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The 2013 face recognition evaluation in mobile environment

Authors :
Gunther, M
Costa-Pazo, A
Ding, C
Boutellaa, E
Chiachia, G
Zhang, H
De Assis Angeloni, M
Struc, V
Khoury, E
Vazquez-Fernandez, E
Tao, D
Bengherabi, M
Cox, D
Kiranyaz, S
De Freitas Pereira, T
Zganec-Gros, J
Argones-Rua, E
Pinto, N
Gabbouj, M
Simoes, F
Dobrisek, S
Gonzalez-Jimenez, D
Rocha, A
Neto, MU
Pavesic, N
Falcao, A
Violato, R
Marcel, S
Gunther, M
Costa-Pazo, A
Ding, C
Boutellaa, E
Chiachia, G
Zhang, H
De Assis Angeloni, M
Struc, V
Khoury, E
Vazquez-Fernandez, E
Tao, D
Bengherabi, M
Cox, D
Kiranyaz, S
De Freitas Pereira, T
Zganec-Gros, J
Argones-Rua, E
Pinto, N
Gabbouj, M
Simoes, F
Dobrisek, S
Gonzalez-Jimenez, D
Rocha, A
Neto, MU
Pavesic, N
Falcao, A
Violato, R
Marcel, S
Publication Year :
2013

Abstract

Automatic face recognition in unconstrained environments is a challenging task. To test current trends in face recognition algorithms, we organized an evaluation on face recognition in mobile environment. This paper presents the results of 8 different participants using two verification metrics. Most submitted algorithms rely on one or more of three types of features: local binary patterns, Gabor wavelet responses including Gabor phases, and color information. The best results are obtained from UNILJ-ALP, which fused several image representations and feature types, and UC-HU, which learns optimal features with a convolutional neural network. Additionally, we assess the usability of the algorithms in mobile devices with limited resources. © 2013 IEEE.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1197449540
Document Type :
Electronic Resource