利用基于lstm分类器的预测误差不一致性检测深度假视频

Irene Amerini, R. Caldelli
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引用次数: 37

摘要

人工智能技术能够构建合成的全新视频或改变现有视频的面部表情,这在文献中得到了有效的证明。识别这种通常被称为Deepfake的新威胁,但由不同的技术组成,是多媒体取证的基础。事实上,这种被操纵的信息可以破坏和容易扭曲公众对某个人或某件事的看法。因此,本文引入了一种新技术,通过利用重编码阶段由于预测误差导致的不一致性来区分合成生成的人像视频和自然生成的人像视频。特别是,基于帧间预测误差的特征已经与能够学习连续帧间时间相关性的长短期记忆(LSTM)模型网络联合研究。初步结果表明,这种基于序列的方法用于区分原始视频和经过处理的视频,突出了有希望的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Prediction Error Inconsistencies through LSTM-based Classifiers to Detect Deepfake Videos
The ability of artificial intelligence techniques to build synthesized brand new videos or to alter the facial expression of already existing ones has been efficiently demonstrated in the literature. The identification of such new threat generally known as Deepfake, but consisting of different techniques, is fundamental in multimedia forensics. In fact this kind of manipulated information could undermine and easily distort the public opinion on a certain person or about a specific event. Thus, in this paper, a new technique able to distinguish synthetic generated portrait videos from natural ones is introduced by exploiting inconsistencies due to the prediction error in the re-encoding phase. In particular, features based on inter-frame prediction error have been investigated jointly with a Long Short-Term Memory (LSTM) model network able to learn the temporal correlation among consecutive frames. Preliminary results have demonstrated that such sequence-based approach, used to distinguish between original and manipulated videos, highlights promising performances.
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