Generative AI (e.g., Generative Adversarial Networks - GANs) has become increasingly popular in recent years. However, Generative AI introduces significant concerns regarding the protection of Intellectual Property Rights (IPR) (resp. model accountability) pertaining to images (resp. toxic images) and models (resp. poisoned models) generated. In this paper, we propose an evaluation framework to provide a comprehensive overview of the current state of the copyright protection measures for GANs, evaluate their performance across a diverse range of GAN architectures, and identify the factors that affect their performance and future research directions. Our findings indicate that the current IPR protection methods for input images, model watermarking, and attribution networks are largely satisfactory for a wide range of GANs. We highlight that further attention must be directed towards protecting training sets, as the current approaches fail to provide robust IPR protection and provenance tracing on training sets.
翻译:近年来,产生性大赦国际(例如,产生性反转网络-GANs)越来越受欢迎,然而,产生性大赦国际对保护知识产权(IPR)(重现示范问责制)提出了与生成的图像(重录有毒图像)和模型(重录有毒模型)有关的重大关切,在本文件中,我们提议了一个评价框架,以全面概述全球专利网版权保护措施的现状,评价其在各种全球专利网结构中的绩效,并查明影响其业绩和未来研究方向的因素。我们的调查结果表明,目前对输入性图像、示范水标记和归属网络的知识产权保护方法对于广泛的全球专利网来说基本令人满意。我们强调,必须进一步注意保护培训成套材料,因为目前的做法无法提供强有力的知识产权保护和对培训成套材料的证明。</s>