人脸伪造检测的视觉语义转换器

Yuting Xu, Gengyun Jia, Huaibo Huang, Junxian Duan, R. He
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引用次数: 8

摘要

本文提出了一种基于语义感知特征关系的视觉语义转换器(VST)来检测人脸伪造。在人脸图像中,不同语义解析区域之间存在着内在的特征关系。我们发现人脸伪造算法总是改变这种关系。因此,我们首先使用转换编码器提取上下文特征序列(CFS),以获得最佳的异常特征关系模式。同时,通过人脸解析模块将图像分割为软人脸区域。然后将CFS与软脸区域合并为表示语义区域特征的视觉语义序列(VSS)。将VSS输入到变换解码器中,在变换解码器中对语义区域级的关系进行建模。我们的方法在FF++(Raw)上的准确率为99.58%,在Celeb-DF上的准确率为96.16%。广泛的实验表明,我们的框架优于或可与最先进的检测方法相媲美,特别是对看不见的伪造方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual-Semantic Transformer for Face Forgery Detection
This paper proposes a novel Visual-Semantic Transformer (VST) to detect face forgery based on semantic aware feature relations. In face images, intrinsic feature relations exist between different semantic parsing regions. We find that face forgery algorithms always change such relations. Therefore, we start the approach by extracting Contextual Feature Sequence (CFS) using a transformer encoder to make the best abnormal feature relation patterns. Meanwhile, images are segmented as soft face regions by a face parsing module. Then we merge the CFS and the soft face regions as Visual Semantic Sequences (VSS) representing features of semantic regions. The VSS is fed into the transformer decoder, in which the relations in the semantic region level are modeled. Our method achieved 99.58% accuracy on FF++(Raw) and 96.16% accuracy on Celeb-DF. Extensive experiments demonstrate that our framework outperforms or is comparable with state-of-the-art detection methods, especially towards unseen forgery methods.
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