HCCLROOct 26, 2023

Navigating to Success in Multi-Modal Human-Robot Collaboration: Analysis and Corpus Release

arXiv:2310.17568v11 citationsh-index: 20
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of maintaining common ground in remote human-robot collaboration, with incremental contributions to understanding multi-modal strategies.

The study investigated how multi-modal communication affects success in human-robot collaborative exploration tasks, finding that requesting photos improved identification of key entities like doorways without hindering overall area exploration.

Human-guided robotic exploration is a useful approach to gathering information at remote locations, especially those that might be too risky, inhospitable, or inaccessible for humans. Maintaining common ground between the remotely-located partners is a challenge, one that can be facilitated by multi-modal communication. In this paper, we explore how participants utilized multiple modalities to investigate a remote location with the help of a robotic partner. Participants issued spoken natural language instructions and received from the robot: text-based feedback, continuous 2D LIDAR mapping, and upon-request static photographs. We noticed that different strategies were adopted in terms of use of the modalities, and hypothesize that these differences may be correlated with success at several exploration sub-tasks. We found that requesting photos may have improved the identification and counting of some key entities (doorways in particular) and that this strategy did not hinder the amount of overall area exploration. Future work with larger samples may reveal the effects of more nuanced photo and dialogue strategies, which can inform the training of robotic agents. Additionally, we announce the release of our unique multi-modal corpus of human-robot communication in an exploration context: SCOUT, the Situated Corpus on Understanding Transactions.

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