ROOct 30, 2017

How to be Helpful? Supportive Behaviors and Personalization for Human-Robot Collaboration

arXiv:1710.11194v220 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of making human-robot collaboration more proactive and supportive for workers in unstructured environments, representing an incremental advance.

The paper tackles the problem of enabling robots to effectively support humans in collaborative tasks despite limited capabilities and incomplete information, demonstrating robust assistance in a furniture construction scenario.

The field of Human-Robot Collaboration (HRC) has seen a considerable amount of progress in recent years. Thanks in part to advances in control and perception algorithms, robots have started to work in increasingly unstructured environments, where they operate side by side with humans to achieve shared tasks. However, little progress has been made toward the development of systems that are truly effective in supporting the human, proactive in their collaboration, and that can autonomously take care of part of the task. In this work, we present a collaborative system capable of assisting a human worker despite limited manipulation capabilities, incomplete model of the task, and partial observability of the environment. Our framework leverages information from a high-level, hierarchical model that is shared between the human and robot and that enables transparent synchronization between the peers and mutual understanding of each other's plan. More precisely, we firstly derive a partially observable Markov model from the high-level task representation; we then use an online Monte-Carlo solver to compute a short-horizon robot-executable plan. The resulting policy is capable of interactive replanning on-the-fly, dynamic error recovery, and identification of hidden user preferences. We demonstrate that the system is capable of robustly providing support to the human in a realistic furniture construction task.

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