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Model-based approaches for recognising people by the way they walk or run

Model-based approaches for recognising people by the way they walk or run
Model-based approaches for recognising people by the way they walk or run
Using biological traits, such as fingerprints, iris patterns and voice print, in identification and authentication has gained increasing attention due to the demand for a more secure environment. The potential of human walking as a biometric has only attracted interest in the computer vision community since the last decade. Nevertheless, the potential of human running gait as a biometric remains largely unexplored. Here, we propose an approach for an automated non-invasive/markerless person identification system by not only the walking, but also the running gait to explore the potential of these two biomechanically distinct gaits. Two motion models both invariant to walking and running, have been developed based on the concept of harmonic motion. The first is a bilateral symmetric model made up of an upper and a lower pendulum, representing the thigh and the lower leg, joined at the knee. The upper pendulum is simple harmonic motion whilst the lower pendulum uses an empirical model requiring parameter selection for the different gait mode and lacks analytical attributes. The second model has a forced coupled oscillator to describe the knee rotation as legs are considered to be imperfect pendula with energy loss.

The rhythm and pattern of gaits are automatically extracted by a temporal evidence gathering technique with the motion models as the underlying temporal templates. The spatio-temporal characteristics of the gait patterns are described by a Fourier representation, which are in turn used to create unique gait signatures for the purpose of identification. Performance analysis demonstrates the potential of gait as a biometric, with running being more potent. This technique not only performs well in discriminating individuals, but also appears capable of distinguishing the gender and gait mode. Moreover, analysis shows that the knee rotation contributes significantly to discrimination capability.

Based on the hypothesis that human walking and running gaits are intimately related by the musculo-skeletal structure and that the walking pattern is the phase-modulated version of running (or vice versa), a unique mapping/transform between individuals’ walking and running gait is developed, making the signature invariant to gait mode. Furthermore, this mapping can be used alone as a compressed signature or to buttress the original signature to further improve the recognition capability. Then, a generic relationship between walking and running has been investigated via a neural network. Due to the current size of the experimental dataset, the structure of the two signature spaces could not be drawn, at least not by this approach. However, results do suggest its possible existence.

The effect of different camera views is an important application issue. The gait pattern perceived by machine vision at different viewpoints has been investigated. The frequency description of the gait pattern is linearly dependent on the camera sagittal view angle. The changes of both the magnitude and the phase component are symmetric about the fronto-parallel view. This linearity offers a convenient way to map the angular motion obtained from various camera sagittal views to the true motion, for the convenience of gait analysis. More importantly, this linearity can be exploited to develop view invariant gait signatures.

The new and interesting findings of this work not only benefit biometrics research, but may also draw attention from other communities such as biomechanics and graphics applications.
Yam, Chew-Yean
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Yam, Chew-Yean
c3f87635-2c68-4a0d-afb6-997796924695
Nixon, Mark S.
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Carter, John N.
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Yam, Chew-Yean (2002) Model-based approaches for recognising people by the way they walk or run. University of Southampton, Electronics and Computer Science, Doctoral Thesis, 130pp.

Record type: Thesis (Doctoral)

Abstract

Using biological traits, such as fingerprints, iris patterns and voice print, in identification and authentication has gained increasing attention due to the demand for a more secure environment. The potential of human walking as a biometric has only attracted interest in the computer vision community since the last decade. Nevertheless, the potential of human running gait as a biometric remains largely unexplored. Here, we propose an approach for an automated non-invasive/markerless person identification system by not only the walking, but also the running gait to explore the potential of these two biomechanically distinct gaits. Two motion models both invariant to walking and running, have been developed based on the concept of harmonic motion. The first is a bilateral symmetric model made up of an upper and a lower pendulum, representing the thigh and the lower leg, joined at the knee. The upper pendulum is simple harmonic motion whilst the lower pendulum uses an empirical model requiring parameter selection for the different gait mode and lacks analytical attributes. The second model has a forced coupled oscillator to describe the knee rotation as legs are considered to be imperfect pendula with energy loss.

The rhythm and pattern of gaits are automatically extracted by a temporal evidence gathering technique with the motion models as the underlying temporal templates. The spatio-temporal characteristics of the gait patterns are described by a Fourier representation, which are in turn used to create unique gait signatures for the purpose of identification. Performance analysis demonstrates the potential of gait as a biometric, with running being more potent. This technique not only performs well in discriminating individuals, but also appears capable of distinguishing the gender and gait mode. Moreover, analysis shows that the knee rotation contributes significantly to discrimination capability.

Based on the hypothesis that human walking and running gaits are intimately related by the musculo-skeletal structure and that the walking pattern is the phase-modulated version of running (or vice versa), a unique mapping/transform between individuals’ walking and running gait is developed, making the signature invariant to gait mode. Furthermore, this mapping can be used alone as a compressed signature or to buttress the original signature to further improve the recognition capability. Then, a generic relationship between walking and running has been investigated via a neural network. Due to the current size of the experimental dataset, the structure of the two signature spaces could not be drawn, at least not by this approach. However, results do suggest its possible existence.

The effect of different camera views is an important application issue. The gait pattern perceived by machine vision at different viewpoints has been investigated. The frequency description of the gait pattern is linearly dependent on the camera sagittal view angle. The changes of both the magnitude and the phase component are symmetric about the fronto-parallel view. This linearity offers a convenient way to map the angular motion obtained from various camera sagittal views to the true motion, for the convenience of gait analysis. More importantly, this linearity can be exploited to develop view invariant gait signatures.

The new and interesting findings of this work not only benefit biometrics research, but may also draw attention from other communities such as biomechanics and graphics applications.

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More information

Published date: November 2002
Organisations: University of Southampton, Southampton Wireless Group

Identifiers

Local EPrints ID: 339687
URI: http://eprints.soton.ac.uk/id/eprint/339687
PURE UUID: 6451720c-7fd0-433a-b047-44d429691f4f
ORCID for Mark S. Nixon: ORCID iD orcid.org/0000-0002-9174-5934

Catalogue record

Date deposited: 16 Nov 2012 12:32
Last modified: 15 Mar 2024 02:35

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Contributors

Author: Chew-Yean Yam
Thesis advisor: Mark S. Nixon ORCID iD
Thesis advisor: John N. Carter

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