Model Barrier: A Compact Un-Transferable Isolation Domain for Model
Intellectual Property Protection
- URL: http://arxiv.org/abs/2303.11078v1
- Date: Mon, 20 Mar 2023 13:07:11 GMT
- Title: Model Barrier: A Compact Un-Transferable Isolation Domain for Model
Intellectual Property Protection
- Authors: Lianyu Wang, Meng Wang, Daoqiang Zhang, Huazhu Fu
- Abstract summary: We propose a novel approach called Compact Un-Transferable Isolation Domain (CUTI-domain)
CUTI-domain acts as a barrier to block illegal transfers from authorized to unauthorized domains.
We show that CUTI-domain can be easily implemented as a plug-and-play module with different backbones.
- Score: 52.08301776698373
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: As scientific and technological advancements result from human intellectual
labor and computational costs, protecting model intellectual property (IP) has
become increasingly important to encourage model creators and owners. Model IP
protection involves preventing the use of well-trained models on unauthorized
domains. To address this issue, we propose a novel approach called Compact
Un-Transferable Isolation Domain (CUTI-domain), which acts as a barrier to
block illegal transfers from authorized to unauthorized domains. Specifically,
CUTI-domain blocks cross-domain transfers by highlighting the private style
features of the authorized domain, leading to recognition failure on
unauthorized domains with irrelevant private style features. Moreover, we
provide two solutions for using CUTI-domain depending on whether the
unauthorized domain is known or not: target-specified CUTI-domain and
target-free CUTI-domain. Our comprehensive experimental results on four digit
datasets, CIFAR10 & STL10, and VisDA-2017 dataset demonstrate that CUTI-domain
can be easily implemented as a plug-and-play module with different backbones,
providing an efficient solution for model IP protection.
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