Litcius/Paper detail

Lightweight Internet of Things Device Authentication, Encryption, and Key Distribution Using End-to-End Neural Cryptosystems

Yingnan Sun, Frank P.-W. Lo, Benny Lo

2021IEEE Internet of Things Journal22 citationsDOI

Abstract

Device authentication, encryption, and key distribution are of vital importance to any Internet of Things (IoT) systems, such as the new smart city infrastructures. This is due to the concern that attackers could easily exploit the lack of strong security in IoT devices to gain unauthorized access to the system or to hijack IoT devices to perform denial-of-service attacks on other networks. With the rise of fog and edge computing in IoT systems, increasing numbers of IoT devices have been equipped with computing capabilities to perform data analysis with deep learning technologies. Deep learning on edge devices can be deployed in numerous applications, such as local cardiac arrhythmia detection on a smart sensing patch, but it is rarely applied to device authentication and wireless communication encryption. In this article, we propose a novel lightweight IoT device authentication, encryption, and key distribution approach using neural cryptosystems and binary latent space. The neural cryptosystems adopt three types of end-to-end encryption schemes: 1) symmetric; 2) public-key; and 3) without keys. A series of experiments was conducted to test the performance and security strength of the proposed neural cryptosystems. The experimental results demonstrate the potential of this novel approach as a promising security and privacy solution for the next-generation of IoT systems.

Topics & Concepts

Computer scienceEncryptionCryptosystemAuthentication (law)Computer networkComputer securityDenial-of-service attackThe InternetWorld Wide WebChaos-based Image/Signal EncryptionCryptographic Implementations and SecurityAdvanced Malware Detection Techniques