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Learning Double-Compression Video Fingerprints Left From Social-Media Platforms

机译:学习从社交媒体平台留下的双压缩视频指纹

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Social media and messaging apps have become major communication platforms. Multimedia contents promote improved user engagement and have thus become a very important communication tool. However, fake news and manipulated content can easily go viral, so, being able to verify the source of videos and images as well as to distinguish between native and downloaded content becomes essential. Most of the work performed so far on social media provenance has concentrated on images; in this paper, we propose a CNN architecture that analyzes video content to trace videos back to their social network of origin. The experiments demonstrate that stating platform provenance is possible for videos as well as images with very good accuracy.
机译:社交媒体和消息传递应用程序已成为主要的通信平台。 多媒体内容促进了改进的用户参与,从而成为一个非常重要的通信工具。 但是,假新闻和操纵内容可以很容易地进行病毒,因此,能够验证视频和图像的来源,以及区分本机和下载的内容变得必不可少。 迄今为止社交媒体出处的大多数工作都集中在图像上; 在本文中,我们提出了一种CNN架构,用于分析视频内容以追溯视频回到他们的社交源网络。 实验表明,陈述平台出处可以对视频以及具有非常好的图像的图像。

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