Effective and Fast DeepFake Detection Method Based on Haar Wavelet Transform

M. Younus, T. Hasan
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引用次数: 18

Abstract

DeepFake using Generative Adversarial Networks (GANs) tampered videos reveals a new challenge in today’s life. With the inception of GANs, generating high-quality fake videos becomes much easier and in a very realistic manner. Therefore, the development of efficient tools that can automatically detect these fake videos is of paramount importance. The proposed DeepFake detection method takes the advantage of the fact that current DeepFake generation algorithms cannot generate face images with varied resolutions, it is only able to generate new faces with a limited size and resolution, a further distortion and blur is needed to match and fit the fake face with the background and surrounding context in the source video. This transformation causes exclusive blur inconsistency between the generated face and its background in the outcome DeepFake videos, in turn, these artifacts can be effectively spotted by examining the edge pixels in the wavelet domain of the faces in each frame compared to the rest of the frame. A blur inconsistency detection scheme relied on the type of edge and the analysis of its sharpness using Haar wavelet transform as shown in this paper, by using this feature, it can determine if the face region in a video has been blurred or not and to what extent it has been blurred. Thus will lead to the detection of DeepFake videos. The effectiveness of the proposed scheme is demonstrated in the experimental results where the “UADFV” dataset has been used for the evaluation, a very successful detection rate with more than 90.5% was gained.
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基于Haar小波变换的高效快速深度假信号检测方法
DeepFake使用生成对抗网络(gan)篡改视频,揭示了当今生活中的新挑战。随着gan的出现,生成高质量的假视频变得更加容易,而且非常逼真。因此,开发能够自动检测这些虚假视频的高效工具至关重要。本文提出的DeepFake检测方法利用了现有DeepFake生成算法无法生成不同分辨率的人脸图像的缺点,只能生成具有有限尺寸和分辨率的新人脸,需要进一步的失真和模糊来匹配和拟合假人脸与源视频中的背景和周围环境。这种转换导致生成的人脸与其背景在结果DeepFake视频中产生排他模糊不一致,反过来,这些伪影可以通过检查每帧中人脸的小波域中的边缘像素与帧的其余部分相比来有效地发现。本文提出了一种基于边缘类型及其Haar小波变换的清晰度分析的模糊不一致检测方案,利用这一特征来判断视频中人脸区域是否被模糊以及模糊的程度。这样就会导致对DeepFake视频的检测。利用“UADFV”数据集进行评估的实验结果证明了该方案的有效性,获得了超过90.5%的成功检测率。
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