Adversarially Robust Mask Generator: A Secure Encoder Network for Deep Learning-Based Steganography

Paper Details
Manuscript ID: 2126-0415-4851
Vol.: 2 Issue: 4 Pages: 78-87 Apr - 2026 Subject: Computer Science Language: English
ISSN: 3068-1995 Online ISSN: 3068-109X DOI: https://doi.org/10.64823/ijter.2604009
Abstract

We propose the Adversarially Robust Mask Generator (ARMG), a novel encoder network for deep learning-based steganography that simultaneously achieves high embedding fidelity and certifiable security against steganalytic attacks. Traditional steganographic methods often suffer from detectable artifacts or vulnerability to adversarial perturbations, hence limiting their practical deployment. The ARMG addresses these challenges by integrating a U-Net-style mask generator with adversarial training, gradient masking, and Lipschitz-bound certification into a unified framework. The mask generator produces pixel-wise perturbations constrained to preserve visual quality while embedding secret data, whereas a Vision Transformer-based discriminator adversarially trains the system to evade detection. Moreover, the inclusion of a certifiable robustness module ensures stability against input perturbations, providing formal security guarantees absent in prior GAN-based approaches. The proposed method employs residual dense blocks with channel attention for high-capacity embedding and introduces non-differentiable quantization to obfuscate gradients during white-box attacks. Experimental validation demonstrates that ARMG outperforms existing methods in both undetectability and robustness, achieving state-of-the-art performance across multiple steganalytic benchmarks. This work bridges the gap between adversarial robustness and steganographic security, offering a principled solution for real-world applications where both data hiding and resistance to analysis are critical.

Keywords
Adversarially Robust Steganography Mask Generator Network Vision Transformer Discriminator Certifiable Robustness Gradient Masking and Quantization Steganalysis Resistance
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Cite this Article

Kaushik Sinha, Debalina Sinha Jana (2026). Adversarially Robust Mask Generator: A Secure Encoder Network for Deep Learning-Based Steganography. International Journal of Technology & Emerging Research (IJTER), 2(4), 78-87. https://doi.org/10.64823/ijter.2604009

BibTeX
@article{ijter2026212604154851,
  author = {Kaushik Sinha and Debalina Sinha Jana},
  title = {Adversarially Robust Mask Generator: A Secure Encoder Network for Deep Learning-Based Steganography},
  journal = {International Journal of Technology &  Emerging Research },
  year = {2026},
  volume = {2},
  number = {4},
  pages = {78-87},
  doi =  {10.64823/ijter.2604009},
  issn = {3068-109X},
  url = {https://www.ijter.org/article/212604154851/adversarially-robust-mask-generator-a-secure-encoder-network-for-deep-learning-based-steganography},
  abstract = {We propose the Adversarially Robust Mask Generator (ARMG), a novel encoder network for deep learning-based steganography that simultaneously achieves high embedding fidelity and certifiable security against steganalytic attacks. Traditional steganographic methods often suffer from detectable artifacts or vulnerability to adversarial perturbations, hence limiting their practical deployment. The ARMG addresses these challenges by integrating a U-Net-style mask generator with adversarial training, gradient masking, and Lipschitz-bound certification into a unified framework. The mask generator produces pixel-wise perturbations constrained to preserve visual quality while embedding secret data, whereas a Vision Transformer-based discriminator adversarially trains the system to evade detection. Moreover, the inclusion of a certifiable robustness module ensures stability against input perturbations, providing formal security guarantees absent in prior GAN-based approaches. The proposed method employs residual dense blocks with channel attention for high-capacity embedding and introduces non-differentiable quantization to obfuscate gradients during white-box attacks. Experimental validation demonstrates that ARMG outperforms existing methods in both undetectability and robustness, achieving state-of-the-art performance across multiple steganalytic benchmarks. This work bridges the gap between adversarial robustness and steganographic security, offering a principled solution for real-world applications where both data hiding and resistance to analysis are critical.},
  keywords = {Adversarially Robust Steganography, Mask Generator Network, Vision Transformer Discriminator, Certifiable Robustness, Gradient Masking and Quantization, Steganalysis Resistance},
  month = {Apr},
}
Copyright & License

Copyright © 2025 Authors retain the copyright of this article. This article is an open access article distributed under the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.