论文标题
通过固定的,分布优化的重量,可靠和大量付款DNN水印
Robust and Large-Payload DNN Watermarking via Fixed, Distribution-Optimized, Weights
论文作者
论文摘要
有效的多位水印算法的设计在找到形成水印的三个基本要求之间取舍的良好权衡,即构成水印三角形,即针对网络修改,有效载荷和毫无意义,确保对水印网络的性能的最小影响。在本文中,我们首先重新审视了DNN案例的水印权衡三角形的性质,然后利用我们的发现提出了一种白盒,多位的水印方法,可实现非常大的有效载荷和强大的鲁棒性,以抗网络修改。在拟议的系统中,托管水印的权重是在训练之前设置的,确保其振幅足够大,可以承受目标有效载荷和生存网络修改,尤其是在训练过程中保持不变。理论上优化了携带水印的重量的分布,以确保水印的保密性,并确保水标重量与非含水标记的重量无法区分。所提出的方法可以实现出色的性能,对网络准确性没有重大影响,包括针对网络修改,重新训练和转移学习的鲁棒性,同时确保有效载荷无法达到最低状态方法,从而实现了较低(或最多可比)的鲁棒性。
The design of an effective multi-bit watermarking algorithm hinges upon finding a good trade-off between the three fundamental requirements forming the watermarking trade-off triangle, namely, robustness against network modifications, payload, and unobtrusiveness, ensuring minimal impact on the performance of the watermarked network. In this paper, we first revisit the nature of the watermarking trade-off triangle for the DNN case, then we exploit our findings to propose a white-box, multi-bit watermarking method achieving very large payload and strong robustness against network modification. In the proposed system, the weights hosting the watermark are set prior to training, making sure that their amplitude is large enough to bear the target payload and survive network modifications, notably retraining, and are left unchanged throughout the training process. The distribution of the weights carrying the watermark is theoretically optimised to ensure the secrecy of the watermark and make sure that the watermarked weights are indistinguishable from the non-watermarked ones. The proposed method can achieve outstanding performance, with no significant impact on network accuracy, including robustness against network modifications, retraining and transfer learning, while ensuring a payload which is out of reach of state of the art methods achieving a lower - or at most comparable - robustness.