Paper
12 June 2020 Periocular recognition in the wild with learned label smoothing regularization
Yoon Gyo Jung, Jaewoo Park, Leslie Ching Ow Tiong, Andrew Beng Jin Teoh
Author Affiliations +
Proceedings Volume 11519, Twelfth International Conference on Digital Image Processing (ICDIP 2020); 115190T (2020) https://doi.org/10.1117/12.2573072
Event: Twelfth International Conference on Digital Image Processing, 2020, Osaka, Japan
Abstract
Periocular recognition has been gaining attention as one of the promising biometrics as it contains rich information of the ocular, skin and eyes color as well as eyebrow. Present researches of periocular recognition in the wild mainly are based on the convolutional neural networks that are equipped with standard cross-entropy loss. Label smoothing regularization (LSR) has been recognized as an effective regularization technique for generalization improvement. LSR optimizes the network based on a weighted combination of cross-entropy loss and KL divergence of uniform and network prediction distributions. In this paper, we extend LSR to Learned LSR (L2SR) by considering learned smoothen prediction distribution instead of predefined uniform distribution. L2SR outperforms LSR at reducing intra-class variation and, thus, improve the generalization. Extensive experiments on three periocular in the wild benchmarking datasets demonstrate the effectiveness and superiority of our method.
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Yoon Gyo Jung, Jaewoo Park, Leslie Ching Ow Tiong, and Andrew Beng Jin Teoh "Periocular recognition in the wild with learned label smoothing regularization", Proc. SPIE 11519, Twelfth International Conference on Digital Image Processing (ICDIP 2020), 115190T (12 June 2020); https://doi.org/10.1117/12.2573072
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KEYWORDS
Biometrics

Network architectures

Convolutional neural networks

Machine learning

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