Home /Research /Forecasting Hand Gestures for Human-Drone Interaction
HRI

Forecasting Hand Gestures for Human-Drone Interaction

Jangwon Lee, Haodan Tan, David Crandall, Selma Šabanović

Year
2018
Citations
12

Abstract

Computer vision techniques that can anticipate people»s actions ahead of time could create more responsive and natural human-robot interaction systems. In this paper, we present a new human gesture forecasting framework for human-drone interaction. Our primary motivation is that despite growing interest in early recognition, little work has tried to understand how people experience these early recognition-based systems, and our human-drone forecasting framework will serve as a basis for conducting this human subjects research in future studies. We also introduce a new dataset with 22 videos of two human-drone interaction scenarios, and use it to test our gesture forecasting approach. Finally, we suggest follow-up procedures to investigate people»s experience in interacting with these early recognition-enabled systems.

Keywords

DroneGestureComputer scienceGesture recognitionHuman–computer interactionArtificial intelligenceHuman–robot interactionRobotMachine learning

Related papers

Browse all HRI papers