Proceedings of the 6th ACM Workshop on Information Hiding and Multimedia Security 2018
DOI: 10.1145/3206004.3206011
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CNN-based Steganalysis of MP3 Steganography in the Entropy Code Domain

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Cited by 29 publications
(17 citation statements)
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“…The approach uses LSF (line spectral frequencies) parameters as a cue of audio type. Wang et al [29] presents an effective steganalytic scheme based on CNN for detecting MP3 steganography in the entropy code domain. The above all focused on static audio file and can't be directly applied to stream media carrier.…”
Section: B Deep Learning Based Steganalysis Methods In Voipmentioning
confidence: 99%
“…The approach uses LSF (line spectral frequencies) parameters as a cue of audio type. Wang et al [29] presents an effective steganalytic scheme based on CNN for detecting MP3 steganography in the entropy code domain. The above all focused on static audio file and can't be directly applied to stream media carrier.…”
Section: B Deep Learning Based Steganalysis Methods In Voipmentioning
confidence: 99%
“…[134] proposed a method based on Deep Residual Network for steganalysis which uses the spectrogram as the main feature to detect steganography schemes in different embedding domains for AAC and MP3. In [135], a CNN based steganalysis method was proposed for MP3 Steganography in the Entropy Code Domain. Recently, deep RNN models were employed for DNA steganography by [136].…”
Section: H Deep Learning For Steganalysis and Steganographymentioning
confidence: 99%
“…In this paper, we use a recently proposed general steganalysis method that takes the quantified modified DCT (QMDCT) coefficients matrix as the input of a convolutional neural network (CNN) [31] to analyze if the audio signal have been embedded hidden information. The CNN model is trained with the default configuration and dataset in [31]. Then the 200 original and stego audios are analyzed by the model.…”
Section: Steganalysismentioning
confidence: 99%