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Copyright Protection Studies in Deep Learning

PRs Welcome

Here's an ongoing list to summarize literature about copyright protection in deep learning, including the copyright of models and data.

And we would greatly appreciate your contributions to expand this list! ✧٩(^ω^)و✧

Year Title Copyright Subject Task Type Method Authors Publisher 🔗
2019 BlackMarks: Blackbox Multibit Watermarking for Deep Neural Networks Model Image Encoding Watermarking Huili Chen, Bita Darvish Rouhani, and Farinaz Koushanfar ArXiv pdf
2020 Membership Encoding for Deep Learning Model Classification Membership Inference Congzheng Song, and Reza Shokri AsiaCCS pdf
2020 Towards Probabilistic Verification of Machine Unlearning Data Classification Dirty-label Backdoor Attack David M. Sommer, Liwei Song, Sameer Wagh, and Prateek Mittal ArXiv pdf
2021 Deep Neural Network Fingerprinting by Conferrable Adversarial Examples Model Classification Adversarial Training; Transfer Learning Nils Lukas, Yuxuan Zhang, and Florian Kerschbaum ICLR pdf & code
2022 Defending against Model Stealing via Verifying Embedded External Features Model Classification Dirty-label Backdoor Attack; Hypothesis Testing Li Yiming, Zhu Linghui, Jia Xiaojun, Jiang Yong, Xia Shu-Tao, and Cao Xiaochun AAAI pdf & code
2022 Your Model Trains on My Data? Protecting Intellectual Property of Training Data via Membership Fingerprint Authentication Model & Data Classification Membership Inference Gaoyang Liu, Tianlong Xu, Xiaoqiang Ma, and Chen Wang TIFS pdf
2022 Deep Model Intellectual Property Protection via Deep Watermarking Model Classification Watermarking; Steganography Jie Zhang, Dongdong Chen, Jing Liao, Weiming Zhang, Huamin Feng, Gang Hua, and Nenghai Yu TPAMI pdf & code
2022 Data Isotopes for Data Provenance in DNNs Data Classification Watermarking Emily Wenger, Xiuyu Li, Ben Y. Zhao, and Vitaly Shmatikov Arxiv pdf
2022 Copy, Right? A Testing Framework for Copyright Protection of Deep Learning Models Model Classification Testing Jialuo Chen, Jingyi Wang, Tinglan Peng, Youcheng Sun, Peng Cheng, Shouling Ji, Xingjun Ma, Bo Li, and Dawn Song S&P pdf & code
2022 Non-Transferable Learning: A New Approach for Model Ownership Verification and Applicability Authorization Model Classification Adversarial Training; Domain Shift; Lixu Wang, Shichao Xu, Ruiqi Xu, Xiao Wang, and Qi Zhu ICLR pdf & code
2022 Untargeted Backdoor Watermark: Towards Harmless and Stealthy Dataset Copyright Protection Dataset Classification Dirty-&Clean-label Backdoor Attack; Adversarial Training; Hypothesis Testing Yiming Li, Yang Bai, Yong Jiang, Yong Yang, Shu-Tao Xia, and Bo Li NeurIPS pdf & code
2023 Did You Train on My Dataset? Towards Public Dataset Protection with Clean-Label Backdoor Watermarking Dataset Classification Clean-label Backdoor Attack; Hypothesis Testing Ruixiang Tang, Qizhang Feng, Ninghao Liu, Fan Yang, and Xia Hu arXiv pdf & code
2023 Black-Box Dataset Ownership Verification via Backdoor Watermarking Dataset Classification Dirty-label Backdoor Attack; Hypothesis Testing Yiming Li, Mingyan Zhu, Xue Yang, Yong Jiang, Tao Wei, and Shu-Tao Xia TIFS pdf & code
2023 Domain Watermark: Effective and Harmless Dataset Copyright Protection is Closed at Hand Dataset Classification Adversarial Training; Domain Shift; Hypothesis Testing Junfeng Guo, Yiming Li, Lixu Wang, Shu-Tao Xia, Heng Huang, Cong Liu, and Bo Li NeurIPS pdf & code

What's the difference between Ownership and Copyright in deep learning?

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