COMMAND RECOGNITION SYSTEM RESEARCH
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Keywords

Mobile Robot, Control Command, Command Recognition, Robot Control System, Manufacturing Innovation, Industrial Innovation.

How to Cite

COMMAND RECOGNITION SYSTEM RESEARCH. (2024). TECHNICAL SCIENCE RESEARCH IN UZBEKISTAN, 2(5), 50-61. https://universalpublishings.com/~niverta1/index.php/tsru/article/view/5611

Abstract

This article presents experimental studies of a previously developed command recognition system. The details of the proposed mobile robot are described in detail. The setup of two experiments is presented, as well as an analysis of the results obtained. The conclusions provide recommendations for improving the accuracy of command recognition.

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DOI
SLIB.UZ

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