CNN-based Camera Model Classification and Metric Learning Robust to JPEG Noise Contamination

Mai Uchida, Yoichi Tomioka
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Abstract

Pattern noise-based source camera identification is a promising technology for preventing crimes such as illegal uploading and secret photography. In order to identify the source camera model of an input image, recently, highly accurate camera model classification methods based on convolutional neural networks (CNNs) have been proposed. However, the pattern noise in an image is typically contaminated by JPEG compression, and the degree of contamination depends on the quality factor (Q-Factor). Therefore, it could be that JPEG compression of different Q-factors from that of training samples degenerates the accuracy for CNN-based camera model classification. In this paper, we propose a CNN-based camera model classification and metric learning trained with the JPEG-base a noise suppression technique. In the experiments, we evaluate camera model classification accuracy and metric learning performance for various Q-Factors. We demonstrate that JPEG-based noise suppression improves camera model classification accuracy from 87.25% to 99.89% on average. We also demonstrate JPEG-based noise suppression improves the robustness of metric learning to JPEG contamination.
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基于cnn的相机模型分类和度量学习对JPEG噪声污染的鲁棒性
基于模式噪声的源摄像机识别是一种很有前途的技术,可用于防止非法上传和秘密拍摄等犯罪。为了识别输入图像的源摄像机模型,近年来提出了基于卷积神经网络(cnn)的高精度摄像机模型分类方法。然而,图像中的模式噪声通常会受到JPEG压缩的污染,污染程度取决于质量因子(Q-Factor)。因此,JPEG压缩不同于训练样本的q因子,可能会降低基于cnn的摄像机模型分类的准确率。在本文中,我们提出了一种基于cnn的摄像机模型分类和度量学习,并使用基于jpeg的噪声抑制技术进行训练。在实验中,我们评估了相机模型在不同Q-Factors下的分类精度和度量学习性能。我们证明了基于jpeg的噪声抑制将相机模型分类准确率平均从87.25%提高到99.89%。我们还证明了基于JPEG的噪声抑制提高了度量学习对JPEG污染的鲁棒性。
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