Protecting the Intellectual Property of Deep Neural Networks with Watermarking: The Frequency Domain Approach

Meng Li, Qi Zhong, L. Zhang, Yajuan Du, Jinchao Zhang, Yong Xiangt
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引用次数: 14

Abstract

Similar to other digital assets, deep neural network (DNN) models could suffer from piracy threat initiated by insider and/or outsider adversaries due to their inherent commercial value. DNN watermarking is a promising technique to mitigate this threat to intellectual property. This work focuses on black-box DNN watermarking, with which an owner can only verify his ownership by issuing special trigger queries to a remote suspicious model. However, informed attackers, who are aware of the watermark and somehow obtain the triggers, could forge fake triggers to claim their ownerships since the poor robustness of triggers and the lack of correlation between the model and the owner identity. This consideration calls for new watermarking methods that can achieve better trade-off for addressing the discrepancy. In this paper, we exploit frequency domain image watermarking to generate triggers and build our DNN watermarking algorithm accordingly. Since watermarking in the frequency domain is high concealment and robust to signal processing operation, the proposed algorithm is superior to existing schemes in resisting fraudulent claim attack. Besides, extensive experimental results on 3 datasets and 8 neural networks demonstrate that the proposed DNN watermarking algorithm achieves similar performance on functionality metrics and better performance on security metrics when compared with existing algorithms.
基于频域水印的深度神经网络知识产权保护
与其他数字资产类似,深度神经网络(DNN)模型由于其固有的商业价值,可能会受到内部和/或外部对手发起的盗版威胁。深度神经网络水印是一种很有前途的技术,可以减轻这种对知识产权的威胁。这项工作的重点是黑盒DNN水印,使用该水印,所有者只能通过向远程可疑模型发出特殊触发查询来验证其所有权。然而,知情的攻击者知道水印并以某种方式获得触发器,由于触发器的鲁棒性差,并且模型与所有者身份缺乏相关性,可以伪造假触发器来声明其所有权。考虑到这一点,需要新的水印方法来实现更好的权衡,以解决差异。在本文中,我们利用频域图像水印来生成触发器,并相应地构建我们的深度神经网络水印算法。由于频域水印具有较高的隐蔽性和对信号处理操作的鲁棒性,该算法在抵御欺诈性索赔攻击方面优于现有算法。此外,在3个数据集和8个神经网络上的大量实验结果表明,与现有算法相比,本文提出的DNN水印算法在功能指标上具有相似的性能,在安全指标上具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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