2019
DOI: 10.1108/ir-11-2018-0240
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An approach for learning from robots using formal languages and automata

Abstract: Purpose In this study, human activity with finite and specific ranking is modeled with finite state machine, and an application for human–robot interaction was realized. A robot arm was designed that makes specific movements. The purpose of this paper is to create a language associated to a complex task, which was then used to teach individuals by the robot that knows the language. Design/methodology/approach Although the complex task is known by the robot, it is not known by the human. When the application … Show more

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Cited by 2 publications
(1 citation statement)
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“…and index [35] Te authors presented a complete relative pose error model for robot calibration power, respective to relative distance error and the relative rotation error of the robot end-efectors for improving calibration accuracy Robot decision-making architectures and index [36] Te authors stated that the application of robots was carried out for learning of 15 individuals. In total, 11 out of the 15 individuals completed the complex task leaning correctly by following diferent outputs of mobile robot's criteria.…”
Section: Robot Evaluation Decision-making Architecturesmentioning
confidence: 99%
“…and index [35] Te authors presented a complete relative pose error model for robot calibration power, respective to relative distance error and the relative rotation error of the robot end-efectors for improving calibration accuracy Robot decision-making architectures and index [36] Te authors stated that the application of robots was carried out for learning of 15 individuals. In total, 11 out of the 15 individuals completed the complex task leaning correctly by following diferent outputs of mobile robot's criteria.…”
Section: Robot Evaluation Decision-making Architecturesmentioning
confidence: 99%