Home /Research /Dynamic Hand Gesture Recognition Based on 3D Convolutional Neural Network Models
HRI

Dynamic Hand Gesture Recognition Based on 3D Convolutional Neural Network Models

Wenjin Zhang, Jiacun Wang

Year
2019
Citations
45

Abstract

Hand gesture is a natural communication method which could be used to create a more convenient interface for human-robot interaction. In this study, we use the simplest laptop camera as an input sensor. We designed a 3D hand gesture recognition model. The model is trained with the Jester dataset. After being trained about one day in a MacBook Pro (i5 2.3GHz), the model reached an average accuracy of 90%. We built a web application that implements the hand gesture recognition system and provides the recognition service to users.

Keywords

Computer scienceLaptopGesture recognitionGestureConvolutional neural networkArtificial intelligenceComputer visionInterface (matter)Speech recognition

Related papers

Browse all HRI papers