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Gaze-Based Intention Recognition for Human-Robot Collaboration

Valerio Belcamino, Miwa Takase, Mariya Kilina, Alessandro Carfì, Fulvio Mastrogiovanni, Akira Shimada, Sota Shimizu

Year
2024
Citations
8

Abstract

This work aims to tackle the intent recognition problem in Human-Robot Collaborative assembly scenarios. Precisely, we consider an interactive assembly of a wooden stool where the robot fetches the pieces in the correct order and the human builds the parts following the instruction manual. The intent recognition is limited to the idle state estimation and it is needed to ensure a better synchronization between the two agents. We carried out a comparison between two distinct solutions involving wearable sensors and eye tracking integrated into the perception pipeline of a flexible planning architecture based on Hierarchical Task Networks. At runtime, the wearable sensing module exploits the raw measurements from four 9-axis Inertial Measurement Units positioned on the wrists and hands of the user as an input for a Long Short-Term Memory Network. On the other hand, the eye tracking relies on a Head Mounted Display and Unreal Engine.

Keywords

Computer sciencePipeline (software)Wearable computerRobotTask (project management)Computer visionArtificial intelligenceHuman–computer interactionGazeHuman–robot interaction

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