Towards Generalizable Morph Attack Detection with Consistency Regularization

2023 IEEE INTERNATIONAL JOINT CONFERENCE ON BIOMETRICS, IJCB(2023)

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Abstract
Though recent studies have made significant progress in morph attack detection by virtue of deep neural networks, they often fail to generalize well to unseen morph attacks. With numerous morph attacks emerging frequently, generalizable morph attack detection has gained significant attention. This paper focuses on enhancing the generalization capability of morph attack detection from the perspective of consistency regularization. Consistency regularization operates under the premise that generalizable morph attack detection should output consistent predictions irrespective of the possible variations that may occur in the input space. In this work, to reach this objective, two simple yet effective morph-wise augmentations are proposed to explore a wide space of realistic morph transformations in our consistency regularization. Then, the model is regularized to learn consistently at the logit as well as embedding levels across a wide range of morph-wise augmented images. The proposed consistency regularization aligns the abstraction in the hidden layers of our model across the morph attack images which are generated from diverse domains in the wild. Experimental results demonstrate the superior generalization and robustness performance of our proposed method compared to the state-of-the-art studies.
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Key words
Consistency Regularization,Deep Neural Network,Generalization Performance,Feature Representation,Levels In Model,Data Augmentation,Generative Adversarial Networks,Domain Shift,Target Domain,Cross-entropy Loss Function,Source Domain,Domain Generalization,Image Transformation,Image Compression,Morphing,Types Of Artifacts,Jensen-Shannon Divergence,Style Transfer,Backbone Model,JPEG Compression,Auxiliary Classifier,Post-processing Operations,Face Recognition,Real-world Scenarios,Stochastic Gradient Descent,Minimal Artifacts,Input Image,Training Set,Training Data
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