In this paper, we propose a novel learnable image encryption method for privacy-preserving deep neural networks (DNNs). The proposed method is carried out on the basis of block scrambling used in combination with data augmentation techniques such as random cropping, horizontal flip and grid mask. The use of block scrambling enhances robustness against various attacks, and in contrast, the combination with data augmentation enables us to maintain a high classification accuracy even when using encrypted images. In an image classification experiment, the proposed method is demonstrated to be effective in privacy-preserving DNNs.
翻译:在本文中,我们建议为隐私保护深神经网络(DNNs)采用一种新的可学习图像加密方法。拟议方法是在与随机裁剪、水平翻转和网格遮罩等数据增强技术结合使用块分割法的基础上实施的。使用块分割法可以增强抵御各种袭击的稳健性,而与此形成对照的是,与数据增强相结合,即使使用加密图像,也使我们能够保持高分类准确度。在图像分类实验中,拟议方法已证明对保护隐私的DNs有效。