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<article xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xmlns:ali="http://www.niso.org/schemas/ali/1.0/" article-type="research-article" dtd-version="1.2" xml:lang="en"><front><journal-meta><journal-id journal-id-type="publisher-id">International Journal of Sensors, Wireless Communications and Control</journal-id><journal-title-group><journal-title xml:lang="en">International Journal of Sensors, Wireless Communications and Control</journal-title><trans-title-group xml:lang="ru"><trans-title>International Journal of Sensors, Wireless Communications and Control</trans-title></trans-title-group></journal-title-group><issn publication-format="print">2210-3279</issn><issn publication-format="electronic">2210-3287</issn><publisher><publisher-name xml:lang="en">Bentham Science</publisher-name></publisher></journal-meta><article-meta><article-id pub-id-type="publisher-id">645558</article-id><article-id pub-id-type="doi">10.2174/0122103279296370240529075507</article-id><article-categories><subj-group subj-group-type="toc-heading" xml:lang="en"><subject>Computer and Information Science</subject></subj-group><subj-group subj-group-type="toc-heading" xml:lang="ru"><subject></subject></subj-group><subj-group subj-group-type="article-type"><subject>Research Article</subject></subj-group></article-categories><title-group><article-title xml:lang="en">Image Steganalysis using Deep Convolution Neural Networks: A Literature Survey</article-title></title-group><contrib-group><contrib contrib-type="author"><name><surname>Farooq</surname><given-names>Numrena</given-names></name><email>info@benthamscience.net</email><xref ref-type="aff" rid="aff1"/></contrib><contrib contrib-type="author"><name><surname>Mir</surname><given-names>Roohie</given-names></name><email>info@benthamscience.net</email><xref ref-type="aff" rid="aff1"/></contrib></contrib-group><aff id="aff1"><institution>Department of Computer Science and Engineering, National Institute of Technology Srinagar</institution></aff><pub-date date-type="pub" iso-8601-date="2024-04-01" publication-format="electronic"><day>01</day><month>04</month><year>2024</year></pub-date><volume>14</volume><issue>4</issue><issue-title xml:lang="ru"/><fpage>247</fpage><lpage>264</lpage><history><date date-type="received" iso-8601-date="2025-01-11"><day>11</day><month>01</month><year>2025</year></date></history><permissions><copyright-statement xml:lang="en">Copyright ©; 2024, Bentham Science Publishers</copyright-statement><copyright-year>2024</copyright-year><copyright-holder xml:lang="en">Bentham Science Publishers</copyright-holder><ali:free_to_read xmlns:ali="http://www.niso.org/schemas/ali/1.0/"/></permissions><self-uri xlink:href="https://journals.eco-vector.com/2210-3279/article/view/645558">https://journals.eco-vector.com/2210-3279/article/view/645558</self-uri><abstract xml:lang="en"><p id="idm46466589613968">:Steganography is the technique of hiding data for secret communication in a public media format. The image in which the hidden data is stored is called a stego image. Steganalysis is the process of targeting the methods of steganography to identify, remove, destroy, and exploit the secret data in stego images. The identification of embedded secret data in the image is the basis for steganalysis. The proper selection of the type and composition of cover files contributes to a better embedding. Several steganalysis techniques exist for detecting steganography in the images given. Because of the embedded data, the performance of the steganalysis technique relies on the capacity to retrieve the feature representations to identify the statistical portion of the image. Steganalysis &amp; steganography has experienced tremendous development in recent years with the emergence of Deep Convolution Neural Networks (DCNN). In this paper, we explored the current state of research from the latest systems of image steganalysis based on deep learning. This paper presents different methodologies and frameworks of CNN, the research being carried out on image steganalysis based on deep learning and implementation complexities, and highlights the benefits and limitations of the existing techniques. This study also provides the direction for future research and may serve as a fundamental source for further research in deep learning-based image steganalysis.</p></abstract><kwd-group xml:lang="en"><kwd>Steganography</kwd><kwd>steganalysis</kwd><kwd>deep learning</kwd><kwd>Convolution Neural Network (CNN)</kwd><kwd>embedded data</kwd><kwd>cybersecurity.</kwd></kwd-group></article-meta></front><body></body><back><ref-list><ref id="B1"><label>1.</label><mixed-citation>Hussain I, Zeng J. A survey on deep convolutional neural networks for image steganography and steganalysis. 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