Say No to Freeloader: Protecting Intellectual Property of Your Deep Model.

Lianyu Wang, Meng Wang, Huazhu Fu, Daoqaing Zhang
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Abstract

Model intellectual property (IP) protection has attracted growing attention as science and technology advancements stem from human intellectual labor and computational expenses. Ensuring IP safety for trainers and owners is of utmost importance, particularly in domains where ownership verification and applicability authorization are required. A notable approach to safeguarding model IP involves proactively preventing the use of well-trained models of authorized domains from unauthorized domains. In this paper, we introduce a novel Compact Un-transferable Pyramid Isolation Domain (CUPI-Domain) which serves as a barrier against illegal transfers from authorized to unauthorized domains. Drawing inspiration from human transitive inference and learning abilities, the CUPI-Domain is designed to obstruct cross-domain transfers by emphasizing the distinctive style features of the authorized domain. This emphasis leads to failure in recognizing irrelevant private style features on unauthorized domains. To this end, we propose novel CUPI-Domain generators, which select features from both authorized and CUPI-Domain as anchors. Then, we fuse the style features and semantic features of these anchors to generate labeled and style-rich CUPI-Domain. Additionally, we design external Domain-Information Memory Banks (DIMB) for storing and updating labeled pyramid features to obtain stable domain class features and domain class-wise style features. Based on the proposed whole method, the novel style and discriminative loss functions are designed to effectively enhance the distinction in style and discriminative features between authorized and unauthorized domains, respectively. Moreover, we provide two solutions for utilizing CUPI-Domain based on whether the unauthorized domain is known: target-specified CUPI-Domain and target-free CUPI-Domain. By conducting comprehensive experiments on various public datasets, we validate the effectiveness of our proposed CUPI-Domain approach with different backbone models. The results highlight that our method offers an efficient model intellectual property protection solution.

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对免费者说不:保护深度模型的知识产权。
随着科技进步源于人类的智力劳动和计算支出,模型知识产权(IP)保护日益受到关注。确保训练者和所有者的知识产权安全至关重要,尤其是在需要所有权验证和适用性授权的领域。保护模型知识产权的一个显著方法是主动防止未经授权的领域使用训练有素的授权领域模型。在本文中,我们介绍了一种新颖的紧凑型不可转移金字塔隔离域(CUPI-Domain),它是防止从授权域向未授权域非法转移的屏障。CUPI 域的设计灵感来自人类的反式推理和学习能力,通过强调授权域的独特风格特征来阻止跨域转移。这种强调会导致无法识别未授权域中不相关的私人风格特征。为此,我们提出了新颖的 CUPI-Domain 生成器,从授权域和 CUPI-Domain 中选择特征作为锚点。然后,我们融合这些锚点的风格特征和语义特征,生成标签化的、风格丰富的 CUPI-Domain。此外,我们还设计了外部领域信息记忆库(Domain-Information Memory Bank,DIMB),用于存储和更新标记的金字塔特征,从而获得稳定的领域类特征和领域类风格特征。基于所提出的整个方法,我们设计了新颖的风格损失函数和判别损失函数,分别有效地提高了授权域和非授权域之间的风格和判别特征的区分度。此外,我们还根据是否已知未授权域提供了两种利用 CUPI-Domain 的解决方案:目标指定 CUPI-Domain 和无目标 CUPI-Domain。通过在各种公共数据集上进行综合实验,我们验证了我们提出的 CUPI-Domain 方法在不同骨干网模型下的有效性。结果表明,我们的方法提供了一种高效的模型知识产权保护解决方案。
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