Bibliographic Details
| Title: |
A LITERATURE REVIEW ON INTEGRATING AI AND BLOCKCHAIN TECHNOLOGIES IN ANIMATRONICS FOR CHILDREN'S ENTERTAINMENT AND EDUCATION. |
| Authors: |
STEPANEK, ALINA1 alinasoltoianu@upet.ro, PANAITE, FABIAN ARUN2 fabianpanaite@upet.ro |
| Source: |
Annals of the University of Petrosani Electrical Engineering. 2024, Vol. 26, p97-106. 10p. |
| Subjects: |
Blockchains, Animatronics, Natural language processing, Cognitive computing, Internet of things |
| Abstract: |
This paper presents a comprehensive literature review on the integration of animatronics for children, AI systems applicable to animatronics, and blockchain in IoT for animatronics. It begins with an overview of the historical context and evolution of animatronics in children's entertainment and education, highlighting key milestones and safety considerations. The review explores various AI systems used in animatronics, including machine learning, computer vision, natural language processing, and behavioral AI, discussing their implementation and associated challenges. The study further investigates the role of blockchain technology in animatronics, focusing on critical aspects such as data security, supply chain management, and operational transparency. Blockchain ensures secure data transmission between animatronics and control systems, enhances the traceability and verification of components and materials used in animatronics, and maintains transparent and immutable records of maintenance logs and operational data. The paper provides a comprehensive analysis of the integrated role of AI and blockchain in advancing animatronic technologies, aiming to offer valuable insights for designers, developers, and educators involved in the field of animatronics. [ABSTRACT FROM AUTHOR] |
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| Database: |
Engineering Source |