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ModelLock: Locking Your Model With a Spell

Authors :
Gao, Yifeng
Sun, Yuhua
Ma, Xingjun
Wu, Zuxuan
Jiang, Yu-Gang
Publication Year :
2024

Abstract

This paper presents a novel model protection paradigm ModelLock that locks (destroys) the performance of a model on normal clean data so as to make it unusable or unextractable without the right key. Specifically, we proposed a diffusion-based framework dubbed ModelLock that explores text-guided image editing to transform the training data into unique styles or add new objects in the background. A model finetuned on this edited dataset will be locked and can only be unlocked by the key prompt, i.e., the text prompt used to transform the data. We conduct extensive experiments on both image classification and segmentation tasks, and show that 1) ModelLock can effectively lock the finetuned models without significantly reducing the expected performance, and more importantly, 2) the locked model cannot be easily unlocked without knowing both the key prompt and the diffusion model. Our work opens up a new direction for intellectual property protection of private models.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.16285
Document Type :
Working Paper