Deep neural networks (DNNs) have already achieved great success in a lot of application areas and brought profound changes to our society. However, it also raises new security problems, among which how to protect the intellectual property (IP) of DNNs against infringement is one of the most important yet very challenging topics. To deal with this problem, recent studies focus on the IP protection of DNNs by applying digital watermarking, which embeds source information and/or authentication data into DNN models by tuning network parameters directly or indirectly. However, tuning network parameters inevitably distorts the DNN and therefore surely impairs the performance of the DNN model on its original task regardless of the degree of the performance degradation. It has motivated the authors in this paper to propose a novel technique called \emph{pooled membership inference (PMI)} so as to protect the IP of the DNN models. The proposed PMI neither alters the network parameters of the given DNN model nor fine-tunes the DNN model with a sequence of carefully crafted trigger samples. Instead, it leaves the original DNN model unchanged, but can determine the ownership of the DNN model by inferring which mini-dataset among multiple mini-datasets was once used to train the target DNN model, which differs from previous arts and has remarkable potential in practice. Experiments also have demonstrated the superiority and applicability of this work.
翻译:深心神经网络(DNN)已经在许多应用领域取得了巨大成功,并给我们的社会带来了深刻的变化。然而,它也提出了新的安全问题,其中包括如何保护DNN的知识产权不受侵犯是最重要但非常具有挑战性的议题之一。为了解决这一问题,最近研究的重点是通过应用数字水标记来保护DNN的知识产权,这种标记通过直接或间接调整网络参数将源信息和/或认证数据嵌入DNN模型。然而,调整网络参数不可避免地扭曲DNN,因此肯定损害DNN模型在最初任务中的性能,而不论性能退化的程度如何。它促使本文作者提出一种叫作\emph{集合会籍推断(PMI)的新技术,以保护DNN模型的IP。拟议的PMI既不改变给DN模型的网络参数,也不精细地调整DNN模型,并配有一套精心设计的触发样品。相反,它使DNN模型的原始模型在最初的可应用性能性能性能上,但是它也使DNNN的模型的模型在以往的模前的模前的模型和模本性能上展示了DNNND的模型的模型。