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Text Steganalysis Based on Capsule Network with Dynamic Routing

机译:基于动力路由的胶囊网络的文本隐星分析

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摘要

With the growth of natural language processing technology, coverless text steganography has attracted the attention of a large number of researchers. Most existing text steganalysis methods are based on traditional neural network to extract and analyze the semantic features of automatically generated steganographic text. However, due to the limitation of traditional neural networks to preserve subtle features, these methods cannot obtain satisfactory results when detecting the differences between steganographic text with low embedding rate and natural text. This paper demonstrates that using a capsule network to detect whether the natural text contains secret information and gets robust and accurate performance. The capsule network extracts and preserves the sematic features of text, analyzes the subtle differences between steganographic text and natural text. To strengthen the generalization of the method, we choose word2vec to vectorize text and use steganographic text generated based on RNN and variable-length coding as the data set for experiments. Experimental results show that detection accuracy of our method can achieve 92% in steganographic text with the low embedding rate (1-3 bit/word), which is about 7% higher than that based on other neural networks; in high embedding rate (4-5 bit/word), the detection accuracy can reach more than 94%.
机译:随着自然语言加工技术的增长,无覆盖的文本隐写术引起了大量研究人员的注意。大多数现有文本隐性分解方法基于传统的神经网络来提取和分析自动生成的隐写文本的语义特征。然而,由于传统神经网络的保护性地保护微妙特征,这些方法在检测到具有低嵌入率和自然文本的隐性文本之间的差异时不能获得令人满意的结果。本文展示了使用胶囊网络来检测自然文本是否包含秘密信息并获得强大和准确的性能。胶囊网络提取并保留文本的语义特征,分析了隐写文本和自然文本之间的微妙差异。为了加强该方法的概括,我们选择Word2VEC以向矢量化文本,并使用基于RNN和可变长度编码生成的隐写文本作为实验的数据集。实验结果表明,我们方法的检测精度可以在带有低嵌入率(1-3位/字)的隐写率(1-3位/字)中达到92%,比基于其他神经网络的嵌入率(1-3位/字)高约7%;在高嵌入率(4-5位/字)中,检测精度可以达到94%以上。

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