Linguistic Steganalysis via Densely Connected LSTM with Feature Pyramid

Hao Yang, YongJian Bao, Zhongliang Yang, Sheng Liu, Yongfeng Huang, Saimei Jiao
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引用次数: 17

Abstract

With the growing attention on multimedia security and rapid development of natural language processing technologies, various linguistic steganographic algorithms based on automatic text generation technology have been proposed increasingly, which brings great challenges in maintaining security of cyberspace. The prevailing linguistic steganalysis methods based on neural networks only conduct linguistic steganalysis with feature vectors from last layer of neural network, which may be insufficient for neural linguistic steganalysis. In this paper, we propose a neural linguistic steganalysis scheme based on densely connected Long short-term memory networks (LSTM) with feature pyramids which can incorporate more low level features to detect generative text steganographic algorithms. In the proposed framework, words in text are firstly mapped into semantic space with a hidden representation for better exploitation of the semantic features. Then, stacked bidirectional Long short-term memory networks are ultilized to extract different levels of semantic features. In order to incorporate more low level features from neural networks, we introduced two components: dense connections and feature pyramids to enhance the low level features in feature vectors. Finally, the semantic features from all levels are fused and we use a sigmoid layer to categorize the input text as cover or stego. Experiments showed that the proposed scheme can achieve the state-of-the-art results in detecting recently proposed linguistic steganographic algorithms.
基于特征金字塔的密集连接LSTM语言隐写分析
随着人们对多媒体安全的日益关注和自然语言处理技术的快速发展,各种基于文本自动生成技术的语言隐写算法被越来越多地提出,这给维护网络空间的安全带来了巨大的挑战。目前基于神经网络的语言隐写分析方法仅对神经网络最后一层的特征向量进行语言隐写分析,这可能不足以实现神经语言隐写分析。本文提出了一种基于特征金字塔的长短时记忆网络(LSTM)的神经语言隐写分析方案,该方案可以结合更多的低级特征来检测生成文本隐写算法。在该框架中,首先将文本中的单词映射到具有隐藏表示的语义空间中,以便更好地利用语义特征。然后,利用堆叠的双向长短期记忆网络提取不同层次的语义特征。为了从神经网络中吸收更多的低级特征,我们引入了两个组件:密集连接和特征金字塔来增强特征向量中的低级特征。最后,将所有层次的语义特征进行融合,并使用sigmoid层将输入文本分类为cover或stego。实验结果表明,该方法在检测最近提出的语言隐写算法方面取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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