CNN Detection of GAN-Generated Face Images based on Cross-Band Co-occurrences Analysis

M. Barni, Kassem Kallas, Ehsan Nowroozi, B. Tondi
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引用次数: 42

Abstract

Last-generation GAN models allow to generate synthetic images which are visually indistinguishable from natural ones, raising the need to develop tools to distinguish fake and natural images thus contributing to preserve the trustworthiness of digital images. While modern GAN models can generate very high-quality images with no visible spatial artifacts, reconstruction of consistent relationships among colour channels is expectedly more difficult. In this paper, we propose a method for distinguishing GAN-generated from natural images by exploiting inconsistencies among spectral bands, with specific focus on the generation of synthetic face images. Specifically, we use cross-band co-occurrence matrices, in addition to spatial co-occurrence matrices, as input to a CNN model, which is trained to distinguish between real and synthetic faces. The results of our experiments confirm the goodness of our approach which outperforms a similar detection technique based on intra-band spatial co-occurrences only. The performance gain is particularly significant with regard to robustness against post-processing, like geometric transformations, filtering and contrast manipulations.
基于交叉频带共现分析的gan生成人脸图像CNN检测
上一代GAN模型允许生成在视觉上与自然图像无法区分的合成图像,从而提高了开发区分假图像和自然图像的工具的需求,从而有助于保持数字图像的可信度。虽然现代GAN模型可以生成没有可见空间伪像的高质量图像,但重建颜色通道之间的一致关系预计会更加困难。在本文中,我们提出了一种通过利用光谱波段之间的不一致性来区分gan生成与自然图像的方法,并特别关注合成人脸图像的生成。具体来说,除了空间共现矩阵外,我们还使用了跨频带共现矩阵作为CNN模型的输入,该模型被训练以区分真实人脸和合成人脸。我们的实验结果证实了我们的方法的优点,它优于仅基于带内空间共现的类似检测技术。在对后处理(如几何变换、过滤和对比度操作)的鲁棒性方面,性能增益尤其显著。
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