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CYB 302Cybersecurity· Computing

Biometrics Security

2 UnitsStatus: C300 LevelSemester 1LH 15PH 45Emerging Tech

Introduction to biometrics and digital image processing. Matlab in biometric image/signal processing. Biometric algorithms and systems with emphasis on face, fingerprint, eyes (iris), speech (voice). Automated biometric identification multimodal biometrics. Biometric data: raw data, template data,…

Learning outcomes

At the end of this course, students should be able to: 1. discuss biometric algorithms and data analysis along with digital image/signal processing; New Computing 73 2. apply automated biometric identification: hands-fingers, palms and hands; heads-face, voice and eyes and other biometrics; 3. develop methods of obtaining biometric data and matching basics; 4. practice biometric authentication, enrolment, matching performance, setting a threshold. biometric authentication, matching data, ground truth, calculating errors rates and graphs; 5. create storage of biometric data elements, quality, upgrades, data security and integrity; 6. analyse privacy issues, security strength, recognition rates and other aspects of biometrics, passwords and smart cards; and 7. explore applications of biometrics and future trends.

Course contents

Introduction to biometrics and digital image processing. Matlab in biometric image/signal processing. Biometric algorithms and systems with emphasis on face, fingerprint, eyes (iris), speech (voice). Automated biometric identification multimodal biometrics. Biometric data: raw data, template data, and data methods. Biometric matching basics: biometric authentication, enrolment, correct user, and incorrect user. Match threshold and matching performance. Setting a threshold. Biometric authentication: matching data, ground truth, calculating errors rates and graphs. Biometric data: Storage of biometric data elements, transactions, errors and quality upgrades. Data security and integrity. Privacy issues and other aspects of biometrics. Applications of biometrics and future trends. Challenging issues: security strength and recognition rates. Alternatives of passwords and smart cards. Lab work: Practical exercise on biometric capture, image processing, matching threshold and performance. Learn the practical aspect of automated biometric identification of multimodal, authentication and calculation of error rates. Work on biometric algorithms, privacy and security of stored biometric data. CYB 303: Cybersecurity Risks Analysis, Challenges and Mitigation (2 Units C; LH 30) Learning Outcomes At the end of this course, students should be able to: 1. describe the cybersecurity risks, how to avoid/prevent them and state the cybersecurity challenges and the path forward; 2. apply the decision and risk analysis techniques, and devise how to mitigate risks and vulnerabilities; 3. develop the effective use of assessments for cybersecurity risk mitigation in the cloud and how to use proactive measures to mitigate critical cybersecurity challenges; 4. analyse the implications of information technology to national development, cyber-attacks, control, distribution and safety of information with a review of the economic and geopolitical factors that have made African countries…

Modules

  1. 1Syllabus