Most of previous deepfake detection researches bent their efforts to describe and discriminate artifacts in human perceptible ways, which leave a bias in the learned networks of ignoring some critical invariance features intra-class and underperforming the robustness of internet interference. Essentially, the target of deepfake detection problem is to represent natural faces and fake faces at the representation space discriminatively, and it reminds us whether we could optimize the feature extraction procedure at the representation space through constraining intra-class consistence and inter-class inconsistence to bring the intra-class representations close and push the inter-class representations apart? Therefore, inspired by contrastive representation learning, we tackle the deepfake detection problem through learning the invariant representations of both classes and propose a novel real-centric consistency learning method. We constraint the representation from both the sample level and the feature level. At the sample level, we take the procedure of deepfake synthesis into consideration and propose a novel forgery semantical-based pairing strategy to mine latent generation-related features. At the feature level, based on the centers of natural faces at the representation space, we design a hard positive mining and synthesizing method to simulate the potential marginal features. Besides, a hard negative fusion method is designed to improve the discrimination of negative marginal features with the help of supervised contrastive margin loss we developed. The effectiveness and robustness of the proposed method has been demonstrated through extensive experiments.
翻译:之前大部分深假探测研究都决意要以人类能见的方式描述和区分文物,从而在知识网络中留下偏见,忽视某些关键的不轨现象,造成阶级内部的特征,并表现不力,互联网干扰的强力。从根本上说,深假探测问题的目标是在代表空间中代表自然面貌和假面貌,这是有区别的,它提醒我们,我们是否可以通过限制阶级内部一致性和阶级之间的不一致来优化代表空间的特征提取程序,使阶级内部代表性接近并促使阶级间代表性分化?因此,在对比性代表性学习的启发下,我们通过学习两个阶级的不轨表现来解决深假发现问题,并提出一种新的真正中心一致性学习方法。我们限制抽样层次和特征的体现。在抽样层面,我们考虑深假合成程序,并提出一种新的假造性精度配对战略,以弥补与矿界的消极性能相关特征。在特征方面,根据对比性代表性学习的学习,我们通过学习两个班级的不易变形特征来解决深假探测问题,我们设计出一种新的真正以中心为核心的试验模式,我们设计出一种硬性比重的模拟了边缘性试验方法。