Bita-Net: Bi-temporal Attention Network for Facial Video Forgery Detection

Yiwei Ru, Wanting Zhou, Yunfan Liu, Jianxin Sun, Qi Li
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引用次数: 8

Abstract

Deep forgery detection on video data has attracted remarkable research attention in recent years due to its potential in defending forgery attacks. However, existing methods either only focus on the visual evidence within individual images, or are too sensitive to fluctuations across frames. To address these issues, this paper propose a novel model, named Bita-Net, to detect forgery faces in video data. The network design of Bita-Net is inspired by the mechanism of how human beings detect forgery data, i.e. browsing and scrutinizing, which is reflected by the two-pathway architecture of Bita-Net. Concretely, the browsing pathway scans the entire video at a high frame rate to check the temporal consistency, while the scrutinizing pathway focuses on analyzing key frames of the video at a lower frame rate. Furthermore, an attention branch is introduced to improve the forgery detection ability of the scrutinizing pathway. Extensive experiment results demonstrate the effectiveness and generalization ability of Bita-Net on various popular face forensics detection datasets, including FaceForensics++, CelebDF, DeepfakeTIMIT and UADFV.
Bita-Net:用于人脸视频伪造检测的双时间注意网络
视频数据的深度伪造检测由于具有防范伪造攻击的潜力,近年来引起了人们的极大关注。然而,现有的方法要么只关注单个图像中的视觉证据,要么对帧间的波动过于敏感。为了解决这些问题,本文提出了一种新的模型Bita-Net来检测视频数据中的伪造人脸。Bita-Net的网络设计灵感来自于人类检测伪造数据的机制,即浏览和审查,Bita-Net的双通道架构体现了这一点。具体而言,浏览路径以高帧率扫描整个视频以检查时间一致性,而审查路径则以较低帧率分析视频的关键帧。此外,还引入了注意分支,提高了审查路径的伪造检测能力。大量的实验结果证明了Bita-Net在各种流行的人脸取证检测数据集上的有效性和泛化能力,包括FaceForensics++、CelebDF、DeepfakeTIMIT和UADFV。
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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