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Deep Intellectual Property Protection: A Survey

Authors :
Sun, Yuchen
Liu, Tianpeng
Hu, Panhe
Liao, Qing
Fu, Shaojing
Yu, Nenghai
Guo, Deke
Liu, Yongxiang
Liu, Li
Publication Year :
2023

Abstract

Deep Neural Networks (DNNs), from AlexNet to ResNet to ChatGPT, have made revolutionary progress in recent years, and are widely used in various fields. The high performance of DNNs requires a huge amount of high-quality data, expensive computing hardware, and excellent DNN architectures that are costly to obtain. Therefore, trained DNNs are becoming valuable assets and must be considered the Intellectual Property (IP) of the legitimate owner who created them, in order to protect trained DNN models from illegal reproduction, stealing, redistribution, or abuse. Although being a new emerging and interdisciplinary field, numerous DNN model IP protection methods have been proposed. Given this period of rapid evolution, the goal of this paper is to provide a comprehensive survey of two mainstream DNN IP protection methods: deep watermarking and deep fingerprinting, with a proposed taxonomy. More than 190 research contributions are included in this survey, covering many aspects of Deep IP Protection: problem definition, main threats and challenges, merits and demerits of deep watermarking and deep fingerprinting methods, evaluation metrics, and performance discussion. We finish the survey by identifying promising directions for future research.<br />Comment: 37 pages, 19 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2304.14613
Document Type :
Working Paper