Agnostic Watermarking
Agnostic watermarking aims to embed imperceptible identifiers into data generated by machine learning models, enabling verification of origin and detection of unauthorized use. Current research focuses on developing robust watermarking schemes for diverse model types, including deep neural networks, language models, and even tabular data, often employing techniques like error-correcting codes, diffusion model modifications, and hypothesis testing. This field is crucial for protecting intellectual property, combating misinformation, and ensuring the responsible deployment of increasingly powerful AI systems across various applications.
Papers
Watermarking Generative Tabular Data
Hengzhi He, Peiyu Yu, Junpeng Ren, Ying Nian Wu, Guang Cheng
WaterPool: A Watermark Mitigating Trade-offs among Imperceptibility, Efficacy and Robustness
Baizhou Huang, Xiaojun Wan
How to Trace Latent Generative Model Generated Images without Artificial Watermark?
Zhenting Wang, Vikash Sehwag, Chen Chen, Lingjuan Lyu, Dimitris N. Metaxas, Shiqing Ma