Towards Generalization in Deepfake Detection

L. Verdoliva
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Abstract

In recent years there have been astonishing advances in AI-based synthetic media generation. Thanks to deep learning-based approaches it is now possible to generate data with a high level of realism. While this opens up new opportunities for the entertainment industry, it simultaneously undermines the reliability of multimedia content and supports the spread of false or manipulated information on the Internet. This is especially true for human faces, allowing to easily create new identities or change only some specific attributes of a real face in a video, so-called deepfakes. In this context, it is important to develop automated tools to detect manipulated media in a reliable and timely manner. This talk will describe the most reliable deep learning-based approaches for detecting deepfakes, with a focus on those that enable domain generalization [1]. The results will be presented on challenging datasets [2,3] with reference to realistic scenarios, such as the dissemination of manipulated images and videos on social networks. Finally, new possible directions will be outlined.
面向深度伪造检测的泛化
近年来,基于人工智能的合成媒体产生取得了惊人的进展。由于基于深度学习的方法,现在可以生成具有高真实感的数据。虽然这为娱乐业开辟了新的机会,但同时也破坏了多媒体内容的可靠性,并支持虚假或被操纵的信息在互联网上传播。这对于人脸来说尤其如此,可以很容易地创建新的身份,或者只改变视频中真实人脸的某些特定属性,即所谓的深度造假。在这种情况下,重要的是开发自动化工具,以可靠和及时的方式检测被操纵的媒体。本次演讲将描述用于检测深度伪造的最可靠的基于深度学习的方法,重点是那些能够实现领域泛化的方法[1]。研究结果将在具有挑战性的数据集[2,3]上展示,并参考现实场景,例如在社交网络上传播被操纵的图像和视频。最后,将概述新的可能方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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