Adaptive White-Box Watermarking with Self-Mutual Check Parameters in Deep Neural Networks

08/22/2023
by   Zhenzhe Gao, et al.
0

Artificial Intelligence (AI) has found wide application, but also poses risks due to unintentional or malicious tampering during deployment. Regular checks are therefore necessary to detect and prevent such risks. Fragile watermarking is a technique used to identify tampering in AI models. However, previous methods have faced challenges including risks of omission, additional information transmission, and inability to locate tampering precisely. In this paper, we propose a method for detecting tampered parameters and bits, which can be used to detect, locate, and restore parameters that have been tampered with. We also propose an adaptive embedding method that maximizes information capacity while maintaining model accuracy. Our approach was tested on multiple neural networks subjected to attacks that modified weight parameters, and our results demonstrate that our method achieved great recovery performance when the modification rate was below 20 significantly affected accuracy, we utilized an adaptive bit technique to recover more than 15

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset