Litcius/Paper detail

Security for the Metaverse: Blockchain and Machine Learning Techniques for Intrusion Detection

Vu Tuan Truong, Long Bao Le

2024IEEE Network40 citationsDOI

Abstract

Considered to be the next-generation (NextG) Internet, the Metaverse faces various security risks inherited from its predecessor and new specialized threats. It is even more challenging to mitigate these issues in a large-scale setting with numerous wearable devices such as augmented, virtual reality (AR/VR) headsets. In this article, we aim to analyze the security aspect of the Metaverse thoroughly, focusing on blockchain and machine learning (ML) solutions. Firstly, we present a 4-layer architecture of the Metaverse and discuss potential solutions for Metaverse security based on blockchain and ML. Next, we develop a decentralized collaborative intrusion detection system (CIDS) based on blockchain and federated learning (FL) that allows such the Metaverse users to collaboratively protect this digital world. This helps solving the scalability and single-point-of-failure (SPoF) issues of traditional security approaches. Finally, we outline some key challenges and discuss future research directions for Metaverse security.

Topics & Concepts

MetaverseComputer scienceScalabilityComputer securityBlockchainWearable computerIntrusion detection systemHuman–computer interactionVirtual realityDatabaseEmbedded systemBlockchain Technology Applications and SecurityPrivacy-Preserving Technologies in DataInternet Traffic Analysis and Secure E-voting