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CNN-Based Anomaly Detection For Face Presentation Attack Detection With Multi-Channel Images

机译:基于CNN的异常检测面部呈现攻击检测与多通道图像

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Recently, face recognition systems have received significant attention, and there have been many works focused on presentation attacks (PAs). However, the generalization capacity of PAs is still challenging in real scenarios, as the attack samples in the training database may not cover all possible PAs. In this paper, we propose to perform the face presentation attack detection (PAD) with multi-channel images using the convolutional neural network based anomaly detection. Multi-channel images endow us with rich information to distinguish between different mode of attacks, and the anomaly detection based technique ensures the generalization performance. We evaluate the performance of our methods using the wide multi-channel presentation attack (WMCA) dataset.
机译:最近,面部识别系统得到了重大关注,并且有许多作品专注于演示攻击(PAS)。然而,PA的泛化容量在实际情况下仍然具有挑战性,因为培训数据库中的攻击样本可能无法涵盖所有​​可能的PAS。在本文中,我们建议使用基于卷积神经网络的异常检测来执行具有多通道图像的面部呈现攻击检测(PAD)。多通道图像赋予我们丰富的信息来区分不同的攻击模式,并且基于异常的检测技术确保了泛化性能。我们使用宽多通道呈现攻击(WMCA)数据集来评估我们的方法的性能。

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