An Overview of Multimodal Biometrics Using the Face and Ear

In the recent years, we have witnessed the rapid development of face recognition, though it is still plagued by variations such as facial expressions, pose, and occlusion. In contrast to the face, the ear has a stable 3D structure and is nearly unaffected by aging and expression changes. Both the fa...

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Main Authors: Yichao Ma, Zengxi Huang, Xiaoming Wang, Kai Huang
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2020/6802905
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spelling doaj-ba7236da3b2743b39551f4f4103744402020-11-25T04:03:27ZengHindawi LimitedMathematical Problems in Engineering1563-51472020-01-01202010.1155/2020/68029056802905An Overview of Multimodal Biometrics Using the Face and EarYichao Ma0Zengxi Huang1Xiaoming Wang2Kai Huang3School of Computer and Software EngineeringSchool of Computer and Software EngineeringSchool of Computer and Software EngineeringSchool of Computer and Software EngineeringIn the recent years, we have witnessed the rapid development of face recognition, though it is still plagued by variations such as facial expressions, pose, and occlusion. In contrast to the face, the ear has a stable 3D structure and is nearly unaffected by aging and expression changes. Both the face and ear can be captured from a distance and in a nonintrusive manner, which makes them applicable to a wider range of application domains. Together with their physiological structure and location, the ear can readily serve as supplement to the face for biometric recognition. It has been a trend to combine the face and ear to develop nonintrusive multimodal recognition for improved accuracy, robustness, and security. However, when either the face or the ear suffers from data degeneration, if the fusion rule is fixed or with inferior flexibility, a multimodal system may perform worse than the unimodal system using only the modality with better quality sample. The biometric quality-based adaptive fusion is an avenue to address this issue. In this paper, we present an overview of the literature about multimodal biometrics using the face and ear. All the approaches are classified into categories according to their fusion levels. In the end, we pay particular attention to an adaptive multimodal identification system, which adopts a general biometric quality assessment (BQA) method and dynamically integrates the face and ear via sparse representation. Apart from a refinement of the BQA and fusion weights selection, we extend the experiments for a more thorough evaluation by using more datasets and more types of image degeneration.http://dx.doi.org/10.1155/2020/6802905
collection DOAJ
language English
format Article
sources DOAJ
author Yichao Ma
Zengxi Huang
Xiaoming Wang
Kai Huang
spellingShingle Yichao Ma
Zengxi Huang
Xiaoming Wang
Kai Huang
An Overview of Multimodal Biometrics Using the Face and Ear
Mathematical Problems in Engineering
author_facet Yichao Ma
Zengxi Huang
Xiaoming Wang
Kai Huang
author_sort Yichao Ma
title An Overview of Multimodal Biometrics Using the Face and Ear
title_short An Overview of Multimodal Biometrics Using the Face and Ear
title_full An Overview of Multimodal Biometrics Using the Face and Ear
title_fullStr An Overview of Multimodal Biometrics Using the Face and Ear
title_full_unstemmed An Overview of Multimodal Biometrics Using the Face and Ear
title_sort overview of multimodal biometrics using the face and ear
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1563-5147
publishDate 2020-01-01
description In the recent years, we have witnessed the rapid development of face recognition, though it is still plagued by variations such as facial expressions, pose, and occlusion. In contrast to the face, the ear has a stable 3D structure and is nearly unaffected by aging and expression changes. Both the face and ear can be captured from a distance and in a nonintrusive manner, which makes them applicable to a wider range of application domains. Together with their physiological structure and location, the ear can readily serve as supplement to the face for biometric recognition. It has been a trend to combine the face and ear to develop nonintrusive multimodal recognition for improved accuracy, robustness, and security. However, when either the face or the ear suffers from data degeneration, if the fusion rule is fixed or with inferior flexibility, a multimodal system may perform worse than the unimodal system using only the modality with better quality sample. The biometric quality-based adaptive fusion is an avenue to address this issue. In this paper, we present an overview of the literature about multimodal biometrics using the face and ear. All the approaches are classified into categories according to their fusion levels. In the end, we pay particular attention to an adaptive multimodal identification system, which adopts a general biometric quality assessment (BQA) method and dynamically integrates the face and ear via sparse representation. Apart from a refinement of the BQA and fusion weights selection, we extend the experiments for a more thorough evaluation by using more datasets and more types of image degeneration.
url http://dx.doi.org/10.1155/2020/6802905
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