In:
Journal of Electrical Systems, Science Research Society, Vol. 19, No. 4 ( 2024-01-25), p. 34-48
Kurzfassung:
With the evolution of biometric technology, this research embarks on a multidimensional exploration, encompassing design innovation, ethical scrutiny, and the application of advanced optimization techniques. The core objective is to redefine elemental packaging design through the lens of machine vision cognition into the ethical and social implications inherent in biomedical biometrics. With the integration of Hidden Markov Probabilistic Swarm Optimization (HMPSO) to amplify the capabilities of biometric systems. At the forefront of this study is the reimagination of elemental packaging design, characterized by aesthetics, ergonomics, and functionality. The infusion of machine vision cognition into these designs not only enhances user experience but also prompts contemplation of ethical considerations surrounding privacy, accessibility, and informed consent. Ethical and social implications are scrutinized comprehensively, acknowledging the profound impact of biometrics on individual rights, security, and privacy. The research probes into equitable access to biometric technologies, ethical data utilization in healthcare, identity verification, and surveillance contexts. Central to this multidisciplinary inquiry is the integration of Hidden Markov Probabilistic Swarm Optimization (HMPSO). With swarm intelligence and probabilistic modeling, HMPSO enhances the efficiency, accuracy, and reliability of biomedical biometric systems. It addresses the critical challenge of reducing false positives and false negatives in biometric authentication. The research methodology comprises performance evaluations, ethical analyses, and socio-cultural investigations, offering a comprehensive view of the interplay between design innovation, machine vision cognition, ethical awareness, and the application of HMPSO in the biomedical biometrics.
Materialart:
Online-Ressource
ISSN:
1112-5209
Sprache:
Englisch
Verlag:
Science Research Society
Publikationsdatum:
2024
ZDB Id:
2397001-7
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