论文标题

FrameProv:朝向端到端的视频出处

FrameProv: Towards End-To-End Video Provenance

论文作者

Ahmed-Rengers, Mansoor

论文摘要

视频提要通常被故意用作证据,例如CCTV录像。但是通常,在整个公众眼中,假定事件的镜头的存在被认为是事实证明。鉴于存在易于使用的编辑工具,并且可以使用机器学习来制造整个视频供稿,这代表了社会脆弱性。而且,正如最近的虚假新闻和假色情视频所表明的那样,这不仅仅是一个学术问题,因此被积极利用。我认为这种剥削只会变得更加阴险。在该职位论文中,我介绍了一个长期项目,旨在通过将值得信赖的组件嵌入视频传输链中来减轻某些最令人毛骨悚然的操纵形式。与较早的作品不同,我并不是要进行篡改检测或其他形式的取证 - 我认为面对必要的编辑和压缩的现实必定会失败 - 相反,此处的目的是为视频发布者提供一种证明视频供稿的完整性以及使他们可能已经执行的任何编辑的方法。为此,我提出了一种新颖的数据结构,一种视频编辑语言和支持基础架构,从相机传感器到观看器提供端到端视频出处。我已经实施了该系统的原型,并与记者和视频编辑进行了对话,讨论了将此想法介绍给主流的最佳方法。

Video feeds are often deliberately used as evidence, as in the case of CCTV footage; but more often than not, the existence of footage of a supposed event is perceived as proof of fact in the eyes of the public at large. This reliance represents a societal vulnerability given the existence of easy-to-use editing tools and means to fabricate entire video feeds using machine learning. And, as the recent barrage of fake news and fake porn videos have shown, this isn't merely an academic concern, it is actively been exploited. I posit that this exploitation is only going to get more insidious. In this position paper, I introduce a long term project that aims to mitigate some of the most egregious forms of manipulation by embedding trustworthy components in the video transmission chain. Unlike earlier works, I am not aiming to do tamper detection or other forms of forensics -- approaches I think are bound to fail in the face of the reality of necessary editing and compression -- instead, the aim here is to provide a way for the video publisher to prove the integrity of the video feed as well as make explicit any edits they may have performed. To do this, I present a novel data structure, a video-edit specification language and supporting infrastructure that provides end-to-end video provenance, from the camera sensor to the viewer. I have implemented a prototype of this system and am in talks with journalists and video editors to discuss the best ways forward with introducing this idea to the mainstream.

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