Trans-FD:基于变换器的人脸去变形表征交互

Min Long;Qiangqiang Duan;Le-Bing Zhang;Fei Peng;Dengyong Zhang
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引用次数: 0

摘要

人脸变形攻击旨在利用包含多种生物识别信息的人脸图像欺骗人脸识别系统。事实证明,它对商业人脸识别系统和人类专家构成了重大威胁。尽管近年来提出了大量的人脸变形检测方法来增强人脸识别系统的安全性,但很少有人关注从变形图像中还原共犯身份的问题。本文提出的 Trans-FD 是一种利用变换器表示交互来还原共犯身份的新型模型。为了有效分离共犯的身份,Trans-FD 在分离网络中应用 Transformer 进行表征交互。此外,它还利用 CNN 编码器提取多尺度特征,并通过基于 Transformer 的分离网络在编码器和生成器之间建立跳转连接,为生成器提供详细信息。实验证明,Trans-FD 可以有效地还原同伙的脸部特征,在还原精度和图像质量方面优于之前的研究成果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trans-FD: Transformer-Based Representation Interaction for Face De-Morphing
Face morphing attacks aim to deceive face recognition systems by using a facial image that contains multiple biometric information. It has been demonstrated to pose a significant threat to commercial face recognition systems and human experts. Although a large number of face morphing detection methods have been proposed in recent years to enhance the security of face recognition systems, little attention has been paid to restoring the identity of the accomplice from a morphed image. In this paper, Trans-FD, a novel model that uses Transformer representation interaction to restore the identity of the accomplice, is proposed. To effectively separate the identity of an accomplice, Trans-FD applies Transformer to perform representation interaction in the separation network. Additionally, it utilizes CNN encoders to extract multi-scale features, and it establishes skip connections between the encoder and generator through the Transformer-based separation network to provide detailed information for the generator. Experiments demonstrate that Trans-FD can effectively restore the accomplice’s face and outperforms previous works in terms of restoration accuracy and image quality.
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