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ComMark: Covert and Robust Black-Box Model Watermarking with Compressed Samples

About

The rapid advancement of deep learning has turned models into highly valuable assets due to their reliance on massive data and costly training processes. However, these models are increasingly vulnerable to leakage and theft, highlighting the critical need for robust intellectual property protection. Model watermarking has emerged as an effective solution, with black-box watermarking gaining significant attention for its practicality and flexibility. Nonetheless, existing black-box methods often fail to better balance covertness (hiding the watermark to prevent detection and forgery) and robustness (ensuring the watermark resists removal)-two essential properties for real-world copyright verification. In this paper, we propose ComMark, a novel black-box model watermarking framework that leverages frequency-domain transformations to generate compressed, covert, and attack-resistant watermark samples by filtering out high-frequency information. To further enhance watermark robustness, our method incorporates simulated attack scenarios and a similarity loss during training. Comprehensive evaluations across diverse datasets and architectures demonstrate that ComMark achieves state-of-the-art performance in both covertness and robustness. Furthermore, we extend its applicability beyond image recognition to tasks including speech recognition, sentiment analysis, image generation, image captioning, and video recognition, underscoring its versatility and broad applicability.

Yunfei Yang, Xiaojun Chen, Zhendong Zhao, Yu Zhou, Xiaoyan Gu, Juan Cao• 2025

Related benchmarks

TaskDatasetResultRank
Image ClassificationGTSRB (test)
Accuracy (Clean)30.1
59
Model Extraction AttackCIFAR10
Acc88.12
35
Model Extraction Attack RobustnessGTSRB
Accuracy22.91
14
Model Extraction Attack RobustnessVGGFace
Acc28.41
14
Watermark DetectionGTSRB
AccLoss12.29
14
Watermark DetectionCIFAR10
AccLoss8.13
14
Watermark DetectionCIFAR100
AccLoss5.23
14
Watermark DetectionVGGFace
AccLoss6.95
14
Face RecognitionVGG-Face (test)
Accuracy51.79
10
Traffic Sign RecognitionGTSRB (test)
Accuracy94.06
8
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