Alrusaini Othman A
Department of Engineering and Applied Sciences, Applied College, Umm Al-Qura University, Makkah, Saudi Arabia.
Front Artif Intell. 2025 Mar 26;8:1532895. doi: 10.3389/frai.2025.1532895. eCollection 2025.
This study investigates the robustness of deep learning-based steganalysis models against common image transformations because most literature has not paid enough attention to resilience assessment. Current and future applications of steganalysis to guarantee digital security are gaining importance regarding real-world modifications: resizing, compression, cropping, and adding noise. These included the following five basic models: EfficientNet, SRNet, ResNet, Xu-Net, and Yedroudj-Net. We evaluated these models' pre- and post-transformation performances based on various metrics like accuracy, precision, recall, F1-score, and AUC with the BOSSBase dataset. Our results showed that EfficientNet is the most robust among the considered architecture transformations. Still, it also underlined significant degradations for state-of-the-art models, Xu-Net and Yedroudj-Net, especially with added noise. These results indicate the need to develop more robust architectures capable of sustaining real-world image alterations. In practice, it will assist practitioners in choosing models that best suit operational environments and lay the necessary platform for future enhancements in the design of such models. In this regard, in the future, more transformations should be researched with ensemble and adaptive approaches to improve robustness further.
本研究调查了基于深度学习的隐写分析模型对常见图像变换的鲁棒性,因为大多数文献对弹性评估的关注不够。随着现实世界中的图像修改(如调整大小、压缩、裁剪和添加噪声)越来越重要,隐写分析在当前和未来保障数字安全方面的应用也日益重要。这些应用包括以下五种基本模型:EfficientNet、SRNet、ResNet、Xu-Net和Yedroudj-Net。我们使用BOSSBase数据集,基于准确率、精确率、召回率、F1分数和AUC等各种指标,评估了这些模型在变换前后的性能。我们的结果表明,在所考虑的架构变换中,EfficientNet是最鲁棒的。不过,结果也凸显了最先进的模型Xu-Net和Yedroudj-Net存在显著的性能下降,尤其是在添加噪声的情况下。这些结果表明需要开发更鲁棒的架构,以承受现实世界中的图像改变。在实践中,这将帮助从业者选择最适合操作环境的模型,并为未来改进此类模型的设计奠定必要的基础。在这方面,未来应采用集成和自适应方法研究更多的变换,以进一步提高鲁棒性。