ArXiv TLDR

ArmSSL: Adversarial Robust Black-Box Watermarking for Self-Supervised Learning Pre-trained Encoders

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2604.22550

Yongqi Jiang, Yansong Gao, Boyu Kuang, Chunyi Zhou, Anmin Fu + 1 more

cs.CRcs.AI

TLDR

ArmSSL proposes a novel black-box watermarking framework for self-supervised learning encoders, ensuring robust ownership verification and utility preservation.

Key contributions

  • Enables black-box ownership verification using paired discrepancy enlargement for reliable signals.
  • Achieves adversarial robustness by entangling latent representations and aligning distributions to suppress OOD clusters.
  • Preserves utility with a reference-guided watermark tuning strategy, minimizing impact on the main task.
  • Demonstrates superior verification, negligible utility degradation, and strong robustness across diverse SSL frameworks.

Why it matters

Existing SSL watermarking methods lack concurrent black-box verifiability and adversarial robustness, leaving valuable IP vulnerable. ArmSSL addresses these critical gaps, providing a robust solution for protecting self-supervised learning encoders. This significantly enhances IP security for advanced AI models.

Original Abstract

Self-supervised learning (SSL) encoders are invaluable intellectual property (IP). However, no existing SSL watermarking for IP protection can concurrently satisfy the following two practical requirements: (1) provide ownership verification capability under black-box suspect model access once the stolen encoders are used in downstream tasks; (2) be robust under adversarial watermark detection or removal, because the watermark samples form a distinguishable out-of-distribution (OOD) cluster. We propose ArmSSL, an SSL watermarking framework that assures black-box verifiability and adversarial robustness while preserving utility. For verification, we introduce paired discrepancy enlargement, enforcing feature-space orthogonality between the clean and its watermark counterpart to produce a reliable verification signal in black-box against the suspect model. For adversarial robustness, ArmSSL integrates latent representation entanglement and distribution alignment to suppress the OOD clustering. The former entangles watermark representations with clean representations (i.e., from non-source-class) to avoid forming a dense cluster of watermark samples, while the latter minimizes the distributional discrepancy between watermark and clean representations, thereby disguising watermark samples as natural in-distribution data. For utility, a reference-guided watermark tuning strategy is designed to allow the watermark to be learned as a small side task without affecting the main task by aligning the watermarked encoder's outputs with those of the original clean encoder on normal data. Extensive experiments across five mainstream SSL frameworks and nine benchmark datasets, along with end-to-end comparisons with SOTAs, demonstrate that ArmSSL achieves superior ownership verification, negligible utility degradation, and strong robustness against various adversarial detection and removal.

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