The field of face anti-spoofing (FAS) has witnessed great progress with the surge of deep learning. Due to its data-driven nature, existing FAS methods are sensitive to the noise in the dataset, which will hurdle the learning process. However, very few works consider noise modeling in FAS. In this work, we attempt to fill this gap by automatically addressing the noise problem from both label and data perspectives in a probabilistic manner. Specifically, we propose a unified framework called Dual Probabilistic Modeling (DPM), with two dedicated modules, DPM-LQ (Label Quality aware learning) and DPM-DQ (Data Quality aware learning). Both modules are designed based on the assumption that data and label should form coherent probabilistic distributions. DPM-LQ is able to produce robust feature representations without overfitting to the distribution of noisy semantic labels. DPM-DQ can eliminate data noise from `False Reject' and `False Accept' during inference by correcting the prediction confidence of noisy data based on its quality distribution. Both modules can be incorporated into existing deep networks seamlessly and efficiently. Furthermore, we propose the generalized DPM to address the noise problem in practical usage without the need of semantic annotations. Extensive experiments demonstrate that this probabilistic modeling can 1) significantly improve the accuracy, and 2) make the model robust to the noise in real-world datasets. Without bells and whistles, our proposed DPM achieves state-of-the-art performance on multiple standard FAS benchmarks.
翻译:面部防伪(FAS)领域随着深层学习的激增取得了巨大进展。 由于其数据驱动的性质, 现有的FAS方法对数据集中的噪音十分敏感, 这会阻碍学习过程。 但是, 很少有工作考虑FAS的噪音建模。 在这项工作中, 我们试图通过从标签和数据角度以概率方式自动解决噪音问题来填补这一空白。 具体地说, 我们提议了一个称为双概率建模( DPM)的统一框架, 有两个专用模块, DPM-LQ ( label 质量意识学习) 和 DPM- DQ ( 数据质量意识学习) 。 这两个模块的设计依据的假设是, 数据和标签应该形成连贯一致的概率分布。 DPM-LQ 能够不过分适应噪音标签的分布。 DPM-DQ 可以在“ 错误拒绝” 和“ False 接受” 的模型中消除数据噪音, 在推断过程中, 纠正基于质量分布的准确性能的 DPAS 的预测性能让现有数据库更加精确地显示我们的数据。 。 可以在现有的数据库中进行无缝的精确地展示。