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EMG-Based Dynamic Hand Gesture Recognition Using Edge AI for Human–Robot Interaction

EunSu Kim, JaeWook Shin, YongSung Kwon, BumYong Park

Year
2023
Citations
45
Access
Open access

Abstract

Recently, human–robot interaction technology has been considered as a key solution for smart factories. Surface electromyography signals obtained from hand gestures are often used to enable users to control robots through hand gestures. In this paper, we propose a dynamic hand-gesture-based industrial robot control system using the edge AI platform. The proposed system can perform both robot operating-system-based control and edge AI control through an embedded board without requiring an external personal computer. Systems on a mobile edge AI platform must be lightweight, robust, and fast. In the context of a smart factory, classifying a given hand gesture is important for ensuring correct operation. In this study, we collected electromyography signal data from hand gestures and used them to train a convolutional recurrent neural network. The trained classifier model achieved 96% accuracy for 10 gestures in real time. We also verified the universality of the classifier by testing it on 11 different participants.

Keywords

GestureGesture recognitionComputer scienceArtificial intelligenceRobotConvolutional neural networkClassifier (UML)Human–robot interactionComputer visionMobile robot

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