Using Gaussian Mixture Models for Gesture Recognition During Haptically Guided Telemanipulation.

dc.centroEscuela de Ingenierías Industrialeses_ES
dc.contributor.authorPérez del Pulgar, Carlos J.
dc.contributor.authorSmisek, Jam
dc.contributor.authorRivas-Blanco, Irene
dc.contributor.authorSchiele, Andre
dc.contributor.authorMuñoz-Martínez, Víctor Fernando
dc.date.accessioned2024-09-25T16:43:58Z
dc.date.available2024-09-25T16:43:58Z
dc.date.issued2019
dc.departamentoIngeniería de Sistemas y Automática
dc.description.abstractHaptic guidance is a promising method for assisting an operator in solving robotic remote operation tasks. It can be implemented through different methods, such as virtual fixtures, where a predefined trajectory is used to generate guidance forces, or interactive guidance, where sensor measurements are used to assist the operator in real-time. During the last years, the use of learning from demonstration (LfD) has been proposed to perform interactive guidance based on simple tasks that are usually composed of a single stage. However, it would be desirable to improve this approach to solve complex tasks composed of several stages or gestures. This paper extends the LfD approach for object telemanipulation where the task to be solved is divided into a set of gestures that need to be detected. Thus, each gesture is previously trained and encoded within a Gaussian mixture model using LfD, and stored in a gesture library. During telemanipulation, depending on the sensory information, the gesture that is being carried out is recognized using the same LfD trained model for haptic guidance. The method was experimentally verified in a teleoperated peg-in-hole insertion task. A KUKA LWR4+ lightweight robot was remotely controlled with a Sigma.7 haptic device with LfD-based shared control. Finally, a comparison was carried out to evaluate the performance of Gaussian mixture models with a well-established gesture recognition method, continuous hidden Markov models, for the same task. Results show that the Gaussian mixture models (GMM)-based method slightly improves the success rate, with lower training and recognition processing times.es_ES
dc.description.sponsorshipDPI2016-80391-C3-1-Res_ES
dc.identifier.citationPérez-del-Pulgar, C.J.; Smisek, J.; Rivas-Blanco, I.; Schiele, A.; Muñoz, V.F. Using Gaussian Mixture Models for Gesture Recognition During Haptically Guided Telemanipulation. Electronics 2019, 8, 772.es_ES
dc.identifier.doi10.3390/electronics8070772
dc.identifier.urihttps://hdl.handle.net/10630/33306
dc.language.isoenges_ES
dc.publisherMDPIes_ES
dc.rightsAttribution 4.0 Internacional*
dc.rights.accessRightsopen accesses_ES
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/*
dc.subjectAprendizaje automáticoes_ES
dc.subjectVisión por ordenadores_ES
dc.subject.otherRoboticses_ES
dc.subject.otherTelemanipulationes_ES
dc.subject.otherHapticses_ES
dc.subject.otherMachine learninges_ES
dc.subject.otherGesture recognitiones_ES
dc.titleUsing Gaussian Mixture Models for Gesture Recognition During Haptically Guided Telemanipulation.es_ES
dc.typejournal articlees_ES
dc.type.hasVersionVoRes_ES
dspace.entity.typePublication
relation.isAuthorOfPublication02814d70-2bb0-4b1f-956c-3c05c00dcd8d
relation.isAuthorOfPublicationfe4d2dde-f7a6-4436-8b06-c0353c27a520
relation.isAuthorOfPublication.latestForDiscovery02814d70-2bb0-4b1f-956c-3c05c00dcd8d

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