Face manipulation detection has been receiving a lot of attention for the reliability and security of the face images. Recent studies focus on using auxiliary information or prior knowledge to capture robust manipulation traces, which are shown to be promising. As one of the important face features, the face depth map, which has shown to be effective in other areas such as the face recognition or face detection, is unfortunately paid little attention to in literature for detecting the manipulated face images. In this paper, we explore the possibility of incorporating the face depth map as auxiliary information to tackle the problem of face manipulation detection in real world applications. To this end, we first propose a Face Depth Map Transformer (FDMT) to estimate the face depth map patch by patch from a RGB face image, which is able to capture the local depth anomaly created due to manipulation. The estimated face depth map is then considered as auxiliary information to be integrated with the backbone features using a Multi-head Depth Attention (MDA) mechanism that is newly designed. Various experiments demonstrate the advantage of our proposed method for face manipulation detection.
翻译:脸部操纵图像的可靠性和安全性一直受到很多关注。 最近的研究侧重于使用辅助信息或先前知识捕捉强力操纵痕迹,事实证明这些痕迹很有希望。作为重要的面貌特征之一,在脸部识别或面部检测等其他领域显示有效的面部深度地图不幸在文献中很少注意探测被操纵的脸部图像。在本文中,我们探索了将面部深度地图作为辅助信息以解决真实世界应用程序中面部操纵检测问题的可能。为此,我们首先建议使用面部深度地图变换器(FDMT)从 RGB 脸部图像中补足地估算面部深度地图补丁,该图能够捕捉到因操作而产生的局部深度异常。然后,估计面部深度地图被视为辅助信息,用新设计的多头深度关注机制与骨干特征相结合。各种实验展示了我们拟议的面部操纵检测方法的优势。