Biometric Security and Internet of Things (IoT)

Book chapter


Obaidat, M. S., Rana, S., Maitra, T., Giri, D. and Dutta, S. (2018). Biometric Security and Internet of Things (IoT). in: Biometric-Based Physical and Cybersecurity Systems Springer. pp. 477–509
AuthorsObaidat, M. S., Rana, S., Maitra, T., Giri, D. and Dutta, S.
Abstract

The human-to-machine and human-to-human communications are transforming to machine-to-machine communications by which several decision-making systems can be built. When different Internet enabled smart devices interact with each other’s to achieve a goal (application depended), then a network is formed in which different sophisticated technologies will integrate to each other to form Internet of Things (IoT). It encompasses the vast amount of diverse smart devices, which collaborate with each other to achieve different smart applications like, smart cities, connected cars, automated agriculture and so on. Though Radio Frequency Identification (RFID), Wireless, mobile and sensor technologies make IoT feasible, but it suffers from many challenges like scalability, security, and heterogeneity problems. Out of many challenges, security is one of the primary concerns in IoT. Without proper security and privacy, the business model of IoT will not succeed. This chapter discusses the secure solutions for IoT using biometric features of users as well as end users. The chapter will demonstrate that biometric security is most feasible, reliable and efficient with respect to other existing security arrangements.

KeywordsBiometric Security; Zernike Radial Polynomials (RZP); Scale Invariant Feature Transform (SIFT); Biometric Smart Card; Remote Patient Monitoring System
Page range477–509
Year2018
Book titleBiometric-Based Physical and Cybersecurity Systems
PublisherSpringer
ISBN978-3-030-07526-2
Publication dates
Online25 Oct 2018
Publication process dates
Deposited10 Aug 2022
Digital Object Identifier (DOI)https://doi.org/10.1007/978-3-319-98734-7_19
Web address (URL)https://publons.com/publon/16900941/
JournalBiometric Security and Internet of Things (IoT). In: Obaidat, M., Traore, I., Woungang, I. (eds) Biometric-Based Physical and Cybersecurity Systems. Springer, Cham.
Journal citationpp. 477-509
Accepted author manuscript
License
File Access Level
Open
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