In this paper, a new method of training pipeline is discussed to achieve significant performance on the task of anti-spoofing with RGB image. We explore and highlight the impact of using pseudo-depth to pre-train a network that will be used as the backbone to the final classifier. While the usage of pseudo-depth for anti-spoofing task is not a new idea on its own, previous endeavours utilize pseudo-depth simply as another medium to extract features for performing prediction, or as part of many auxiliary losses in aiding the training of the main classifier, normalizing the importance of pseudo-depth as just another semantic information. Through this work, we argue that there exists a significant advantage in training the final classifier can be gained by the pre-trained generator learning to predict the corresponding pseudo-depth of a given facial image, from a Generative Adversarial Network framework. Our experimental results indicate that our method results in a much more adaptable system that can generalize beyond intra-dataset samples, but to inter-dataset samples, which it has never seen before during training. Quantitatively, our method approaches the baseline performance of the current state of the art anti-spoofing models with 15.8x less parameters used. Moreover, experiments showed that the introduced methodology performs well only using basic binary label without additional semantic information which indicates potential benefits of this work in industrial and application based environment where trade-off between additional labelling and resources are considered.
翻译:在本文中,讨论了一种新的培训管道方法,以在用RGB图像进行防污工作上取得显著成绩。我们探讨和强调使用假深度对将用作最终分类的骨干的网络进行预培训的影响。虽然使用假深度对防污任务进行伪深度本身不是一个新想法,但以前的努力仅将假深度用作另一个媒介来提取预测特征,或作为许多辅助性损失的一部分,以协助培训主分类员,使假深度的重要性正常化,只是另一种语义信息。我们通过这项工作认为,在培训最终分类者方面,培训最终分类者方面有很大的优势,通过经过培训的发电机学习,可以从一个Genemental Aversarial网络框架中预测一个特定面部形象的相应假深度。我们的实验结果表明,我们的方法导致一个更适应性更强的系统,除了数据内部样本外,还可以概括化,而是跨数据集样本,在培训中从未看到过这一点。通过这项工作,我们的方法在培训最终分类师培训中具有重大优势。我们的方法是,培训最终分类者在培训中,通过培训后,可以通过经过预先培训的发电机学习来预测一个相应的面面面面面面面面面面图像,预测相应的面面面面面面面面面面面面面面面面面面面面面面面面面面面图的面图的面图的面图,而展示了目前使用的图图的基面面面面面面图的图的图。