Advances in deep learning, combined with availability of large datasets, have led to impressive improvements in face presentation attack detection research. However, state-of-the-art face antispoofing systems are still vulnerable to novel types of attacks that are never seen during training. Moreover, even if such attacks are correctly detected, these systems lack the ability to adapt to newly encountered attacks. The post-training ability of continually detecting new types of attacks and self-adaptation to identify these attack types, after the initial detection phase, is highly appealing. In this paper, we enable a deep neural network to detect anomalies in the observed input data points as potential new types of attacks by suppressing the confidence-level of the network outside the training samples' distribution. We then use experience replay to update the model to incorporate knowledge about new types of attacks without forgetting the past learned attack types. Experimental results are provided to demonstrate the effectiveness of the proposed method on two benchmark datasets as well as a newly introduced dataset which exhibits a large variety of attack types.
翻译:深层次学习的进展,加上大量数据集的可用性,使得面对面的演示攻击探测研究有了令人印象深刻的改进。然而,最先进的面部反渗透系统仍然容易受到培训期间从未见过的新式攻击的伤害。此外,即使这类攻击得到正确检测,这些系统也缺乏适应新遇到的攻击的能力。在初步探测阶段之后,不断发现新型攻击和自我调整以确定这些攻击类型的训练后能力非常有吸引力。在本文中,我们使一个深层神经网络能够通过压制培训样品分布之外网络的信任度,发现观测到的投入数据点中的异常现象,作为潜在的新型攻击。我们然后利用经验更新模型,纳入关于新式攻击的知识,同时不忘过去所学的攻击类型。提供了实验结果,以证明两个基准数据集的拟议方法以及新推出的显示大量攻击类型的数据集的有效性。