深度网络:对深度假体系统发育的检测

Kartik Thakral;Harsh Agarwal;Kartik Narayan;Surbhi Mittal;Mayank Vatsa;Richa Singh
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引用次数: 0

摘要

深度造假已经从一开始的小众技术迅速发展成为创造超现实操纵内容的强大工具。凭借令人信服地操纵视频、图像和音频的能力,深度造假技术可以用来制造假新闻、冒充个人,甚至捏造事件,对公众信任和社会稳定构成重大威胁。该技术已被用于为上述许多应用程序生成深度伪造。在此基础上,引入了深层系统发育的概念。目前,多种深度伪造生成算法也可以按顺序使用,以系统发育的方式创建深度伪造。在这种情况下,需要对深度造假检测、成分模型签名检测和系统发育序列检测性能进行优化。为了解决检测此类深度伪造的挑战,我们提出了DeePhyNet,它执行三个任务:首先区分真实和虚假内容;接下来,它确定用于deepfake创建的生成算法的签名,以确定哪种算法已被用于生成,最后,它还预测用于生成的算法的系统发育。据我们所知,这是第一个在深度假媒体分析中同时执行这三个任务的算法。该研究的另一个贡献是DeePhyV2数据库,该数据库结合了多种深度伪造生成算法,包括最近提出的扩散模型和更长的系统发育序列。它由使用四种不同的生成技术生成的8960个深度假视频组成。多个协议的结果以及与最先进算法的比较表明,所提出的算法在所有三个任务中产生最高的总体分类结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DeePhyNet: Toward Detecting Phylogeny in Deepfakes
Deepfakes have rapidly evolved from their inception as a niche technology into a formidable tool for creating hyper-realistic manipulated content. With the ability to convincingly manipulate videos, images, and audio, deepfake technology can be used to create fake news, impersonate individuals, or even fabricate events, posing significant threats to public trust and societal stability. The technology has already been used to generate deepfakes for a number of the above-listed applications. Extending the complexities, this paper introduces the concept of deepfake phylogeny. Currently, multiple deepfake generation algorithms can also be used sequentially to create deepfakes in a phylogenetic manner. In such a scenario, deepfake detection, ingredient model signature detection, and phylogeny sequence detection performances have to be optimized. To address the challenge of detecting such deepfakes, we propose DeePhyNet, which performs three tasks: it first differentiates between real and fake content; it next determines the signature of the generative algorithm used for deepfake creation to determine which algorithm has been used for generation, and finally, it also predicts the phylogeny of algorithms used for generation. To the best of our knowledge, this is the first algorithm that performs all three tasks together for deepfake media analysis. Another contribution of this research is the DeePhyV2 database to incorporate multiple deepfake generation algorithms including recently proposed diffusion models and longer phylogenetic sequences. It consists of 8960 deepfake videos generated using four different generation techniques. The results on multiple protocols and comparisons with state-of-the-art algorithms demonstrate that the proposed algorithm yields the highest overall classification results across all three tasks.
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