Fast Detection of Heterogeneous Parallel Steganography for Streaming Voice

Huili Wang, Zhongliang Yang, Yuting Hu, Zhen Yang, Yongfeng Huang
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引用次数: 1

Abstract

Heterogeneous parallel steganography (HPS) has become a new trend of current streaming media voice steganography, which hides secret information in the frames of streaming media with multiple kinds of orthogonal steganography. Because of the complexity and imperceptibility of HPS, detecting its existence is a challenge for previous steganalysis methods, especially in the case of short sliding window length and low embedding rate. In order to improve the situation, we design a fast and efficient detection method named the key feature extraction and fusion network (KFEF) based on attention mechanism. The proposed model is able to effectively extract the key characteristic of the exceptions due to steganography and fuse the extracted features for different steganographic algorithms used in HPS. Experimental results show that the proposed method significantly improves the classification accuracy in detecting both low embedding rate samples and short segment samples. In addition, the detection time consumption is shorter than other methods and meets real-time requirements. Finally, with the help of attention we can predict the approximate locations of secret information which may bring new ideas to further steganalysis.
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流语音异构并行隐写的快速检测
异构并行隐写(HPS)是当前流媒体语音隐写的新趋势,它利用多种正交隐写技术将秘密信息隐藏在流媒体的帧中。由于HPS的复杂性和不可感知性,对于以往的隐写分析方法来说,检测HPS的存在是一个挑战,特别是在滑动窗长度短、嵌入率低的情况下。为了改善这种情况,我们设计了一种快速高效的基于注意力机制的关键特征提取与融合网络(KFEF)检测方法。该模型能够有效地提取隐写异常的关键特征,并将提取的特征融合到HPS中不同的隐写算法中。实验结果表明,该方法在检测低嵌入率样本和短段样本时均能显著提高分类准确率。检测时间比其他方法短,满足实时性要求。最后,利用注意力可以预测秘密信息的大致位置,为进一步的隐写分析提供新的思路。
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