AIHCROJul 24, 2020

Joint Mind Modeling for Explanation Generation in Complex Human-Robot Collaborative Tasks

arXiv:2007.12803v146 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of effective communication in human-robot teams, though it is incremental as it builds on existing mind modeling and XAI concepts.

The paper tackles the problem of enabling robots to generate explanations for human-robot collaboration by modeling human mental states, resulting in significantly improved collaboration performance and user perception in a cooking task.

Human collaborators can effectively communicate with their partners to finish a common task by inferring each other's mental states (e.g., goals, beliefs, and desires). Such mind-aware communication minimizes the discrepancy among collaborators' mental states, and is crucial to the success in human ad-hoc teaming. We believe that robots collaborating with human users should demonstrate similar pedagogic behavior. Thus, in this paper, we propose a novel explainable AI (XAI) framework for achieving human-like communication in human-robot collaborations, where the robot builds a hierarchical mind model of the human user and generates explanations of its own mind as a form of communications based on its online Bayesian inference of the user's mental state. To evaluate our framework, we conduct a user study on a real-time human-robot cooking task. Experimental results show that the generated explanations of our approach significantly improves the collaboration performance and user perception of the robot. Code and video demos are available on our project website: https://xfgao.github.io/xCookingWeb/.

Foundations

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