Book Chapter10.1007/978-3-642-14292-5_30
Human Authentication Using FingerIris Algorithm Based on Statistical Approach
Ahmed B. Elmadani
- 07 Jul 2010
- pp 288-296
7
TL;DR: A system with an algorithm, uses a pair of biometrics print (fingerprint and Iris), used to gain access to personal resources, it is based on a statistical approach and accelerates matching process.
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Abstract: Biometric becomes nowadays, a strong tool to authenticate persons, because they are able to prove a true identity. Research shows that different applications are used in verification. Fingerprints, Face, Iris recognition are some examples. But most of them safer from FRR and FAR, so for those reasons more researches and new algorithms are needed to be developed and to solve this problem. This paper presents a system with an algorithm, uses a pair of biometrics print (fingerprint and Iris), used to gain access to personal resources, it is based on a statistical approach. Features are extracted and used to authenticate persons. Paper shows that the developed system solves the mentioned problem and accelerates matching process.
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Citations
Efficient personal identification using multimodal biometrics
Ahilandeswari,U. Prabu,G Priyadharshini,M Saranya,N Resma Parveen,M. Shanmugam,J. Amudhavel +6 more
- 19 Mar 2015
TL;DR: The proposed system uses three of the biometric technologies in the process of identification: Face recognition; Fingerprint recognition; and Speech Recognition, and discusses about the methods of feature extraction, fusion and decision used in the system and their advantages over other biometric systems.
7
•Journal Article
Trusted document signing based on use of biometric (face) keys
TL;DR: A mathematical scheme for demonstrating the authenticity of a digital message or document is known as Digital Signature (DS), which convince a recipient that a document was created by a known sender.
5
Digital signature forming and keys protection based on person's characteristics
Ahmed B. Elmadani
- 24 Mar 2012
TL;DR: It is shown how true user identity can be verified when used keys are derived from human characteristics, which is highly in demand of e-commerce society.
4
Development Of Iris Based Age And Gender Detection System
Bamidele I. Faluyi,Ariyo Olufemi Ojo,Oluwatobi O/ Atobatele +2 more
TL;DR: In this article , an iris-based age and gender detection system for certain individuals to identify a person in real-time was presented, where deep learning pre-trained networks are adopted to extract features from iris images.
1
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Li Ma,Yunhong Wang,Tieniu Tan +2 more
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