基于多通道自编码器特征的域自适应鲁棒人脸抗欺骗

O. Nikisins, Anjith George, S. Marcel
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引用次数: 27

摘要

虽然人脸识别系统的性能在过去十年中有了显着提高,但它们被证明极易受到表示攻击(欺骗)。人脸呈现攻击检测(PAD)领域的大部分研究都集中在提高系统在单一数据库中的性能上。Face PAD数据集通常是用RGB相机捕获的,并且真实样本和演示攻击工具的数量都非常有限。在这些数据上训练人脸PAD系统会导致性能不佳,即使在封闭的场景中,特别是涉及复杂攻击时。我们探索了两种途径来提高人脸PAD系统的性能,以抵御具有挑战性的攻击。首先,通过使用多通道(RGB、Depth和NIR)数据,这在许多量产设备中仍然很容易获得。其次,我们开发了一种新的基于Autoencoders + MLP的人脸PAD算法。此外,本文提出了域自适应技术,将人脸外观知识从RGB转移到多通道域,而不是收集更多的数据来训练所提出的深度体系结构。我们还证明,学习单个面部区域的特征比学习整个面部的特征更具辨别性。所提出的系统在最近公开可用的多通道PAD数据库上进行了测试,该数据库具有各种各样的表示攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domain Adaptation in Multi-Channel Autoencoder based Features for Robust Face Anti-Spoofing
While the performance of face recognition systems has improved significantly in the last decade, they are proved to be highly vulnerable to presentation attacks (spoofing). Most of the research in the field of face presentation attack detection (PAD), was focused on boosting the performance of the systems within a single database. Face PAD datasets are usually captured with RGB cameras, and have very limited number of both bona-fide samples and presentation attack instruments. Training face PAD systems on such data leads to poor performance, even in the closed-set scenario, especially when sophisticated attacks are involved. We explore two paths to boost the performance of the face PAD system against challenging attacks. First, by using multichannel (RGB, Depth and NIR) data, which is still easily accessible in a number of mass production devices. Second, we develop a novel Autoencoders + MLP based face PAD algorithm. Moreover, instead of collecting more data for training of the proposed deep architecture, the domain adaptation technique is proposed, transferring the knowledge of facial appearance from RGB to multi-channel domain. We also demonstrate, that learning the features of individual facial regions, is more discriminative than the features learned from an entire face. The proposed system is tested on a very recent publicly available multi-channel PAD database with a wide variety of presentation attacks.
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