论文标题

DeepRhythm:用注意力视觉心跳节奏暴露深泡沫

DeepRhythm: Exposing DeepFakes with Attentional Visual Heartbeat Rhythms

论文作者

Qi, Hua, Guo, Qing, Juefei-Xu, Felix, Xie, Xiaofei, Ma, Lei, Feng, Wei, Liu, Yang, Zhao, Jianjun

论文摘要

随着基于GAN的面部图像和视频生成技术(众所周知的Deepfakes)变得越来越成熟和现实,因此对有效的深击探测器有着紧迫而紧迫的需求。通过监测由于脸部流血引起的微小肤色的周期性变化而使远程视觉光绘画学(PPG)的动机成为可能,我们猜测,在真实面部视频中发现的正常心跳节奏将中断,甚至会在深层视频中被破坏甚至完全破坏,从而使其成为潜在的强大折磨指示。在这项工作中,我们提出了DeepRhanthm,这是一种深层检测技术,该技术通过监测心跳节奏来暴露深击。 DeepRhythm利用双空间的关注来适应动态变化的面部和假类型。对面部福音++和DFDC-Preiview数据集进行了广泛的实验,已经证实了我们的猜想,不仅证明了有效性,还证明了\ emph {deepRhylythm}在不同数据集上通过各种深层捕获技术的产生和多种挑战性挑战性脱机的概括能力。

As the GAN-based face image and video generation techniques, widely known as DeepFakes, have become more and more matured and realistic, there comes a pressing and urgent demand for effective DeepFakes detectors. Motivated by the fact that remote visual photoplethysmography (PPG) is made possible by monitoring the minuscule periodic changes of skin color due to blood pumping through the face, we conjecture that normal heartbeat rhythms found in the real face videos will be disrupted or even entirely broken in a DeepFake video, making it a potentially powerful indicator for DeepFake detection. In this work, we propose DeepRhythm, a DeepFake detection technique that exposes DeepFakes by monitoring the heartbeat rhythms. DeepRhythm utilizes dual-spatial-temporal attention to adapt to dynamically changing face and fake types. Extensive experiments on FaceForensics++ and DFDC-preview datasets have confirmed our conjecture and demonstrated not only the effectiveness, but also the generalization capability of \emph{DeepRhythm} over different datasets by various DeepFakes generation techniques and multifarious challenging degradations.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源