TY - GEN
T1 - Discriminative transfer learning for single-sample face recognition
AU - Hu, Junlin
AU - Lu, Jiwen
AU - Zhou, Xiuzhuang
AU - Tan, Yap Peng
N1 - Publisher Copyright:
© 2015 IEEE.
PY - 2015/6/29
Y1 - 2015/6/29
N2 - Discriminant analysis is an important technique for face recognition because it can extract discriminative features to classify different persons. However, most existing discriminant analysis methods fail to work for single-sample face recognition (SSFR) because there is only a single training sample per person such that the within-class variation of this person cannot be estimated in such scenario. In this paper, we present a new discriminative transfer learning (DTL) approach for SSFR, where discriminant analysis is performed on a multiple-sample generic training set and then transferred into the single-sample gallery set. Specifically, our DTL learns a feature projection to minimize the intra-class variation and maximize the inter-class variation of samples in the training set, and minimize the difference between the generic training set and the gallery set, simultaneously. Experimental results on three face datasets including the FERET, CAS-PEAL-R1, and LFW datasets are presented to show the efficacy of our method.
AB - Discriminant analysis is an important technique for face recognition because it can extract discriminative features to classify different persons. However, most existing discriminant analysis methods fail to work for single-sample face recognition (SSFR) because there is only a single training sample per person such that the within-class variation of this person cannot be estimated in such scenario. In this paper, we present a new discriminative transfer learning (DTL) approach for SSFR, where discriminant analysis is performed on a multiple-sample generic training set and then transferred into the single-sample gallery set. Specifically, our DTL learns a feature projection to minimize the intra-class variation and maximize the inter-class variation of samples in the training set, and minimize the difference between the generic training set and the gallery set, simultaneously. Experimental results on three face datasets including the FERET, CAS-PEAL-R1, and LFW datasets are presented to show the efficacy of our method.
UR - https://www.scopus.com/pages/publications/84943232193
U2 - 10.1109/ICB.2015.7139095
DO - 10.1109/ICB.2015.7139095
M3 - 会议稿件
AN - SCOPUS:84943232193
T3 - Proceedings of 2015 International Conference on Biometrics, ICB 2015
SP - 272
EP - 277
BT - Proceedings of 2015 International Conference on Biometrics, ICB 2015
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 8th IAPR International Conference on Biometrics, ICB 2015
Y2 - 19 May 2015 through 22 May 2015
ER -