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Plug-and-play supervisory control using muscle and brain signals for real-time gesture and error detection

Joseph DelPreto, Andrés F. Salazar-Gómez, Stephanie Gil, Ramin Hasani, Frank H. Guenther, Daniela Rus

2020Autonomous Robots34 citationsDOIOpen Access PDF

Abstract

Abstract Effective human supervision of robots can be key for ensuring correct robot operation in a variety of potentially safety-critical scenarios. This paper takes a step towards fast and reliable human intervention in supervisory control tasks by combining two streams of human biosignals: muscle and brain activity acquired via EMG and EEG, respectively. It presents continuous classification of left and right hand-gestures using muscle signals, time-locked classification of error-related potentials using brain signals (unconsciously produced when observing an error), and a framework that combines these pipelines to detect and correct robot mistakes during multiple-choice tasks. The resulting hybrid system is evaluated in a “plug-and-play” fashion with 7 untrained subjects supervising an autonomous robot performing a target selection task. Offline analysis further explores the EMG classification performance, and investigates methods to select subsets of training data that may facilitate generalizable plug-and-play classifiers.

Topics & Concepts

Computer scienceTask (project management)RobotPlug-inGestureArtificial intelligenceElectroencephalographyControl (management)Selection (genetic algorithm)Human–robot interactionHuman–computer interactionReal-time computingPsychiatryEconomicsManagementProgramming languagePsychologyEEG and Brain-Computer InterfacesMuscle activation and electromyography studiesNeuroscience and Neural Engineering
Plug-and-play supervisory control using muscle and brain signals for real-time gesture and error detection | Litcius