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DeepStego: Privacy-Preserving Natural Language Steganography Using Large Language Models and Advanced Neural Architectures

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dc.contributor.author Kuznetsov, Oleksandr
dc.contributor.author Chernov, Kyrylo
dc.contributor.author Shaikhanova, Aigul
dc.contributor.author Iklassova, Kainizhamal
dc.contributor.author Kozhakhmetova, Dinara
dc.date.accessioned 2026-03-18T07:49:40Z
dc.date.available 2026-03-18T07:49:40Z
dc.date.issued 2025
dc.identifier.citation Kuznetsov, O.; Chernov, K.; Shaikhanova, A.; Iklassova, K.; Kozhakhmetova, D. DeepStego: Privacy-Preserving Natural Language Steganography Using Large Language Models and Advanced Neural Architectures. Computers 2025, 14, 165. https://doi.org/10.3390/ computers14050165 ru
dc.identifier.issn 2073-431X
dc.identifier.other doi.org/10.3390/ computers14050165
dc.identifier.uri http://repository.enu.kz/handle/enu/30517
dc.description.abstract Modern linguistic steganography faces the fundamental challenge of balancing embedding capacity with detection resistance, particularly against advanced AI-based steganalysis. This paper presents DeepStego, a novel steganographic system leveraging GPT-4-omni’s language modeling capabilities for secure information hiding in text. Our approach combines dynamic synonym generation with semantic-aware embedding to achieve superior detection resistance while maintaining text naturalness. Through comprehensive experimentation, DeepStego demonstrates significantly lower detection rates compared to existing methods across multiple state-of-the-art steganalysis techniques. DeepStego supports higher embedding capacities while maintaining strong detection resistance and semantic coherence. The system shows superior scalability compared to existing methods. Our evaluation demonstrates perfect message recovery accuracy and significant improvements in text quality preservation compared to competing approaches. These results establish DeepStego as a significant advancement in practical steganographic applications, particularly suitable for scenarios requiring secure covert communication with high embedding capacity. ru
dc.language.iso en ru
dc.publisher Computers ru
dc.relation.ispartofseries 14, 165;
dc.subject linguistic steganography ru
dc.subject GPT models ru
dc.subject natural language processing ru
dc.subject information hiding ru
dc.subject text generation ru
dc.subject semantic embedding ru
dc.subject covert communication ru
dc.subject steganalysis resistance ru
dc.subject deep learning ru
dc.subject cybersecurity ru
dc.title DeepStego: Privacy-Preserving Natural Language Steganography Using Large Language Models and Advanced Neural Architectures ru
dc.type Article ru


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