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首页> 外文期刊>IEEE Transactions on Biometrics, Behavior, and Identity Science >Multispectral Deep Embeddings as a Countermeasure to Custom Silicone Mask Presentation Attacks
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Multispectral Deep Embeddings as a Countermeasure to Custom Silicone Mask Presentation Attacks

机译:多光谱深度嵌入式作为自定义硅胶面罩呈现攻击的对策

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摘要

This work focuses on detecting presentation attacks (PA) mounted using custom silicone masks. Face recognition (FR) systems have been shown to be highly vulnerable to PAs based on such masks. Here we explore the use of multispectral data (color imagery, near infrared (NIR) imagery and thermal imagery) for face presentation attack detection (PAD), specifically against the custom silicone mask attacks. Using a new dataset (XCSMAD) representing 21 custom made masks, we establish the baseline performance of several commonly used face-PAD methods, on the different imaging channels. Considering thermal imagery in particular, our experiments show that low-cost thermal imaging devices are as effective in face-PAD as more expensive thermal cameras, for mask-based attacks. This result reinforces the case for the use of thermal data in face-PAD. We also demonstrate that fusing information from multiple channels leads to significant improvement in face-PAD performance. Finally, we propose a new approach to face-PAD of custom silicone masks using a convolutional neural network (CNN). On individual spectral channels, the proposed approach achieves state-of-the-art results. Using multispectral-fusion, the proposed CNN-based method significantly outperforms the baseline methods. The new dataset and source-code for our experiments is freely available for research purposes.
机译:这项工作侧重于检测使用自定义硅胶掩模安装的呈现攻击(PA)。面部识别(FR)系统已被证明基于此类面具对PAS高度易受影响。在这里,我们探索使用多光谱数据(彩色图像,彩色图像,近红外(NIR)图像和热图像),用于面部呈现攻击检测(垫),特别是针对自定义硅胶掩模攻击。使用新的DataSet(XCSMAD)表示21定制MASKS,我们在不同的成像通道上建立几种常用的面板方法的基线性能。特别是考虑热量图像,我们的实验表明,低成本的热成像装置在面板上具有更昂贵的热摄像机,用于基于掩模的攻击。该结果加强了在面板中使用热数据的情况。我们还证明,来自多个通道的融合信息导致面板性能的显着改善。最后,我们使用卷积神经网络(CNN)提出了一种新的硅胶面罩面部垫。在单独的光谱通道上,所提出的方法实现了最先进的结果。使用多光谱融合,所提出的基于CNN的方法显着优于基线方法。我们实验的新数据集和源代码可用于研究目的。

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