram (ECG) and the PhonoCardioGraph (PCG) have been proposed as novel biometrics. This paper aims to review the previous studies related to the usage of the ECG and PCG signals in human recognition. In addition, we discuss briefly the most important techniques and methodologies used by researchers in the preprocessing, feature extraction and classification of the ECG and PCG signals. At the end, we introduce some future considerations that can be applied in this topic such as: the fusion between different techniques previously used, use both ECG and PCG signals in a multimodal biometric authentication system and building a prototype system for real-time authentication.
Research Authors
M. Abo-Zahhad, Sabah M. Ahmed, Sherif N. Abbas
Research Department
Research Journal
Signal, Image and Video Processing
Research Member
Research Pages
pp. 739-751
Research Publisher
Springer
Research Rank
1
Research Vol
vol.8, no. 4
Research Website
NULL
Research Year
2014

A Novel Biometric Approach for Human Identification and Verification Using Eye Blinking Signal

Research Abstract
In this letter, a novel technique is adopted for human recognition based on eye blinking waveform extracted from electro-oculogram signals. For this purpose, a database of 25 subjects is collected using Neurosky Mindwave headset. Then, the eye blinking signal is extracted and applied for identification and verification tasks. The pre-processing stage includes empirical mode decomposition to isolate electro-oculogram signal from brainwaves. Then, time delineation of the eye blinking waveform is utilized for feature extraction. Finally, linear discriminant analysis is adopted for classification. Based on the achieved results, the proposed system can identify subjects with best accuracy of 97.3% and verify them with an equal error rate of 3.7%. The obtained results in this letter confirm that eye blinking waveform carries discriminant information and is therefore appropriate as a basis for human recognition task.
Research Authors
M. Abo-Zahhad, Sabah M. Ahmed, Sherif N. Abbas
Research Department
Research Journal
IEEE Signal Processing Letters
Research Member
Research Pages
pp. 879-880
Research Publisher
IEEE
Research Rank
1
Research Vol
vol. 22, no. 7
Research Website
NULL
Research Year
2015

A Novel Biometric Approach for Human Identification and Verification Using Eye Blinking Signal

Research Abstract
In this letter, a novel technique is adopted for human recognition based on eye blinking waveform extracted from electro-oculogram signals. For this purpose, a database of 25 subjects is collected using Neurosky Mindwave headset. Then, the eye blinking signal is extracted and applied for identification and verification tasks. The pre-processing stage includes empirical mode decomposition to isolate electro-oculogram signal from brainwaves. Then, time delineation of the eye blinking waveform is utilized for feature extraction. Finally, linear discriminant analysis is adopted for classification. Based on the achieved results, the proposed system can identify subjects with best accuracy of 97.3% and verify them with an equal error rate of 3.7%. The obtained results in this letter confirm that eye blinking waveform carries discriminant information and is therefore appropriate as a basis for human recognition task.
Research Authors
M. Abo-Zahhad, Sabah M. Ahmed, Sherif N. Abbas
Research Department
Research Journal
IEEE Signal Processing Letters
Research Member
Research Pages
pp. 879-880
Research Publisher
IEEE
Research Rank
1
Research Vol
vol. 22, no. 7
Research Website
NULL
Research Year
2015

Unconventional Size Reducer Parameters for Brittle Agricultural Wastes - Part. I Design

Research Abstract
NULL
Research Authors
Prof. Ahmed Huzayyin, Dr. Ibrahim Mohamed, Dr. Ali Sabry, Dr. Yahya Abdel-Hamed
Research Journal
Benha University
Research Pages
609 - 615
Research Publisher
NULL
Research Rank
4
Research Vol
16 -18
Research Website
NULL
Research Year
1997

A hybrid RGA-PS Approach for
Selective Harmonic Elimination of PWM AC/AC Voltage Controller

Research Abstract
NULL
Research Authors
A. K. Alothman, Nabil A. Ahmed and M. AlSharidah
Research Department
Research Journal
International
Journal of Electrical Power and Energy Systems
Research Pages
p. 123–13
Research Publisher
NULL
Research Rank
1
Research Vol
44, 1
Research Website
NULL
Research Year
2013
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