论文标题
可追溯且可验证的假新闻检测图像标签
Traceable and Authenticable Image Tagging for Fake News Detection
论文作者
论文摘要
为了防止假新闻图像误导公众,不仅需要验证新闻图像的真实性,还可以追踪虚假新闻的来源,以便为可靠的假新闻检测提供完整的法医链。为了同时实现真实性验证和来源跟踪的目标,我们提出了一种基于脱钩的可逆神经网络(DINN)设计的可追溯且可易待的图像标记方法。设计的Dinn可以同时嵌入双标签,\ textIt {i.e。},可验证的标签和可追溯的标签,在发布前的每个新闻图像中,然后单独提取它们以进行真实性验证和源源跟踪。此外,为了提高双标签提取的准确性,我们设计了一个平行的功能意识投影模型(FAPM),以帮助DINN保留基本标签信息。此外,我们定义了一个距离度量指导的模块(DMGM),该模块学习了不对称的单级表示,以使双标签能够在恶意操作下实现不同的鲁棒性能。在各种数据集和看不见的操作上进行了广泛的实验表明,所提出的标记方法在真实性验证和来源跟踪方面取得了出色的性能,以实现可靠的虚假新闻检测,并且优于先前的工作。
To prevent fake news images from misleading the public, it is desirable not only to verify the authenticity of news images but also to trace the source of fake news, so as to provide a complete forensic chain for reliable fake news detection. To simultaneously achieve the goals of authenticity verification and source tracing, we propose a traceable and authenticable image tagging approach that is based on a design of Decoupled Invertible Neural Network (DINN). The designed DINN can simultaneously embed the dual-tags, \textit{i.e.}, authenticable tag and traceable tag, into each news image before publishing, and then separately extract them for authenticity verification and source tracing. Moreover, to improve the accuracy of dual-tags extraction, we design a parallel Feature Aware Projection Model (FAPM) to help the DINN preserve essential tag information. In addition, we define a Distance Metric-Guided Module (DMGM) that learns asymmetric one-class representations to enable the dual-tags to achieve different robustness performances under malicious manipulations. Extensive experiments, on diverse datasets and unseen manipulations, demonstrate that the proposed tagging approach achieves excellent performance in the aspects of both authenticity verification and source tracing for reliable fake news detection and outperforms the prior works.