Continual Robot Learning using Self-Supervised Task Inference
Muhammad Burhan Hafez, Stefan Wermter

TL;DR
This paper presents a self-supervised method enabling robots to infer and learn new tasks continually from unlabeled demonstrations, improving multi-task learning and generalization to unseen tasks.
Contribution
It introduces a novel self-supervised task inference approach with a Task Inference Network that enhances continual multi-task learning in robots.
Findings
Outperforms baseline methods in fixed-set and continual learning scenarios.
Successfully infers tasks from incomplete demonstrations.
Generalizes to unseen tasks with one-shot learning.
Abstract
Endowing robots with the human ability to learn a growing set of skills over the course of a lifetime as opposed to mastering single tasks is an open problem in robot learning. While multi-task learning approaches have been proposed to address this problem, they pay little attention to task inference. In order to continually learn new tasks, the robot first needs to infer the task at hand without requiring predefined task representations. In this paper, we propose a self-supervised task inference approach. Our approach learns action and intention embeddings from self-organization of the observed movement and effect parts of unlabeled demonstrations and a higher-level behavior embedding from self-organization of the joint action-intention embeddings. We construct a behavior-matching self-supervised learning objective to train a novel Task Inference Network (TINet) to map an unlabeled…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Human Pose and Action Recognition · Reinforcement Learning in Robotics
