基于卷积神经网络的音频隐写分析

Bolin Chen, Weiqi Luo, Haodong Li
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引用次数: 36

摘要

近年来,深度学习在计算机视觉、音频识别、自然语言处理等多个领域取得了突破性成果。然而,目前有关数字多媒体取证和隐写分析的研究还不多。在本文中,我们设计了一种新颖的卷积神经网络来检测时域的音频隐写。与大多数现有的基于CNN的试图捕获媒体内容的方法不同,我们精心设计了网络层来抑制音频内容,并自适应地捕获基于±1 LSB的隐写术引入的微小修改。此外,我们使用卷积层和最大池化的混合进行子采样,以达到良好的抽象和防止过拟合。在我们的实验中,我们将我们的网络与六种类似的网络架构和两种使用手工制作特征的传统方法进行了比较。在4万个语音音频片段上进行的大量实验结果表明了所提出的卷积网络的有效性。
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Audio Steganalysis with Convolutional Neural Network
In recent years, deep learning has achieved breakthrough results in various areas, such as computer vision, audio recognition, and natural language processing. However, just several related works have been investigated for digital multimedia forensics and steganalysis. In this paper, we design a novel CNN (convolutional neural networks) to detect audio steganography in the time domain. Unlike most existing CNN based methods which try to capture media contents, we carefully design the network layers to suppress audio content and adaptively capture the minor modifications introduced by ±1 LSB based steganography. Besides, we use a mix of convolutional layer and max pooling to perform subsampling to achieve good abstraction and prevent over-fitting. In our experiments, we compared our network with six similar network architectures and two traditional methods using handcrafted features. Extensive experimental results evaluated on 40,000 speech audio clips have shown the effectiveness of the proposed convolutional network.
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