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首页> 外文期刊>Journal of visual communication & image representation >Dynamic texture analysis for detecting fake faces in video sequences
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Dynamic texture analysis for detecting fake faces in video sequences

机译:检测视频序列中假面对的动态纹理分析

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The creation of manipulated multimedia content involving human characters has reached in the last years unprecedented realism, calling for automated techniques to expose synthetically generated faces in images and videos.This work explores the analysis of spatio-temporal texture dynamics of the video signal, with the goal of characterizing and distinguishing real and fake sequences. We propose to build a binary decision on the joint analysis of multiple temporal segments and, in contrast to previous approaches, to exploit the textural dynamics of both the spatial and temporal dimensions. This is achieved through the use of Local Derivative Patterns on Three Orthogonal Planes (LDP-TOP), a compact feature representation known to be an important asset for the detection of face spoofing attacks.Experimental analyses on state-of-the-art datasets of manipulated videos show the discriminative power of such descriptors in separating real and fake sequences, and also identifying the creation method used. Linear Support Vector Machines (SVMs) are used which, despite the lower complexity, yield comparable performance to previously proposed deep models for fake content detection.
机译:在过去几年中,涉及人物人物的被操纵多媒体内容的创建已经达到了前所未有的现实主义,呼吁自动化技术在图像和视频中公开综合生成的面孔。这项工作探讨了视频信号的时空纹理动态的分析特征和区分真实和假序列的目标。我们建议建立关于对多个时间段的联合分析的二元决定,与先前的方法相比,利用空间和时间尺寸的纹理动态。这是通过在三个正交平面(LDP-TOP)上的局部衍生模式来实现的,这是一个紧凑的特征表示,该特征表示是检测面部欺骗攻击的重要资产。关于最先进的数据集的实验分析操纵视频显示在分离真假序列中的这种描述符的辨别力,以及识别使用的创建方法。使用线性支持向量机(SVM),尽管复杂性较低,但在先前提出的伪造内容检测的深层模型中产生相当的性能。

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