Home /Research /Real-time gesture recognition using a humanoid robot with a deep neural architecture
HRI

Real-time gesture recognition using a humanoid robot with a deep neural architecture

Pablo Barros, German I. Parisi, Stefan Wermter

Year
2014
Citations
46

Abstract

Dynamic gesture recognition is one of the most interesting and challenging areas of Human-Robot-Interaction (HRI). Problems like image segmentation, temporal and spatial feature extraction and real time recognition are the most promising issues to name in this context. This work proposes a deep neural model to recognize dynamic gestures with minimal image preprocessing and real time recognition in an experimental set up using a humanoid robot. We conducted two experiments with command gestures in an offline fashion and for demonstration in a Human-Robot-Interaction (HRI) scenario. Our results showed that the proposed model achieves high classification rates of the gestures executed by different subjects, who perform them with varying speed. With our additional audio feedback we demonstrate that our system performs in real time.

Keywords

Computer scienceGestureArtificial intelligenceGesture recognitionPreprocessorHumanoid robotFeature extractionComputer visionHuman–robot interactionSegmentation

Related papers

Browse all HRI papers