为人脸变形检测分离变形特征

Eduarda Caldeira , Pedro C. Neto , Tiago Gonçalves , Naser Damer , Ana F. Sequeira , Jaime S. Cardoso
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引用次数: 0

摘要

变形攻击一直威胁着生物识别系统,尤其是人脸识别系统。随着时间的推移,这些攻击变得越来越简单,也越来越逼真,因此使用深度学习系统来检测这些攻击的情况也越来越多。与此同时,深度学习模型缺乏可解释性的问题也一直备受关注。对于科学家来说,平衡性能和可解释性一直是一项艰巨的任务。不过,通过利用领域信息和证明一些限制条件,我们开发出了 IDistill,这是一种具有一流性能的可解释方法,它既能提供形态样本上的身份分离信息,也能提供它们对最终预测的贡献。域信息由自动编码器学习,并提炼到分类器系统中,以便教会它分离身份信息。与文献中的其他方法相比,该方法在五个数据库中的三个数据库中的表现优于其他方法,在其余数据库中也具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disentangling morphed identities for face morphing detection

Morphing attacks keep threatening biometric systems, especially face recognition systems. Over time they have become simpler to perform and more realistic, as such, the usage of deep learning systems to detect these attacks has grown. At the same time, there is a constant concern regarding the lack of interpretability of deep learning models. Balancing performance and interpretability has been a difficult task for scientists. However, by leveraging domain information and proving some constraints, we have been able to develop IDistill, an interpretable method with state-of-the-art performance that provides information on both the identity separation on morph samples and their contribution to the final prediction. The domain information is learnt by an autoencoder and distilled to a classifier system in order to teach it to separate identity information. When compared to other methods in the literature it outperforms them in three out of five databases and is competitive in the remaining.

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