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Visual Security Evaluation of Learnable Image Encryption Methods against Ciphertext-only Attacks

机译:可视安全评估学习图像加密方法对密文攻击

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Various methods for protecting visual information have been proposed for privacy-preserving deep neural networks (DNNs). In contrast, methods of attack against such protection methods have been simultaneously developed. In this paper, we evaluate state-of-the-art visual-protection methods for privacy-preserving DNNs in terms of visual security against ciphertext-only attacks (COAs). We focus on the brute-force attack, feature reconstruction attack (FR-Attack), inverse transformation attack (ITN-Attack), and GAN-based attack (GAN-Attack), which have been proposed to reconstruct the visual information of plain images from visually protected images. The details of the various attacks are first summarized, and the visual security of the protection methods is then evaluated. Experimental results demonstrate that most of the protection methods, including pixelwise encryption, are not robust enough against GAN-Attack, while a few are robust enough against it.
机译:已经提出了用于保护视觉信息的各种保护方法,以保护隐私保留的深度神经网络(DNN)。相反,已经同时开发了对这种保护方法的攻击方法。在本文中,我们评估了在视觉安全性的隐私保留DNN的最先进的视觉保护方法,以防止仅对密文攻击(COA)。我们专注于蛮力攻击,功能重建攻击(FR攻击),逆变换攻击(ITN攻击)和GaN的攻击(GaN-攻击),已经提出重建普通图像的视觉信息从视觉保护的图像。首先总结各种攻击的细节,然后评估保护方法的视觉安全性。实验结果表明,大多数保护方法包括像素加密,不足以针对GaN攻击的强大,而少数则足够强大。

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