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Journal ArticleDOI

BiolD: a multimodal biometric identification system

R.W. Frischholz, +1 more
- 01 Feb 2000 - 
- Vol. 33, Iss: 2, pp 64-68
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TLDR
This article goes into detail about the BioID system functions, explaining the data acquisition and preprocessing techniques for voice, facial, and lip imagery data and the classification principles used for optical features and the sensor fusion options.
Abstract
Biometric identification systems, which use physical features to check a person's identity, ensure much greater security than password and number systems. Biometric features such as the face or a fingerprint can be stored on a microchip in a credit card, for example. A single feature, however, sometimes fails to be exact enough for identification. Another disadvantage of using only one feature is that the chosen feature is not always readable. Dialog Communication Systems (DCS AG) developed BioID, a multimodal identification system that uses three different features-face, voice, and lip movement-to identify people. With its three modalities, BioID achieves much greater accuracy than single-feature systems. Even if one modality is somehow disturbed-for example, if a noisy environment drowns out the voice-the ether two modalities still lead to an accurate identification. This article goes into detail about the system functions, explaining the data acquisition and preprocessing techniques for voice, facial, and lip imagery data. The authors also explain the classification principles used for optical features and the sensor fusion options (the combinations of the three results-face, voice, lip movement-to obtain varying levels of security).

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Citations
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An introduction to biometric recognition

TL;DR: A brief overview of the field of biometrics is given and some of its advantages, disadvantages, strengths, limitations, and related privacy concerns are summarized.
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Handbook of Fingerprint Recognition

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Face Detection

TL;DR: A comprehensive and critical survey of face detection algorithms, ranging from simple edge-based algorithms to composite high-level approaches utilizing advanced pattern recognition methods, is presented.
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Biometrics: a tool for information security

TL;DR: An overview of biometrics is provided and some of the salient research issues that need to be addressed for making biometric technology an effective tool for providing information security are discussed.
Proceedings ArticleDOI

Multimodal biometrics: An overview

TL;DR: The various scenarios that are possible in multimodal biometric systems, the levels of fusion that are plausible and the integration strategies that can be adopted to consolidate information are discussed.
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TL;DR: The person authentication system SESAM is described, which combines three different biometric cues to reach robust identification and verification, and a field test is done to show that this approach leads to a reliable people authentication system.
Book ChapterDOI

SESAM: A Biometric Person Identification System Using Sensor Fusion

TL;DR: The person authentification system SESAM is described, which combines three different biometric cues to reach robust identification and verification, and does a field test to show that this approach leads to a reliable personauthentification system.
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