Intranet Tools

nb. next round of REF2013 will NOT be using data from eprints.ecs, but the central university REF interface.

RSS 1.0 Feed
RSS 2.0 Feed
Atom Feed
 

The University of Southampton Multi-Biometric Tunnel and introducing a novel 3D gait dataset

Seely, R. D., Samangooei, S., Middleton, L., Carter, J. and Nixon, M. (2008) The University of Southampton Multi-Biometric Tunnel and introducing a novel 3D gait dataset. In: Biometrics: Theory, Applications and Systems, 29th September 2008, Hyatt Regency Crystal City, Washington DC, USA.

Download

[img]
Preview
Published Version
PDF

519Kb

Abstract

This paper presents the University of Southampton Multi-Biometric Tunnel, a constrained environment that is designed with airports and other high throughput environments in mind. It is able to acquire a variety of non-contact biometrics in a non-intrusive manner. The system uses eight synchronised IEEE1394 cameras to capture gait and additional cameras to capture images from the face and one ear, as an individual walks through the tunnel. We demonstrate that it is possible to achieve a 99.6\% correct classification rate and a 4.3\% equal error rate without feature selection using the gait data collected from the system; comparing well with state-of-art approaches. The tunnel acquires data automatically as a subject walks through it and is designed for the collection of very large gait datasets.

Item Type:Conference or Workshop Item
Creator/Authors:
Richard David Seely
Sina Samangooei
Lee Middleton
John Carter
Mark Nixon
Keywords:biometrics gait face ear dataset recognition identification volumetric
Research Group:Current ECS Groups > Communications, Signal Processing and Control
Current ECS Groups > IT Innovation Centre
Old ECS Groups > Information - Signals, Images, Systems
Current ECS Groups > Web and Internet Science
Date:28 September 2008
Information about this record:
Citations:Google Scholar: 12
Downloads (2010):139
ID Code:16970
Last Modified:23 Sep 2011 10:37
Deposited On:08 Dec 2008 11:55 by Seely, Richard

Tools & Metadata

Download Statistics

Last month

Last year

Members of ECS may view the download statistics dashboard for this record.

Corrections

ECS staff and postgraduates may modify this record

  Welcome from Deputy Head of School (Research) Research Prospectus Industrial Partnerships New Research Students Notes for Guidance New Research Students Notes for Guidance
The ECS EPrints Repository supports OAI 2.0 with a base URL of http://eprints.ecs.soton.ac.uk/cgi/oai2

EPrints is free software developed by the University of Southampton to facilitate Open Access to research.
EPrints