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Deep Learning Hierarchical Representations for Image Steganalysis

机译:用于图像隐写的深度学习分层表示

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Nowadays, the prevailing detectors of steganographic communication in digital images mainly consist of three steps, i.e., residual computation, feature extraction, and binary classification. In this paper, we present an alternative approach to steganalysis of digital images based on convolutional neural network (CNN), which is shown to be able to well replicate and optimize these key steps in a unified framework and learn hierarchical representations directly from raw images. The proposed CNN has a quite different structure from the ones used in conventional computer vision tasks. Rather than a random strategy, the weights in the first layer of the proposed CNN are initialized with the basic high-pass filter set used in the calculation of residual maps in a spatial rich model (SRM), which acts as a regularizer to suppress the image content effectively. To better capture the structure of embedding signals, which usually have extremely low SNR (stego signal to image content), a new activation function called a truncated linear unit is adopted in our CNN model. Finally, we further boost the performance of the proposed CNN-based steganalyzer by incorporating the knowledge of selection channel. Three state-of-the-art steganographic algorithms in spatial domain, e.g., WOW, S-UNIWARD, and HILL, are used to evaluate the effectiveness of our model. Compared to SRM and its selection-channel-aware variant maxSRMd2, our model achieves superior performance across all tested algorithms for a wide variety of payloads.
机译:如今,数字图像中的隐写通信的主要检测器主要包括三个步骤,即残差计算,特征提取和二进制分类。在本文中,我们提出了一种基于卷积神经网络(CNN)的数字图像隐写分析的替代方法,该方法被证明能够很好地复制和优化这些关键步骤,并且可以从原始图像中直接学习层次表示。所提出的CNN与常规计算机视觉任务中使用的CNN具有截然不同的结构。而不是随机策略,建议的CNN第一层中的权重是通过用于计算空间富裕模型(SRM)中残差图的基本高通滤波器集初始化的,该高通滤波器集可作为正则化器来抑制图像内容有效。为了更好地捕获通常具有极低SNR(隐秘信号到图像内容)的嵌入信号的结构,我们的CNN模型采用了一种新的激活功能,称为截短线性单位。最后,通过结合选择渠道的知识,我们进一步提高了基于CNN的隐写分析器的性能。在空间域中使用三种最先进的隐写算法,例如WOW,S-UNIWARD和HILL,来评估我们模型的有效性。与SRM及其选择通道感知型maxSRMd2相比,我们的模型在针对各种有效载荷的所有经过测试的算法上均实现了卓越的性能。

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