Mixer: DNN Watermarking using Image Mixup
Kassem Kallas (National Institute for Research in Digital Science and Technology (INRIA)); Teddy Furon (Inria)
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It is crucial to protect the intellectual property
rights of DNN models prior to their deployment. The DNN should
perform two main tasks: its primary task and watermarking
task. This paper proposes a lightweight, reliable, and secure
DNN watermarking that attempts to establish strong ties between
these two tasks. The samples triggering the watermarking task
are generated using image Mixup either from training or testing
samples. This means that there is an infinity of triggers not
limited to the samples used to embed the watermark in the model
at training. The extensive experiments on image classification
models for different datasets as well as exposing them to a
variety of attacks, show that the proposed watermarking provides
protection with an adequate level of security and robustness.