Enabled by recent improvements in generation methodologies, DeepFakes have become mainstream due to their increasingly better visual quality, the increase in easy-to-use generation tools and the rapid dissemination through social media. This fact poses a severe threat to our societies with the potential to erode social cohesion and influence our democracies. To mitigate the threat, numerous DeepFake detection schemes have been introduced in the literature but very few provide a web service that can be used in the wild. In this paper, we introduce the MeVer DeepFake detection service, a web service detecting deep learning manipulations in images and video. We present the design and implementation of the proposed processing pipeline that involves a model ensemble scheme, and we endow the service with a model card for transparency. Experimental results show that our service performs robustly on the three benchmark datasets while being vulnerable to Adversarial Attacks. Finally, we outline our experience and lessons learned when deploying a research system into production in the hopes that it will be useful to other academic and industry teams.
翻译:由于最近对生产方法的改进,DeepFakes由于其视觉质量的提高、易于使用的生成工具的增加和通过社交媒体的迅速传播而成为主流,这一事实对我们有可能破坏社会凝聚力和影响我们民主的社会构成了严重威胁。为了减轻威胁,文献中引入了许多DeepFake探测计划,但很少有人提供可在野生环境中使用的网络服务。我们在本文件中引入了MeVer DeepFake探测服务,这是一个发现图像和视频中深层学习操纵的网络服务。我们介绍拟议的处理管道的设计和实施情况,其中涉及一个模型组合计划,我们给予这一服务一个透明化的模范卡片。实验结果显示,我们的服务在三个基准数据集上表现有力,同时容易受到Aversarial攻击。最后,我们概述了我们在将研究系统投入生产时获得的经验和教训,希望它对其他学术和行业团队有用。