论文标题

通过3D分解进行伪造检测

Face Forgery Detection by 3D Decomposition

论文作者

Zhu, Xiangyu, Wang, Hao, Fei, Hongyan, Lei, Zhen, Li, Stan Z.

论文摘要

由于假媒体对公众的潜在危害,检测数字面部操纵引起了广泛的关注。但是,最近的进步已经能够将伪造信号降低到低幅度。分解可逆地将图像分解为几个组成元素,是突出隐藏伪造细节的一种有希望的方法。在本文中,我们将面部图像视为基础3D几何和照明环境的干预措施的产生,并在计算机图形视图中将其分解。具体而言,通过将面部图像分解为3D形状,常见的纹理,身份纹理,环境光和直射光,我们发现魔鬼位于直接光和身份纹理中。基于此观察,我们建议利用面部细节,即直接光和身份纹理的结合,作为检测微妙的伪造模式的线索。此外,我们通过有监督的注意机制强调了操纵的区域,并引入了两流结构,以将面部图像和面部细节一起利用为多模式的任务。广泛的实验表明,从面部细节中提取的额外功能的有效性,我们的方法实现了最先进的性能。

Detecting digital face manipulation has attracted extensive attention due to fake media's potential harms to the public. However, recent advances have been able to reduce the forgery signals to a low magnitude. Decomposition, which reversibly decomposes an image into several constituent elements, is a promising way to highlight the hidden forgery details. In this paper, we consider a face image as the production of the intervention of the underlying 3D geometry and the lighting environment, and decompose it in a computer graphics view. Specifically, by disentangling the face image into 3D shape, common texture, identity texture, ambient light, and direct light, we find the devil lies in the direct light and the identity texture. Based on this observation, we propose to utilize facial detail, which is the combination of direct light and identity texture, as the clue to detect the subtle forgery patterns. Besides, we highlight the manipulated region with a supervised attention mechanism and introduce a two-stream structure to exploit both face image and facial detail together as a multi-modality task. Extensive experiments indicate the effectiveness of the extra features extracted from the facial detail, and our method achieves the state-of-the-art performance.

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