在深度神经网络中嵌入水印

Yusuke Uchida, Yuki Nagai, S. Sakazawa, S. Satoh
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引用次数: 448

摘要

近年来,深度神经网络研究取得了重大进展。深度神经网络训练模型的共享在这些系统的研究和发展中取得了非常重要的进展。同时,需要保护共享训练模型的权利。为此,我们建议使用数字水印技术来保护知识产权,并在使用训练好的模型中检测知识产权侵权。首先,我们提出了一个新的问题:在深度神经网络中嵌入水印。其次,我们提出了一个使用参数正则化器在模型参数中嵌入水印的通用框架。由于水印是在训练宿主网络的同时嵌入的,因此我们的方法不会影响嵌入水印的网络的性能。最后,我们进行了全面的实验,以揭示水印深度神经网络作为这项新研究工作的基础的潜力。我们表明,我们的框架可以在从头开始的深度神经网络训练过程中嵌入水印,并且在微调和提取过程中,不会损害其性能。嵌入的水印即使经过微调或参数修剪也不会消失;即使对65%的参数进行剪枝,水印仍保持完整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Embedding Watermarks into Deep Neural Networks
Significant progress has been made with deep neural networks recently. Sharing trained models of deep neural networks has been a very important in the rapid progress of research and development of these systems. At the same time, it is necessary to protect the rights to shared trained models. To this end, we propose to use digital watermarking technology to protect intellectual property and detect intellectual property infringement in the use of trained models. First, we formulate a new problem: embedding watermarks into deep neural networks. Second, we propose a general framework for embedding a watermark in model parameters, using a parameter regularizer. Our approach does not impair the performance of networks into which a watermark is placed because the watermark is embedded while training the host network. Finally, we perform comprehensive experiments to reveal the potential of watermarking deep neural networks as the basis of this new research effort. We show that our framework can embed a watermark during the training of a deep neural network from scratch, and during fine-tuning and distilling, without impairing its performance. The embedded watermark does not disappear even after fine-tuning or parameter pruning; the watermark remains complete even after 65% of parameters are pruned.
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