There has been an increasing consensus in learning based face anti-spoofing that the divergence in terms of camera models is causing a large domain gap in real application scenarios. We describe a framework that eliminates the influence of inherent variance from acquisition cameras at the feature level, leading to the generalized face spoofing detection model that could be highly adaptive to different acquisition devices. In particular, the framework is composed of two branches. The first branch aims to learn the camera invariant spoofing features via feature level decomposition in the high frequency domain. Motivated by the fact that the spoofing features exist not only in the high frequency domain, in the second branch the discrimination capability of extracted spoofing features is further boosted from the enhanced image based on the recomposition of the high-frequency and low-frequency information. Finally, the classification results of the two branches are fused together by a weighting strategy. Experiments show that the proposed method can achieve better performance in both intra-dataset and cross-dataset settings, demonstrating the high generalization capability in various application scenarios.
翻译:在以学习为基础,面对反伪的共识日益形成,即相机模型的差异正在给实际应用情景造成巨大的领域差距。我们描述一个框架,消除了地物级购置相机固有的差异影响,从而导致对不同获取装置高度适应的通用面部渗透检测模型。特别是,该框架由两个分支组成。第一个分支的目的是通过高频域的地物分解来学习相机的无差异的溢出特征。受以下事实的驱使,即所提取的spoof特征不仅存在于高频域,在第二分支,基于高频和低频信息的重新组合而增强的图像进一步增强了提取spoof特征的辨别能力。最后,两个分支的分类结果通过加权战略结合在一起。实验表明,拟议的方法可以在高频域内和交叉数据设置中取得更好的性能,表明各种应用情景中的高度普及能力。