Generative Adversarial Networks (GAN) have promoted a variety of applications in computer vision, natural language processing, etc. due to its generative model's compelling ability to generate realistic examples plausibly drawn from an existing distribution of samples. GAN not only provides impressive performance on data generation-based tasks but also stimulates fertilization for privacy and security oriented research because of its game theoretic optimization strategy. Unfortunately, there are no comprehensive surveys on GAN in privacy and security, which motivates this survey paper to summarize those state-of-the-art works systematically. The existing works are classified into proper categories based on privacy and security functions, and this survey paper conducts a comprehensive analysis of their advantages and drawbacks. Considering that GAN in privacy and security is still at a very initial stage and has imposed unique challenges that are yet to be well addressed, this paper also sheds light on some potential privacy and security applications with GAN and elaborates on some future research directions.
翻译:GAN不仅在数据生成任务方面提供了令人印象深刻的业绩,而且由于其游戏理论优化战略,促进了隐私和安全研究的增益。不幸的是,在隐私和安全方面没有全面调查,这促使本调查文件系统地总结这些最先进的作品。现有作品根据隐私和安全功能分类为适当类别,本调查文件对其优点和缺点进行了全面分析。考虑到GAN在隐私和安全方面的优点和安全方面仍处于非常初步的阶段,并提出了尚待妥善解决的独特挑战,本文还揭示了与GAN有关的某些潜在的隐私和安全应用,并阐述了一些未来的研究方向。