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Low-quality facial biometric verification via dictionary-based random pooling

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Low-quality facial biometric verification via dictionary-based random pooling. / Al-Maadeed, Somaya; Bourif, Mehdi; Bouridane, Ahmed et al.
In: Pattern Recognition, Vol. 52, 01.04.2016, p. 238-248.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Al-Maadeed, S, Bourif, M, Bouridane, A & Jiang, R 2016, 'Low-quality facial biometric verification via dictionary-based random pooling', Pattern Recognition, vol. 52, pp. 238-248. https://doi.org/10.1016/j.patcog.2015.09.031

APA

Vancouver

Al-Maadeed S, Bourif M, Bouridane A, Jiang R. Low-quality facial biometric verification via dictionary-based random pooling. Pattern Recognition. 2016 Apr 1;52:238-248. Epub 2015 Nov 9. doi: 10.1016/j.patcog.2015.09.031

Author

Al-Maadeed, Somaya ; Bourif, Mehdi ; Bouridane, Ahmed et al. / Low-quality facial biometric verification via dictionary-based random pooling. In: Pattern Recognition. 2016 ; Vol. 52. pp. 238-248.

Bibtex

@article{6f5b584febcf4a1a8bfd127d9f93d23c,
title = "Low-quality facial biometric verification via dictionary-based random pooling",
abstract = "In the past decade, visual surveillance has emerged as an effective tool in public security applications. Due to the technical limitations of both surveillance cameras and transmission speed, videos collected from surveillance sites are usually of low resolution. Especially, facial images at a distance in surveillance videos are usually at very low quality, making it difficult to carry out automated facial biometric verification. To handle with this challenge, in this work, we introduce dictionary based techniques to cope with low quality facial images, and propose a random pooling scheme to enhance the accuracy of facial biometric verification. In the proposed scheme, a dictionary is first learned from paired low-resolution and high-resolution facial images, and the input low-resolution query face can then be modelled by a set of high-resolution visual words via a dictionary lookup. A random pooling strategy is then applied to select subsets of visual words, and kernel Fisher׳s linear discriminant analysis (k-LDA) is introduced to find the discriminant metrics. The final decision is based on the average over different pooling results. The experiment on three publically available face datasets validated that our proposed scheme can robustly cope with the challenges from low quality facial images, and attained an improved accuracy over all datasets, making our method a promising candidate for facial biometric based security applications.",
keywords = "Facial biometrics, Low resolution, Sparse coding, Random pooling, Kernel LDA, Visual surveillance",
author = "Somaya Al-Maadeed and Mehdi Bourif and Ahmed Bouridane and Richard Jiang",
year = "2016",
month = apr,
day = "1",
doi = "10.1016/j.patcog.2015.09.031",
language = "English",
volume = "52",
pages = "238--248",
journal = "Pattern Recognition",
issn = "0031-3203",
publisher = "Elsevier Ltd",

}

RIS

TY - JOUR

T1 - Low-quality facial biometric verification via dictionary-based random pooling

AU - Al-Maadeed, Somaya

AU - Bourif, Mehdi

AU - Bouridane, Ahmed

AU - Jiang, Richard

PY - 2016/4/1

Y1 - 2016/4/1

N2 - In the past decade, visual surveillance has emerged as an effective tool in public security applications. Due to the technical limitations of both surveillance cameras and transmission speed, videos collected from surveillance sites are usually of low resolution. Especially, facial images at a distance in surveillance videos are usually at very low quality, making it difficult to carry out automated facial biometric verification. To handle with this challenge, in this work, we introduce dictionary based techniques to cope with low quality facial images, and propose a random pooling scheme to enhance the accuracy of facial biometric verification. In the proposed scheme, a dictionary is first learned from paired low-resolution and high-resolution facial images, and the input low-resolution query face can then be modelled by a set of high-resolution visual words via a dictionary lookup. A random pooling strategy is then applied to select subsets of visual words, and kernel Fisher׳s linear discriminant analysis (k-LDA) is introduced to find the discriminant metrics. The final decision is based on the average over different pooling results. The experiment on three publically available face datasets validated that our proposed scheme can robustly cope with the challenges from low quality facial images, and attained an improved accuracy over all datasets, making our method a promising candidate for facial biometric based security applications.

AB - In the past decade, visual surveillance has emerged as an effective tool in public security applications. Due to the technical limitations of both surveillance cameras and transmission speed, videos collected from surveillance sites are usually of low resolution. Especially, facial images at a distance in surveillance videos are usually at very low quality, making it difficult to carry out automated facial biometric verification. To handle with this challenge, in this work, we introduce dictionary based techniques to cope with low quality facial images, and propose a random pooling scheme to enhance the accuracy of facial biometric verification. In the proposed scheme, a dictionary is first learned from paired low-resolution and high-resolution facial images, and the input low-resolution query face can then be modelled by a set of high-resolution visual words via a dictionary lookup. A random pooling strategy is then applied to select subsets of visual words, and kernel Fisher׳s linear discriminant analysis (k-LDA) is introduced to find the discriminant metrics. The final decision is based on the average over different pooling results. The experiment on three publically available face datasets validated that our proposed scheme can robustly cope with the challenges from low quality facial images, and attained an improved accuracy over all datasets, making our method a promising candidate for facial biometric based security applications.

KW - Facial biometrics

KW - Low resolution

KW - Sparse coding

KW - Random pooling

KW - Kernel LDA

KW - Visual surveillance

U2 - 10.1016/j.patcog.2015.09.031

DO - 10.1016/j.patcog.2015.09.031

M3 - Journal article

VL - 52

SP - 238

EP - 248

JO - Pattern Recognition

JF - Pattern Recognition

SN - 0031-3203

ER -