Fast User Adaptation for Human Motion Prediction in Physical Human-Robot Interaction
Hee-Seung Moon, Jiwon Seo

TL;DR
This paper introduces a meta-learning framework that enables rapid user-specific adaptation of human motion prediction models in human-robot interaction, significantly improving prediction accuracy for unseen users with minimal data.
Contribution
The study proposes a novel model structure and meta-learning algorithm that allows fast adaptation to individual users in human motion prediction tasks, addressing behavioral variability.
Findings
Outperforms existing meta-learning baselines in predicting unseen user movements.
Requires only a small amount of user data for effective adaptation.
Demonstrates improved accuracy in collaborative human-robot scenarios.
Abstract
Accurate prediction of human movements is required to enhance the efficiency of physical human-robot interaction. Behavioral differences across various users are crucial factors that limit the prediction of human motion. Although recent neural network-based modeling methods have improved their prediction accuracy, most did not consider an effective adaptations to different users, thereby employing the same model parameters for all users. To deal with this insufficiently addressed challenge, we introduce a meta-learning framework to facilitate the rapid adaptation of the model to unseen users. In this study, we propose a model structure and a meta-learning algorithm specialized to enable fast user adaptation in predicting human movements in cooperative situations with robots. The proposed prediction model comprises shared and adaptive parameters, each addressing the user's general and…
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