AMP:通过来源对媒体进行认证

P. England, Henrique S. Malvar, E. Horvitz, J. W. Stokes, C. Fournet, A. Chamayou, S. Clebsch, Manuel Costa, S. Erfani, K. Kane, A. Shamis
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引用次数: 14

摘要

图形学和机器学习的进步已经导致了易于使用的修改和合成媒体工具的普遍可用性。这些工具的扩散可能会使人们对所有媒体的真实性产生怀疑。阻止假媒体流动的一种方法是通过机器学习方法检测修改或合成的媒体。虽然检测可能在短期内有所帮助,但我们认为,随着虚假媒体生成质量的不断提高,它注定会失败。很快,无论是人类还是算法都将无法可靠地区分真假内容。因此,确保媒体来源和完整性的管道将是必需的,并且越来越依赖。我们提出了AMP,一个通过认证来源来确保媒体认证的系统。AMP为内容提供者上传的媒体实例创建一个或多个发布者签名的清单。这些清单存储在数据库中,允许从浏览器等应用程序快速查找。作为参考,清单也由使用机密联盟框架(CCF)实现的许可分类账进行注册和签名。CCF采用软件和硬件技术来确保所有已登记舱单的完整性和透明度。AMP通过使用CCF,使媒体提供商联盟能够管理服务,同时使其所有操作可审计。媒体的真实性可以通过浏览器中的可视元素传达给用户,表明AMP清单已被成功定位并验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AMP: authentication of media via provenance
Advances in graphics and machine learning have led to the general availability of easy-to-use tools for modifying and synthesizing media. The proliferation of these tools threatens to cast doubt on the veracity of all media. One approach to thwarting the flow of fake media is to detect modified or synthesized media through machine learning methods. While detection may help in the short term, we believe that it is destined to fail as the quality of fake media generation continues to improve. Soon, neither humans nor algorithms will be able to reliably distinguish fake versus real content. Thus, pipelines for assuring the source and integrity of media will be required---and increasingly relied upon. We present AMP, a system that ensures the authentication of media via certifying provenance. AMP creates one or more publisher-signed manifests for a media instance uploaded by a content provider. These manifests are stored in a database allowing fast lookup from applications such as browsers. For reference, the manifests are also registered and signed by a permissioned ledger, implemented using the Confidential Consortium Framework (CCF). CCF employs both software and hardware techniques to ensure the integrity and transparency of all registered manifests. AMP, through its use of CCF, enables a consortium of media providers to govern the service while making all its operations auditable. The authenticity of the media can be communicated to the user via visual elements in the browser, indicating that an AMP manifest has been successfully located and verified.
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