基于细粒度特征的多分支深度伪造检测算法

Wenkai Qin, Tianliang Lu, Lu Zhang, Shufan Peng, Da Wan
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引用次数: 0

摘要

随着深度造假技术的快速发展,各类假冒合成内容的真伪迅速增加,给人们的日常生活和社会稳定带来了潜在的安全威胁。目前,大多数算法将deepfake检测定义为一个二分类问题,即首先使用骨干网络提取全局特征,然后将其输入二分类器以区分真假。然而,真假样本之间的差异往往是微妙的和局部的,这种基于全局特征的检测算法在效率和准确性上都不是最优的。为此,为了增强深度伪造样本中伪造细节的提取,我们从细粒度分类的角度出发,提出了一种基于细粒度特征的多分支深度伪造检测算法。首先,为了解决细粒度分类任务中判别特征区域定位的关键问题,我们研究了一种定位多个不同判别区域的方法,并设计了一个轻量级的特征定位模块,通过增强特征映射的最显著部分来获得关键特征表示。其次,采用信息互补的方法,引入关联引导的融合模块,增强不同分支的判别特征信息;最后,我们利用多分支模型中的全局关注模块,改善空间域和通道域信息的跨维交互,增加关键特征区域和特征通道的权重。我们进行了充分的烧蚀实验和对比实验。实验结果表明,与近年来具有代表性的检测算法相比,该算法在face取证++和Celeb-DF-v2数据集上的检测精度和有效性都有所提高,能够取得较好的检测效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Branch Deepfake Detection Algorithm Based on Fine-Grained Features
With the rapid development of deepfake technology, the authenticity of various types of fake synthetic content is increasing rapidly, which brings potential security threats to people's daily life and social stability. Currently, most algorithms define deepfake detection as a binary classification problem, i.e., global features are first extracted using a backbone network and then fed into a binary classifier to discriminate true or false. However, the differences between real and fake samples are often subtle and local, and such global feature-based detection algorithms are not optimal in efficiency and accuracy. To this end, to enhance the extraction of forgery details in deep forgery samples, we propose a multi-branch deepfake detection algorithm based on fine-grained features from the perspective of fine-grained classification. First, to address the critical problem in locating discriminative feature regions in fine-grained classification tasks, we investigate a method for locating multiple different discriminative regions and design a lightweight feature localization module to obtain crucial feature representations by augmenting the most significant parts of the feature map. Second, using information complementation, we introduce a correlation-guided fusion module to enhance the discriminative feature information of different branches. Finally, we use the global attention module in the multi-branch model to improve the cross-dimensional interaction of spatial domain and channel domain information and increase the weights of crucial feature regions and feature channels. We conduct sufficient ablation experiments and comparative experiments. The experimental results show that the algorithm outperforms the detection accuracy and effectiveness on the FaceForensics++ and Celeb-DF-v2 datasets compared with the representative detection algorithms in recent years, which can achieve better detection results.
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