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Deep Learning-based Quantitative Steganalysis to Detect Motion Vector Embedding of HEVC Videos

机译:基于深度学习的定量隐写分析来检测HEVC视频的运动矢量嵌入

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Generally, the purpose of a steganalysis algorithm is to establish the presence of secret messages in the stego data. However, quantitative steganalyzers can reveal more information about the secret communication by estimating the exact volume of embedded messages. Quantitative steganalysis is a crucial step for breaking secret codes in many practical scenarios. This work concerns about the quantitative steganalysis of videos. Most video steganographical algorithms embed secret messages by modifying the values of motion vector in the compressed domain. We propose a general framework for constructing video quantitative steganalyzers that are able to detect the embedding of motion vectors based on features learned by deep convolutional neural networks. Considering that video structure is quite different from that of image, we focus on the construction of input data matrix for deep convolutional neural network and the robustness of the detection network against different bitrates. Because videos at different embedding rates have different steganalysis features, we use multiple models to extract features for the construction of feature vector. Experimental results have validated the proposed method. Our deep learning-based steganalyzer obtained satisfactory estimation accuracy on testing HEVC videos at multiple embedding rates under different video bitrates.
机译:通常,隐身分析算法的目的是在隐身数据中建立秘密消息的存在。但是,定量隐写分析器可以通过估计嵌入消息的确切数量来揭示有关秘密通信的更多信息。定量隐写分析是在许多实际情况下破解密码的关键步骤。这项工作涉及视频的定量隐写分析。大多数视频隐写算法通过在压缩域中修改运动矢量的值来嵌入秘密消息。我们提出了一个用于构建视频定量隐写分析器的通用框架,该分析器能够基于深度卷积神经网络学习到的特征来检测运动矢量的嵌入。考虑到视频结构与图像结构完全不同,我们重点研究深度卷积神经网络的输入数据矩阵的构造以及检测网络针对不同比特率的鲁棒性。由于处于不同嵌入率的视频具有不同的隐写分析特征,因此我们使用多种模型来提取特征以构建特征向量。实验结果验证了该方法的有效性。我们的基于深度学习的隐写分析器在不同视频比特率下以多种嵌入率测试HEVC视频时,获得了令人满意的估计精度。

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