L2AI: lightweight three-factor authentication and authorization in IOMT blockchain-based environment
Laleh Khajehzadeh, Hamid Barati, Ali Barati

TL;DR
This paper introduces L2AI, a lightweight, secure, and scalable multi-factor authentication scheme for IoMT systems that enhances user privacy and is suitable for resource-constrained devices, verified through formal security methods.
Contribution
The paper presents a novel lightweight multi-factor authentication scheme, L2AI, tailored for blockchain-based IoMT environments, combining security, efficiency, and user anonymity.
Findings
L2AI ensures secure access with minimal resource consumption.
Formal verification confirms the scheme's security properties.
Supports scalable and anonymous user authentication in IoMT.
Abstract
Medical Internet of Things (IoMT) is the next frontier in the digital revolution and is utilized in healthcare. In this context, IoT enables individuals to remotely manage their essential activities with minimal interaction. However, the limitations of network resources and the challenges of establishing a secure channel, as well as sharing and collecting sensitive information through an insecure public channel, pose security challenges for the medical IoT. This paper presents a lightweight multi-factor authentication and anonymous user authentication scheme to access real-time data in a blockchain-based environment. The scheme utilizes an insecure channel called L2AI. L2AI ensures security and efficiency while enhancing user anonymity through the use of pseudo-identity and dynamic indexing. The proposed method supports highly scalable systems with an efficient user registration…
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Taxonomy
TopicsPrivacy, Security, and Data Protection · Blockchain Technology Applications and Security · Privacy-Preserving Technologies in Data
