Face forgery by deepfake is widely spread over the internet and has raised severe societal concerns. Recently, how to detect such forgery contents has become a hot research topic and many deepfake detection methods have been proposed. Most of them model deepfake detection as a vanilla binary classification problem, i.e, first use a backbone network to extract a global feature and then feed it into a binary classifier (real/fake). But since the difference between the real and fake images in this task is often subtle and local, we argue this vanilla solution is not optimal. In this paper, we instead formulate deepfake detection as a fine-grained classification problem and propose a new multi-attentional deepfake detection network. Specifically, it consists of three key components: 1) multiple spatial attention heads to make the network attend to different local parts; 2) textural feature enhancement block to zoom in the subtle artifacts in shallow features; 3) aggregate the low-level textural feature and high-level semantic features guided by the attention maps. Moreover, to address the learning difficulty of this network, we further introduce a new regional independence loss and an attention guided data augmentation strategy. Through extensive experiments on different datasets, we demonstrate the superiority of our method over the vanilla binary classifier counterparts, and achieve state-of-the-art performance.
翻译:由深假伪造的脸脸在互联网上广泛散布,引起严重的社会关注。最近,如何发现此类伪造内容已成为热研究话题,并提出了许多深假检测方法。其中多数模拟深假检测是一个香草二进制分类问题,即先使用主干网络提取一个全球特征,然后将其输入二进制分类器(真实/假造 ) 。但是,由于这一任务中真实图像和假图像之间的差别往往很微妙,而且是地方性的,因此我们认为这种香草解决方案不是最佳的。在本文中,我们将深假检测作为一种细微的分类问题,并提出一个新的多目的深假检测网络。具体地说,它由三个关键组成部分组成:(1) 多个空间关注头,让网络关注不同的地方部分;(2) 在浅色的微妙文物中,增强质谱特性;(3) 汇总受关注地图指导的低层次质质质特征和高层次的语义特征。此外,为了解决这一网络的学习困难,我们进一步引入新的区域独立损失和关注的优越性深藏检测网络,从而展示了我们不同的数据递化方法。