Towards Secure AI-driven Industrial Metaverse with NFT Digital Twins

Features of the test bed

Abstract

The rise of the industrial metaverse has brought digital twins (DTs) to the forefront. Blockchain-powered non-fungible tokens (NFTs) offer a decentralized approach to creating and owning these cloneable DTs. However, the potential for unauthorized duplication, or counterfeiting, poses a significant threat to the security of NFT-DTs. Existing NFT clone detection methods often rely on static information like metadata and images, which can be easily manipulated. To address these limitations, we propose a novel deep-learning-based solution as a combination of an autoencoder and RNN-based classifier. This solution enables real-time pattern recognition to detect fake NFT-DTs. Additionally, we introduce the concept of dynamic metadata, providing a more reliable way to verify authenticity through AI-integrated smart contracts. By effectively identifying counterfeit DTs, our system contributes to strengthening the security of NFT-based assets in the metaverse.

Publication
2025 International Conference on COMmunication Systems & NETworkS
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Ravi Prakash Tripathi
Research Associate

A Ph.D. fellow working on “Security in Socio-industrial Metaverse” who could often be found somewhere messing up with bugs & vulnerabilities, contributing to open source or writing poems.

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