Abstract

Smart cities and their applications have become attractive research fields birthing numerous technologies. Fifth generation (5G) networks are important components of smart cities, where intelligent access control is deployed for identity authentication, online banking, and cyber security. To assure secure transactions and to protect user's identities against cybersecurity threats, strong authentication techniques should be used. The prevalence of biometrics, such as fingerprints, in authentication and identification makes the need to safeguard them important across different areas of smart applications. Our study presents a system to detect alterations to biometric modalities to discriminate pristine, adulterated, and fake biometrics in 5G-based smart cities. Specifically, we use deep learning models based on convolutional neural networks (CNN) and a hybrid model that combines CNN with convolutional long-short term memory (ConvLSTM) to compute a three-tier probability that a biometric has been tempered. Simulation-based experiments indicate that the alteration detection accuracy matches those recorded in advanced methods with superior performance in terms of detecting central rotation alteration to fingerprints. This makes the proposed system a veritable solution for different biometric authentication applications in secure smart cities.

Highlights

  • Use of human biometrics in identity authentication is an area of interests for researchers from different backgrounds

  • We note that an average detection accuracy of 92.97% is recorded for the convolutional neural networks (CNN) deep learning models (DLM) and 93.88% for the hybrid ConvLSTM model

  • 2) Results for Central Rotation Alteration The central rotation alteration is considered as a medium alteration that is based on rotation operations on the fingerprint images

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Summary

Introduction

Use of human biometrics in identity authentication is an area of interests for researchers from different backgrounds. The identity of one person can be authenticated via different biometrics such as finger vein, face, fingerprint, and iris. Human identification is deployed in several applications such as access control, cyber security, and blockchains. Owing to their uniqueness and animateness, more recently, the human biometrics are replacing passwords in several applications. Smart phones use the iris and fingerprint to be the password to access the device. Some financial organisations like Paneer have provided mobile applications for money transfer via the use of fingerprint for the client authentication.

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