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High-frequency Matters: An Overwriting Attack and defense for Image-processing Neural Network Watermarking

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arxiv 2302.08637 v1 pith:3YOKJ3ER submitted 2023-02-17 cs.CR

High-frequency Matters: An Overwriting Attack and defense for Image-processing Neural Network Watermarking

classification cs.CR
keywords networkwatermarkingattackoutputwatermarkimage-processingmodeloverwriting
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In recent years, there has been significant advancement in the field of model watermarking techniques. However, the protection of image-processing neural networks remains a challenge, with only a limited number of methods being developed. The objective of these techniques is to embed a watermark in the output images of the target generative network, so that the watermark signal can be detected in the output of a surrogate model obtained through model extraction attacks. This promising technique, however, has certain limits. Analysis of the frequency domain reveals that the watermark signal is mainly concealed in the high-frequency components of the output. Thus, we propose an overwriting attack that involves forging another watermark in the output of the generative network. The experimental results demonstrate the efficacy of this attack in sabotaging existing watermarking schemes for image-processing networks, with an almost 100% success rate. To counter this attack, we devise an adversarial framework for the watermarking network. The framework incorporates a specially designed adversarial training step, where the watermarking network is trained to defend against the overwriting network, thereby enhancing its robustness. Additionally, we observe an overfitting phenomenon in the existing watermarking method, which can render it ineffective. To address this issue, we modify the training process to eliminate the overfitting problem.

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