A new piracy-resistant DNN watermarking method based on secret key and block-wise image transformations

Author:

He Shun1,Li Chaorong1,Wang Xingjie1,Zeng Anping1

Affiliation:

1. Department of Artificial Intelligence and Computer Science, Yibin University, Yibin, Sichuan, China

Abstract

This paper proposes a watermarking method that can be used for the copyright protection of DNN models, utilizing learnable block-wise image transformation techniques and a secret key to embed a watermark. A black-box watermarking approach is used, which does not require a specific predefined training or trigger set, allowing for the remote verification of model ownership. As a result, this method can achieve copyright protection using authentication methods for DNN models. Results of experiments on established datasets [1, 2] indicate that the original watermark is not easily overwritten by pirated watermarks. Moreover, its performance in pruning attack experiments is similar to that observed in the studies cited above. However, our approach demonstrates stronger robustness against fine-tuning attacks, while also achieving higher image classification accuracy.

Publisher

IOS Press

Reference12 articles.

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3. DNNOff: offloading DNN-based intelligent IoT applications in mobile edge computing;Chen;IEEE Transactions On Industrial Informatics,2021

4. A guide to deep learning in healthcare;Esteva;Nature Medicine,2019

5. Universal adversarial attacks on deep neural networks for medical image classification,pp;Hirano;BMC Medical Imaging,2021

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