Abstract
AbstractThe Fourth Industrial Revolution, also known as Industry 4.0, represents the rise of digital industrial technology that is propagating at an exponential rate compared to the previous three revolutions. Interoperability is a basis of production, where there is a continuous exchange of information between machines and production units that act autonomously and intelligently. Workers play a central role in making autonomous decisions and using advanced technological tools. It may involve using measures that distinguish individuals, and their behaviours and reactions. Increasing the level of security, allowing only authorized personnel access to designated areas, and promoting worker welfare can have a positive impact on the entire assembly line. Thus, capturing biometric information, with or without individuals’ knowledge, could allow identity verification and monitoring of of their emotional and cognitive states during the daily actions of work life. From the study of the literature, we outline three macro categories in which the principles of Industry 4.0 are merged and the functionalities of biometric systems are exploited: security, health monitoring, and quality work life analysis. In this review, we present an overview of all biometric features used in the context of Industry 4.0 with a focus on their advantages, limitations, and practical use. Attention is also paid to future research directions for which new answers are being explored.
Funder
European Commission–NextGenerationEU
Università degli Studi di Salerno
Publisher
Springer Science and Business Media LLC
Reference67 articles.
1. Ahmed I, Jeon G, Piccialli F (2022) From artificial intelligence to explainable artificial intelligence in industry 4.0: a survey on what, how, and where. IEEE Trans Ind Inf 18(8):5031–5042
2. Alkeem EA, Yeun CY, Yun J, Yoo PD, Chae M, Rahman A, Asyhari AT (2021) Robust deep identification using ecg and multimodal biometrics for industrial internet of things. Ad Hoc Netw 121:102581
3. Anajemba JH, Iwendi C, Razzak M, Ansere JA, Okpalaoguchi MI (2022) A counter-eavesdropping technique for optimized privacy of wireless industrial iot communications. IEEE Trans Ind Inf 1
4. Aniello C, Michele N, Stefano R (2020) Trustworthy method for person identification in iiot environments by means of facial dynamics. IEEE Trans Ind Inf 17(2):766–774
5. Antti Ä, Pilvikki A, Mirja H, Nicolaas P (2020) Eight-year health risks trend analysis of a comprehensive workplace health promotion program. Int J Environ Res Public Health 17(24):9426
Cited by
6 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献