Yashasvi Baweja, Poojan Oza, Pramuditha Perera, Vishal M. Patel
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引用次数: 26
Abstract
Anomaly detection-based spoof attack detection is a recent development in face Presentation Attack Detection (fPAD), where a spoof detector is learned using only non-attacked images of users. These detectors are of practical importance as they are shown to generalize well to new attack types. In this paper, we present a deep-learning solution for anomaly detection-based spoof attack detection where both classifier and feature representations are learned together end-to-end. First, we introduce a pseudo-negative class during training in the absence of attacked images. The pseudo-negative class is modeled using a Gaussian distribution whose mean is calculated by a weighted running mean. Secondly, we use pairwise confusion loss to further regularize the training process. The proposed approach benefits from the representation learning power of the CNNs and learns better features for fPAD task as shown in our ablation study. We perform extensive experiments on four publicly available datasets: Replay-Attack, Rose-Youtu, OULU-NPU and Spoof in Wild to show the effectiveness of the proposed approach over the previous methods. Code is available at: https://github.com/yashasvi97/IJCB2020_anomaly
基于异常检测的欺骗攻击检测是人脸呈现攻击检测(fPAD)的最新发展,其中欺骗检测器仅使用未受攻击的用户图像来学习。这些检测器具有实际意义,因为它们被证明可以很好地推广到新的攻击类型。在本文中,我们提出了一种基于异常检测的欺骗攻击检测的深度学习解决方案,其中分类器和特征表示端到端一起学习。首先,在没有攻击图像的情况下,我们在训练中引入伪负类。伪负类使用高斯分布建模,其均值由加权运行均值计算。其次,我们使用两两混淆损失来进一步规范训练过程。我们的消融研究表明,所提出的方法受益于cnn的表征学习能力,可以更好地学习fPAD任务的特征。我们在四个公开可用的数据集上进行了广泛的实验:Replay-Attack, Rose-Youtu, OULU-NPU和Spoof in Wild,以显示所提出方法相对于以前方法的有效性。代码可从https://github.com/yashasvi97/IJCB2020_anomaly获得