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Fingerprinting Deep Neural Networks for Ownership Protection: An Analytical Approach

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Adversarial-example-based fingerprinting approaches, which leverage the decision boundary characteristics of deep neural networks (DNNs) to craft fingerprints, have proven effective for model ownership protection. However, a fundamental challenge remains unresolved: how far a fingerprint should be placed from the decision boundary to simultaneously satisfy two essential properties, i.e., robustness and uniqueness, for effective and reliable ownership protection. Despite the importance of the fingerprint-to-boundary distance, existing works lack a theoretical solution and instead rely on empirical heuristics, which may violate either robustness or uniqueness properties. We propose AnaFP, an analytical fingerprinting scheme that constructs fingerprints under theoretical guidance. Specifically, we formulate fingerprint generation as controlling the fingerprint-to-boundary distance through a tunable stretch factor. To ensure both robustness and uniqueness, we mathematically formalize these properties that determine the lower and upper bounds of the stretch factor. These bounds jointly define an admissible interval within which the stretch factor must lie, thereby establishing a theoretical connection between the two constraints and the fingerprint-to-boundary distance. To enable practical fingerprint generation, we approximate the original (infinite) sets of pirated and independently trained models using two finite surrogate model pools and employ a quantile-based relaxation strategy to relax the derived bounds. Due to the circular dependency between the lower bound and the stretch factor, we apply grid search over the admissible interval to determine the most feasible stretch factor. Extensive experimental results show that AnaFP consistently outperforms prior methods, achieving effective ownership verification across diverse model architectures and model modification attacks.

Guang Yang, Ziye Geng, Yihang Chen, Changqing Luo• 2026

Related benchmarks

TaskDatasetResultRank
Model FingerprintingCIFAR-100
AUC89.3
52
Ownership VerificationCIFAR-100
AUC96.3
49
Ownership VerificationCIFAR-10
AUC100
49
Model FingerprintingCIFAR-10
AUC95.7
47
Model FingerprintingMNIST
AUC0.963
47
Model FingerprintingPROTEINS
AUC97.1
24
Model Fingerprinting RobustnessMNIST
AUC (Pruning)1
7
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