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    樊雪峰, 周晓谊, 朱冰冰, 董津位, 牛俊, 王鹤. 深度神经网络模型版权保护方案综述[J]. 计算机研究与发展, 2022, 59(5): 953-977. DOI: 10.7544/issn1000-1239.20211115
    引用本文: 樊雪峰, 周晓谊, 朱冰冰, 董津位, 牛俊, 王鹤. 深度神经网络模型版权保护方案综述[J]. 计算机研究与发展, 2022, 59(5): 953-977. DOI: 10.7544/issn1000-1239.20211115
    Fan Xuefeng, Zhou Xiaoyi, Zhu Bingbing, Dong Jinwei, Niu Jun, Wang He. Survey of Copyright Protection Schemes Based on DNN Model[J]. Journal of Computer Research and Development, 2022, 59(5): 953-977. DOI: 10.7544/issn1000-1239.20211115
    Citation: Fan Xuefeng, Zhou Xiaoyi, Zhu Bingbing, Dong Jinwei, Niu Jun, Wang He. Survey of Copyright Protection Schemes Based on DNN Model[J]. Journal of Computer Research and Development, 2022, 59(5): 953-977. DOI: 10.7544/issn1000-1239.20211115

    深度神经网络模型版权保护方案综述

    Survey of Copyright Protection Schemes Based on DNN Model

    • 摘要: 深度神经网络(deep neural network, DNN)等新兴技术以前所未有的性能在工业互联网安全中得到广泛发展和应用.然而,训练DNN模型需要在目标应用程序中捕获大量不同场景的专有数据、广泛的计算资源,以及在专家的协助下调整网络拓扑结构并正确训练参数.因此,DNN模型应当作为有价值的知识产权,从技术上保护其不被非法复制、重新分发或滥用.受经典水印技术被用于保护与多媒体内容相关的知识产权的启发,神经网络水印是目前最受研究者关注的DNN模型版权保护方法.迄今为止,学术界对神经网络水印在DNN模型知识产权保护中的应用尚缺乏完整描述.调研了近5年CCF推荐期刊和会议等关于该领域的相关工作,从水印的嵌入和提取的视角,将神经网络水印在原有的白盒水印和黑盒水印分类的基础上,扩充了灰盒水印和无盒水印2种分类,对白盒水印和黑盒水印方法根据其水印嵌入的不同思路和不同任务模型进行了更详细的分类总结,并对4类水印方法的性能进行了对比.最后,探讨了神经网络水印未来面临的挑战和可研究的方向,旨在为学者进一步推动基于神经网络水印的DNN模型版权保护的发展提供指导.

       

      Abstract: Emerging technologies such as the deep neural network (DNN) have been rapidly developed and applied in industrial Internet security with unprecedented performance. However, training a DNN model needs to capture a large number of proprietary data in different scenarios in the target application, to require extensive computing resources, and to adjust the network topology with the assistance of experts to properly train the parameters. As valuable intellectual property, DNN model should be technically protected from illegal reproduction, redistribution or abuse. Inspired by the classical watermarking technologies which protect intellectual property rights related to multimedia content, neural network watermarking is currently the DNN model copyright protection method most concerned by researchers. So far, there is no complete description of the application of neural network watermarking in the protection of intellectual property of DNN models. We investigate the relevant work of CCF recommended journals and conferences in recent five years. From the perspective of watermark embedding and extraction, based on the original classification of white box and black box watermarking, the neural network watermarking is extended to gray box and null box. The white box and black box watermarkings are summarized in details according to their different ideas and various task models, and the performances of the four classifications are compared. Finally, we discuss the future challenges and research directions of neural network watermarking, aiming to provide guidance to further promote such technologies for DNN model copyright protection.

       

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