Home /Research /Intention Recognition with Recurrent Neural Networks for Dynamic Human-Robot Collaboration
HRI

Intention Recognition with Recurrent Neural Networks for Dynamic Human-Robot Collaboration

Matija Mavsar, Miha Deniša, Bojan Nemec, Aleš Ude

Year
2021
Citations
15

Abstract

A new method to recognize the intention of a human worker while performing a collaborative task with a robot is proposed. For this purpose, two recurrent neural network (RNN) architectures capable of predicting the worker's target were developed. The first uses marker-based tracking of hand positions and the second RGB-D videos of human motion. The system was implemented to perform a collaborative assembly task. The results show high intention prediction accuracy for both networks, with accuracy increasing once a larger portion of human motion has been observed, making the proposed method viable for efficient and dynamic human-robot collaboration. Furthermore, we developed a framework that enables online adaptation of robot trajectories based on estimated human intentions.

Keywords

Computer scienceTask (project management)Artificial intelligenceRobotRecurrent neural networkArtificial neural networkHuman–robot interactionAdaptation (eye)Motion (physics)Human–computer interaction

Related papers

Browse all HRI papers