JPEG-Phase-Aware Convolutional Neural Network for Steganalysis of JPEG Images

Mo Chen, V. Sedighi, M. Boroumand, J. Fridrich
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引用次数: 147

Abstract

Detection of modern JPEG steganographic algorithms has traditionally relied on features aware of the JPEG phase. In this paper, we port JPEG-phase awareness into the architecture of a convolutional neural network to boost the detection accuracy of such detectors. Another innovative concept introduced into the detector is the "catalyst kernel" that, together with traditional high-pass filters used to pre-process images allows the network to learn kernels more relevant for detection of stego signal introduced by JPEG steganography. Experiments with J-UNIWARD and UED-JC embedding algorithms are used to demonstrate the merit of the proposed design.
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用于JPEG图像隐写分析的相位感知卷积神经网络
传统上,现代JPEG隐写算法的检测依赖于感知JPEG相位的特征。在本文中,我们将jpeg相位感知移植到卷积神经网络的架构中,以提高此类检测器的检测精度。检测器中引入的另一个创新概念是“催化剂内核”,它与用于预处理图像的传统高通滤波器一起,使网络能够学习与JPEG隐写术引入的隐写信号检测更相关的内核。用J-UNIWARD和ed - jc嵌入算法进行了实验,验证了所提设计的优点。
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