When Federated Learning Meets Watermarking: A Comprehensive Overview of Techniques for Intellectual Property Protection

Author:

Lansari Mohammed12ORCID,Bellafqira Reda1ORCID,Kapusta Katarzyna2,Thouvenot Vincent2,Bettan Olivier2ORCID,Coatrieux Gouenou1

Affiliation:

1. IMT Atlantique, Inserm UMR 1101, 29200 Brest, France

2. ThereSIS, Thales SIX GTS, 91120 Palaiseau, France

Abstract

Federated learning (FL) is a technique that allows multiple participants to collaboratively train a Deep Neural Network (DNN) without the need to centralize their data. Among other advantages, it comes with privacy-preserving properties, making it attractive for application in sensitive contexts, such as health care or the military. Although the data are not explicitly exchanged, the training procedure requires sharing information about participants’ models. This makes the individual models vulnerable to theft or unauthorized distribution by malicious actors. To address the issue of ownership rights protection in the context of machine learning (ML), DNN watermarking methods have been developed during the last five years. Most existing works have focused on watermarking in a centralized manner, but only a few methods have been designed for FL and its unique constraints. In this paper, we provide an overview of recent advancements in federated learning watermarking, shedding light on the new challenges and opportunities that arise in this field.

Funder

European Union

CYBAILE industrial chair

Publisher

MDPI AG

Subject

Artificial Intelligence,Engineering (miscellaneous)

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