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Generate Images with Obfuscated Attributes for Private Image Classification

机译:生成具有混淆属性的图像以进行私有图像分类

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Image classification is widely used in various applications and some companies collect a large amount of data from users to train classification models for commercial profitability. To prevent disclosure of private information caused by direct data collecting, Google proposed federated learning to share model parameters rather than data. However, this framework could address the problem of direct data leakage but cannot defend against inference attack, malicious participants can still exploit attribute information from the model parameters. In this paper, we propose a novel method based on StarGAN to generate images with obfuscated attributes. The images generated by our methods can retain the non-private attributes of the original image but protect the specific private attributes of the original image by mixing the original image and the artificial image with obfuscated attributes. Experimental results have shown that the model trained on the artificial image dataset can effectively defend against property inference attack with neglected accuracy loss of classification task in a federated learning environment.
机译:图像分类广泛用于各种应用中,并且一些公司从用户那里收集大量数据来训练分类模型以实现商业盈利。为了防止由于直接收集数据而导致的私人信息泄露,Google提出联合学习以共享模型参数而不是数据。但是,此框架可以解决直接数据泄漏的问题,但不能防御推理攻击,恶意参与者仍可以利用模型参数中的属性信息。在本文中,我们提出了一种基于StarGAN的新方法来生成具有模糊属性的图像。通过我们的方法生成的图像可以保留原始图像的非私有属性,但是可以通过将原始图像和人工图像混合在一起来保护原始图像的特定私有属性。实验结果表明,在联合学习环境中,在人工图像数据集上训练的模型可以有效地防御属性推理攻击,而忽略分类任务的准确性损失。

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