ED4:用于深度伪造检测的显式数据级去偏。

IF 13.7
Jikang Cheng;Ying Zhang;Qin Zou;Zhiyuan Yan;Chao Liang;Zhongyuan Wang;Chen Li
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引用次数: 0

摘要

从有限的数据中学习固有偏差被认为是具有泛化性的深度假检测失败的主要原因。除了发现的内容和特定伪造偏差外,我们还发现了一种新的空间偏差,即检测器会惰性地预测出现在图像中心的观察结构伪造线索,这也会导致现有方法的泛化性差。我们提出了ED4,一个简单而有效的策略,在一个统一的框架中明确地在数据层面解决上述偏差,而不是通过网络设计隐含地解开纠缠。特别是,我们开发了ClockMix来产生具有任意样本的面部结构保存混合物,这使得检测器能够从具有更多样化身份,背景,本地操作痕迹以及多个伪造文物共同出现的指数扩展数据分布中学习。我们进一步提出了对抗空间一致性模块(Adversarial Spatial Consistency Module, AdvSCM),以防止在提取特征时存在空间偏差,从而产生空间不一致的图像,并约束其提取的特征保持一致。作为一种模型无关的去偏策略,ED4是即插即用的:它可以与各种深度假探测器集成以获得显着的好处。我们进行了大量的实验来证明它比现有的深度假检测方法的有效性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ED4: Explicit Data-Level Debiasing for Deepfake Detection
Learning intrinsic bias from limited data has been considered the main reason for the failure of deepfake detection with generalizability. Apart from the discovered content and specific-forgery bias, we reveal a novel spatial bias, where detectors inertly anticipate observing structural forgery clues appearing at the image center, also can lead to the poor generalization of existing methods. We present ED4, a simple and effective strategy, to address aforementioned biases explicitly at the data level in a unified framework rather than implicit disentanglement via network design. In particular, we develop ClockMix to produce facial structure preserved mixtures with arbitrary samples, which allows the detector to learn from an exponentially extended data distribution with much more diverse identities, backgrounds, local manipulation traces, and the co-occurrence of multiple forgery artifacts. We further propose the Adversarial Spatial Consistency Module (AdvSCM) to prevent extracting features with spatial bias, which adversarially generates spatial-inconsistent images and constrains their extracted feature to be consistent. As a model-agnostic debiasing strategy, ED4 is plug-and-play: it can be integrated with various deepfake detectors to obtain significant benefits. We conduct extensive experiments to demonstrate its effectiveness and superiority over existing deepfake detection approaches. Code is available at https://github.com/beautyremain/ED4.
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