With the continuous development of deep learning in the field of image generation models, a large number of vivid forged faces have been generated and spread on the Internet. These high-authenticity artifacts could grow into a threat to society security. Existing face forgery detection methods directly utilize the obtained public shared or centralized data for training but ignore the personal privacy and security issues when personal data couldn't be centralizedly shared in real-world scenarios. Additionally, different distributions caused by diverse artifact types would further bring adverse influences on the forgery detection task. To solve the mentioned problems, the paper proposes a novel generalized residual Federated learning for face Forgery detection (FedForgery). The designed variational autoencoder aims to learn robust discriminative residual feature maps to detect forgery faces (with diverse or even unknown artifact types). Furthermore, the general federated learning strategy is introduced to construct distributed detection model trained collaboratively with multiple local decentralized devices, which could further boost the representation generalization. Experiments conducted on publicly available face forgery detection datasets prove the superior performance of the proposed FedForgery. The designed novel generalized face forgery detection protocols and source code would be publicly available.
翻译:由于在图像生成模型领域不断发展深层学习,大量生动的假面孔已经产生并在互联网上传播,这些高真实性人工制品可能发展成对社会安全的威胁。现有的假冒检测方法直接利用获得的公共共享或集中数据进行培训,但当个人数据无法在现实世界情景中集中共享时,忽视个人隐私和安全问题。此外,各种手工艺品类型造成的不同分布将进一步对伪造检测任务产生不利影响。为了解决上述问题,本文件建议采用新的通用的全方位残余联邦学习方法,用于面部伪造检测(FedForgery),设计的变形自动编码旨在学习强有力的歧视性残余特征图,以检测伪造面孔(不同或甚至未知的手工艺品类型)。此外,还引入了一般联合学习战略,以构建分布式的检测模型,与多个地方分散式的分散式设备合作培训,这可以进一步促进代表性的普及。在公开提供的面部伪造检测数据集上进行的实验证明了拟议FedForgery的优异性表现。设计的新通用面部造假检测规程和源码将公开提供。