Hybrid convolutional neural network architecture driven by residual features for steganalysis of spatial steganographic algorithms
The goal of steganalysis is to unearth a concealed message hidden inside an innocent carrier by steganography. Steganography in the hands of unlawful people can pose a great threat to society. Secret message is embedded as a noise (residue) which silently disrupts the statistical nature of the carri...
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description | The goal of steganalysis is to unearth a concealed message hidden inside an innocent carrier by steganography. Steganography in the hands of unlawful people can pose a great threat to society. Secret message is embedded as a noise (residue) which silently disrupts the statistical nature of the carrier without visual transformation. For the purpose of unearthing covert communication, modeling this noise (residue) is a crucial factor. In this paper, a hybrid deep learning framework is proposed with convolutional neural network (CNN) to emphasize the need for residual based investigation for digital image steganalysis. In order to model the noise residuals, five types of handcrafted features are extracted, in which the first four types rely on acquiring noise residuals based on filtering by linear and nonlinear filters, and the fifth type relies on residual acquisition method based on Empirical Mode Decomposition (EMD). The extracted features are categorized using a robust CNN with a new parallel architecture that is capable of learning intricate details from input features to classify it as cover or stego. Mostly CNNs are trained with raw images, but in the proposed method, the 1-dimensional residual features are stacked into 2-dimensional grid and are then used to train the CNN. Three spatial content-adaptive and four spatial non-content-adaptive algorithms are used to evaluate the performance of the proposed architecture. The experimental results show the versatility and robustness of the proposed hybrid architecture towards these algorithms when compared to existing state-of-the-art steganalytic methods. A practical issue prevalent in deploying steganalysis in real-world is ‘mismatch scenario,’ and based on the experimentation done in this paper, the proposed architecture performs well under stego algorithm mismatch and payload mismatch scenarios. |
doi_str_mv | 10.1007/s00521-021-05837-7 |
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In order to model the noise residuals, five types of handcrafted features are extracted, in which the first four types rely on acquiring noise residuals based on filtering by linear and nonlinear filters, and the fifth type relies on residual acquisition method based on Empirical Mode Decomposition (EMD). The extracted features are categorized using a robust CNN with a new parallel architecture that is capable of learning intricate details from input features to classify it as cover or stego. Mostly CNNs are trained with raw images, but in the proposed method, the 1-dimensional residual features are stacked into 2-dimensional grid and are then used to train the CNN. Three spatial content-adaptive and four spatial non-content-adaptive algorithms are used to evaluate the performance of the proposed architecture. The experimental results show the versatility and robustness of the proposed hybrid architecture towards these algorithms when compared to existing state-of-the-art steganalytic methods. 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In order to model the noise residuals, five types of handcrafted features are extracted, in which the first four types rely on acquiring noise residuals based on filtering by linear and nonlinear filters, and the fifth type relies on residual acquisition method based on Empirical Mode Decomposition (EMD). The extracted features are categorized using a robust CNN with a new parallel architecture that is capable of learning intricate details from input features to classify it as cover or stego. Mostly CNNs are trained with raw images, but in the proposed method, the 1-dimensional residual features are stacked into 2-dimensional grid and are then used to train the CNN. Three spatial content-adaptive and four spatial non-content-adaptive algorithms are used to evaluate the performance of the proposed architecture. The experimental results show the versatility and robustness of the proposed hybrid architecture towards these algorithms when compared to existing state-of-the-art steganalytic methods. A practical issue prevalent in deploying steganalysis in real-world is ‘mismatch scenario,’ and based on the experimentation done in this paper, the proposed architecture performs well under stego algorithm mismatch and payload mismatch scenarios.</description><subject>Adaptive algorithms</subject><subject>Algorithms</subject><subject>Artificial Intelligence</subject><subject>Artificial neural networks</subject><subject>Computational Biology/Bioinformatics</subject><subject>Computational Science and Engineering</subject><subject>Computer architecture</subject><subject>Computer Science</subject><subject>Data Mining and Knowledge Discovery</subject><subject>Deep learning</subject><subject>Digital imaging</subject><subject>Experimentation</subject><subject>Feature extraction</subject><subject>Image Processing and Computer Vision</subject><subject>Machine learning</subject><subject>Neural networks</subject><subject>Noise</subject><subject>Nonlinear filters</subject><subject>Original Article</subject><subject>Probability and Statistics in Computer Science</subject><subject>Residues</subject><subject>Steganography</subject><issn>0941-0643</issn><issn>1433-3058</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2021</creationdate><recordtype>article</recordtype><sourceid>BENPR</sourceid><recordid>eNp9kEFLxDAQhYMouK7-AU8Bz9VJ0qbtURZ1hQUvei5pm3azdps6SVf26i83tYI3D8OQN997hEfINYNbBpDeOYCEswimSTKRRukJWbBYiEiE9ylZQB6Hk4zFOblwbgcAscySBflaH0s0Na1sf7Dd6I3tVUd7PeLP8p8W36nCamu8rvyImtZoDrqn5ZGidqYeA9doNZ0cbSxS53WrQsjRGUdtQ92gvAnQrNsW1bA1FVVda9H47d5dkrNGdU5f_e4leXt8eF2to83L0_PqfhNVguU-0pCXoGQmMyZTzivRpEokjZBM5ErVdcYhkXHJ0jqIqeSZCkoleV3nGUtkLpbkZs4d0H6M2vliZ0cMP3UFTyQwGXOYKD5TFVrnUDfFgGav8FgwKKaui7nrAqaZui7SYBKzyQW4bzX-Rf_j-gYU54R9</recordid><startdate>20210901</startdate><enddate>20210901</enddate><creator>Arivazhagan, S.</creator><creator>Amrutha, E.</creator><creator>Sylvia Lilly Jebarani, W.</creator><creator>Veena, S. 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T.</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Hybrid convolutional neural network architecture driven by residual features for steganalysis of spatial steganographic algorithms</atitle><jtitle>Neural computing & applications</jtitle><stitle>Neural Comput & Applic</stitle><date>2021-09-01</date><risdate>2021</risdate><volume>33</volume><issue>17</issue><spage>11465</spage><epage>11485</epage><pages>11465-11485</pages><issn>0941-0643</issn><eissn>1433-3058</eissn><abstract>The goal of steganalysis is to unearth a concealed message hidden inside an innocent carrier by steganography. Steganography in the hands of unlawful people can pose a great threat to society. Secret message is embedded as a noise (residue) which silently disrupts the statistical nature of the carrier without visual transformation. For the purpose of unearthing covert communication, modeling this noise (residue) is a crucial factor. 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subjects | Adaptive algorithms Algorithms Artificial Intelligence Artificial neural networks Computational Biology/Bioinformatics Computational Science and Engineering Computer architecture Computer Science Data Mining and Knowledge Discovery Deep learning Digital imaging Experimentation Feature extraction Image Processing and Computer Vision Machine learning Neural networks Noise Nonlinear filters Original Article Probability and Statistics in Computer Science Residues Steganography |
title | Hybrid convolutional neural network architecture driven by residual features for steganalysis of spatial steganographic algorithms |
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