Improving Periocular Recognition by Explicit Attention to Critical Regions in Deep Neural Network

Periocular recognition has been emerging as an effective biometric identification approach especially under less constrained environments where face and/or iris recognition is not applicable. This paper proposes a new deep learning based architecture for robust and more accurate periocular recognition which incorporates attention model to emphasize important regions in the periocular images. The new architecture adopts multi-glance mechanism, in which the intermediate components are configured to incorporate emphasis on important semantical regions, i.e., eyebrow and eye, within a periocular image. By focusing on these regions, the deep convolutional neural network (CNN) is able to learn additional discriminative features which in turn improves the recognition capability of the whole model. The superior performance of our method strongly suggests that eyebrow and eye regions are important for periocular recognition, and deserve special attention during the deep feature learning process. This paper also presents a customized verification oriented loss function, which is shown to provide higher discriminating power than conventional contrastive/triplet loss functions. Extensive experiments on four publicly available databases are performed to evaluate the proposed approach. The reproducible experimental results indicate that our approach significantly outperforms several state-of-the-art methods for the periocular recognition.

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Downloading Codes for Reproducibility

The codes can be downloaded from this weblink. More details are provided in the readme file available in this zipped folder.

 

Reference:

[1]  Zijing Zhao Ajay Kumar, "Improving Periocular Recognition by Explicit Attention to Critical Regions in Deep Neural Network", IEEE Transactions on Information Forensics and Security. pp. 2937-2952, Dec. 2018.

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