Collaborative Research:SaTC:TTP:Small:DeFake:Deploying a Tool for Robust Deepfake Detection

项目来源

美国国家科学基金(NSF)

项目主持人

Matthew Wright

项目受资助机构

Rochester Institute of Tech

项目编号

2040209

立项年度

2020

立项时间

未公开

研究期限

未知 / 未知

项目级别

国家级

受资助金额

427754.00美元

学科

未公开

学科代码

未公开

基金类别

Standard Grant

关键词

International Research Collab ; Secure&Trustworthy Cyberspace ; SaTC:Secure and Trustworthy Cyberspace ; US-India Collaborative Research ; INDIA ; CONFERENCE AND WORKSHOPS ; SMALL PROJECT ; UNDERGRADUATE EDUCATION ; REU SUPP-Res Exp for Ugrd Supp

参与者

Yu Kong

参与机构

未公开

项目标书摘要:Deepfakes–videos that are generated or manipulated by artificial intelligence–pose a major threat for spreading disinformation,threatening blackmail,and new forms of phishing.They are already widely used in creating non-consensual pornography,and have begun to be used to undermine governments and elections.Even the threat of deepfakes has cast doubts on the authenticity of videos in the news.Journalists,who have a key role in verifying information,especially need help to deal with ever-improving deepfake technology.Recent results on detecting deepfakes are promising,with close to 100%accuracy in lab tests,but few systems are available for real-world use.It is critical to move beyond accuracy on curated datasets and address the needs of journalists who could benefit from these advances.The objective of this transition-to-practice project is to develop the DeFake tool,a system that utilizes advanced machine learning to help journalists detect deepfakes in a way that is robust,intuitive,and provides results that are explainable to the general public.To meet this objective,the project team is engaged in four main tasks:(1)Making the tool robust to new types of deepfakes,and having it show users why a video is fake;(2)Protecting the tool from adversarial examples–small perturbations to a video that are specially crafted to fool detection systems;(3)Working with journalists to understand what they need from the tool,and building an online community to discuss deepfakes and their detection;and(4)Integrating advances from the other tasks into a stable,efficient,and useful tool,and actively disseminating this tool to journalists.The project team is also leveraging visually interesting deepfakes to develop engaging education and outreach efforts,such as a museum-style exhibit on deepfake detection meant for broad audiences of all ages.This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.

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