Home /Research /Spiking Neural Networks for early prediction in human–robot collaboration
SURGICAL

Spiking Neural Networks for early prediction in human–robot collaboration

Tian Zhou, Juan Wachs

Year
2019
Citations
20

Abstract

This article introduces the Turn-Taking Spiking Neural Network (TTSNet), which is a cognitive model to perform early turn-taking prediction about a human or agent’s intentions. The TTSNet framework relies on implicit and explicit multimodal communication cues (physical, neurological and physiological) to be able to predict when the turn-taking event will occur in a robust and unambiguous fashion. To test the theories proposed, the TTSNet framework was implemented on an assistant robotic nurse, which predicts surgeon’s turn-taking intentions and delivers surgical instruments accordingly. Experiments were conducted to evaluate TTSNet’s performance in early turn-taking prediction. It was found to reach an [Formula: see text] score of 0.683 given 10% of completed action, and an [Formula: see text] score of 0.852 at 50% and 0.894 at 100% of the completed action. This performance outperformed multiple state-of-the-art algorithms, and surpassed human performance when limited partial observation is given (<40%). Such early turn-taking prediction capability would allow robots to perform collaborative actions proactively, in order to facilitate collaboration and increase team efficiency.

Keywords

Computer scienceAction (physics)RobotArtificial neural networkArtificial intelligenceHuman–robot interactionEvent (particle physics)Spiking neural networkMachine learningOrder (exchange)

Related papers

Browse all SURGICAL papers