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http://dx.doi.org/10.17661/jkiiect.2020.13.6.611

Design and implementation of an AI-based speed quiz content for social robots interacting with users  

Oh, Hyun-Jung (Electronic Engineering, Kookmin University)
Kang, A-Reum (Electronic Engineering, Kookmin University)
Kim, Do-Yun (Electronic Engineering, Kookmin University)
Jeong, Gu-Min (Computer engineering, Dankook University)
Publication Information
The Journal of Korea Institute of Information, Electronics, and Communication Technology / v.13, no.6, 2020 , pp. 611-618 More about this Journal
Abstract
In this paper, we propose a design and implementation method of speed quiz content that can be driven by a social robot capable of interacting with humans, and a method of developing an intelligent module necessary for implementation. In addition, we propose a method of implementing speed quiz content through the process of constructing a map by arranging and connecting intelligent module blocks. Recently, software education has become mandatory and interest in programming is increasing. However, programming is difficult for students without basic knowledge of programming languages to directly access, and interest in block-type programming platforms suitable for beginners is growing. The block-type programming platform used in this paper is a platform that supports immediate and intuitive programming by supporting interactions between humans and robots. In this paper, the intelligent module implemented for the speed quiz content was used by blocking it within a block-type programming platform. In order to implement the scenario of the speed quiz content proposed in this paper, we implement a total of three image-based artificial intelligence modules. In addition to the intelligent module, various functional blocks were placed to implement the speed quiz content. In this paper, we propose a method of designing a speed quiz content scenario and a method of implementing an intelligent module for speed quiz content.
Keywords
AI Content; Educational Robot Content; Image Processing; Robot Interaction; Robot Platform;
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