Open Access Open Access  Restricted Access Subscription or Fee Access

BioIDS – A Security Guaranteed System

N. Siranjeevi, B. M. Alaudeen

Abstract


Abstract
Most systems that management access to money transactions, laptop networks, or secured locations determine approved persons by recognizing passwords or personal identification numbers. The weakness of those systems is that unauthorized persons will discover others’ passwords and numbers quite simply and use them while not detection. Biometric identification systems, that use physical options to ascertain a person’s identity, guarantee abundant bigger security than watchword and variety systems. Biometric options like the face or a fingerprint will be keep on a silicon chip in a very MasterCard, as an example, If somebody steals the cardboard and tries to use it, the impostor’s biometric options won't match the options keep within the card, and also the system can forestall the dealing. Statistics area unit automatic strategies of recognizing someone supported a physiological or activity characteristic. Biometric technologies have become the inspiration of an in depth array of extremely secure identification and private verification solutions. One feature, however, generally fails to be actual enough for identification. Think about identical twins, as an example. Their faces alone might not distinguish them. Another disadvantage of victimization only 1 feature is that the chosen feature is not forever legible. As an example, some 5 % of individuals have fingerprints that can't be recorded as a result of {they area unit they’re} obscured by a cut or a scar or are too fine to point out up well in a very photograph. This paper presents a system referred to as BioID that is developed to spot someone victimization totally different features-Face, voice, lip movement, iris recognition, finger, and palm pure mathematics. With its 3 modalities, BioID achieves abundant bigger accuracy than single feature systems.

Keywords: BioID, face, system

Full Text:

PDF

References


Frischholz R., Dieckmann U. BioID: A Multimodal Biometric Identification System, IEEE Comput. 2000; 33(2): 64–8p.

Rowley H.A., Baluja S., Kanade T. Neural Network Based Face Detection, IEEE Trans Pattern Anal Mach Intel. 2007.

Huttenlocher D.P., Klanderman G.A., Rucklidge W.J. Comparing Images Using the Hausdorff Distance, IEEE Trans Pattern Anal Mach Intel. 2008.

Sagem Sécurité and Hitachi unveil multi-modal finger vein and fingerprint device. August 26, 2009.

Hitachi develops a 3mm thin-type finger vein authentication module, March 24, 2009.

Sagem Sécurité and Hitachi combine world-class fingerprint and vein recognition technologies.


Refbacks

  • There are currently no refbacks.