DISSIMILAR: Towards fake news detection using information hiding, signal processing and machine learning

D. Megías, M. Kuribayashi, A. Rosales, W. Mazurczyk
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引用次数: 2

Abstract

Digital media have changed the classical model of mass media that considers the transmitter of a message and a passive receiver, to a model where users of the digital media can appropriate the contents, recreate, and circulate them. In this context, online social media are a suitable circuit for the distribution of fake news and the spread of disinformation. Particularly, photo and video editing tools and recent advances in artificial intelligence allow non-professionals to easily counterfeit multimedia documents and create deep fakes. To avoid the spread of disinformation, some online social media deploy methods to filter fake content. Although this can be an effective method, its centralized approach gives an enormous power to the manager of these services. Considering the above, this paper outlines the main principles and research approach of the ongoing DISSIMILAR project, which is focused on the detection of fake news on social media platforms using information hiding techniques, in particular, digital watermarking, combined with machine learning approaches.
DISSIMILAR:利用信息隐藏、信号处理和机器学习来检测假新闻
数字媒体已经改变了传统的大众传媒模式,即信息的发送者和被动的接收者,到数字媒体的用户可以占用内容,重新创作和传播它们的模式。在这种背景下,在线社交媒体是假新闻传播和虚假信息传播的合适渠道。特别是,照片和视频编辑工具以及人工智能的最新进展使非专业人员可以轻松伪造多媒体文档并创建深度伪造。为了避免虚假信息的传播,一些在线社交媒体采用了过滤虚假内容的方法。尽管这可能是一种有效的方法,但它的集中方法给了这些服务的管理人员巨大的权力。综上所述,本文概述了正在进行的DISSIMILAR项目的主要原则和研究方法,该项目的重点是使用信息隐藏技术(特别是数字水印)结合机器学习方法检测社交媒体平台上的假新闻。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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