T2UE: Generating Unlearnable Examples from Text Descriptions
Xingjun Ma, Hanxun Huang, Tianwei Song, Ye Sun, Yifeng Gao, Yu-Gang Jiang

TL;DR
This paper introduces T2UE, a text-based method for generating unlearnable examples that protect data privacy without requiring access to original images, leveraging text-to-image models and error minimization.
Contribution
T2UE enables privacy-preserving data protection using only text descriptions, avoiding the need for original images and external services, thus resolving the privacy paradox in unlearnable example generation.
Findings
T2UE effectively degrades downstream model performance.
The protection generalizes across different architectures.
It works in supervised learning scenarios.
Abstract
Large-scale pre-training frameworks like CLIP have revolutionized multimodal learning, but their reliance on web-scraped datasets, frequently containing private user data, raises serious concerns about misuse. Unlearnable Examples (UEs) have emerged as a promising countermeasure against unauthorized model training, employing carefully crafted unlearnable noise to disrupt the learning of meaningful representations from protected data. Current approaches typically generate UEs by jointly optimizing unlearnable noise for both images and their associated text descriptions (or labels). However, this optimization process is often computationally prohibitive for on-device execution, forcing reliance on external third-party services. This creates a fundamental privacy paradox: users must initially expose their data to these very services to achieve protection, thereby compromising privacy in…
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