Protecting Intellectual Property of EEG-based Neural Networks with Watermarking
Ahmed Abdelaziz, Ahmed Fathi, Ahmed Fares

TL;DR
This paper presents a cryptographic watermarking framework for EEG-based neural networks that ensures robust intellectual property protection, high detection reliability, and resilience against various attacks while maintaining model accuracy.
Contribution
It introduces a novel wonder filter-based watermarking method tailored for EEG models, combining cryptographic techniques to enhance security and robustness against tampering and piracy.
Findings
Watermark detection accuracy exceeds 99.4% on the DEAP dataset.
Watermarked models retain over 90% classification accuracy after aggressive pruning.
Piracy resistance is demonstrated by inability to embed secondary watermarks without significant accuracy loss.
Abstract
EEG-based neural networks, pivotal in medical diagnosis and brain-computer interfaces, face significant intellectual property (IP) risks due to their reliance on sensitive neurophysiological data and resource-intensive development. Current watermarking methods, particularly those using abstract trigger sets, lack robust authentication and fail to address the unique challenges of EEG models. This paper introduces a cryptographic wonder filter-based watermarking framework tailored for EEG-based neural networks. Leveraging collision-resistant hashing and public-key encryption, the wonder filter embeds the watermark during training, ensuring minimal distortion ( drop in EEG task accuracy) and high reliability (100\% watermark detection). The framework is rigorously evaluated against adversarial attacks, including fine-tuning, transfer learning, and neuron pruning. Results…
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Taxonomy
TopicsNeuroscience and Neural Engineering · EEG and Brain-Computer Interfaces · Advanced Memory and Neural Computing
