Patching interpretable And-Or-Graph knowledge representation using augmented reality

Applied AI letters Pub Date : 2021-10-20 DOI:10.1002/ail2.43
Hangxin Liu, Yixin Zhu, Song-Chun Zhu
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引用次数: 1

Abstract

We present a novel augmented reality (AR) interface to provide effective means to diagnose a robot's erroneous behaviors, endow it with new skills, and patch its knowledge structure represented by an And-Or-Graph (AOG). Specifically, an AOG representation of opening medicine bottles is learned from human demonstration and yields a hierarchical structure that captures the spatiotemporal compositional nature of the given task, which is highly interpretable for the users. Through a series of psychological experiments, we demonstrate that the explanations of a robotic system, inherited from and produced by the AOG, can better foster human trust compared to other forms of explanations. Moreover, by visualizing the knowledge structure and robot states, the AR interface allows human users to intuitively understand what the robot knows, supervise the robot's task planner, and interactively teach the robot with new actions. Together, users can quickly identify the reasons for failures and conveniently patch the current knowledge structure to prevent future errors. This capability demonstrates the interpretability of our knowledge representation and the new forms of interactions afforded by the proposed AR interface.

Abstract Image

使用增强现实修补可解释的And-Or-Graph知识表示
本文提出了一种新的增强现实(AR)界面,为机器人错误行为诊断、赋予机器人新技能、修补其知识结构提供了有效手段。具体来说,打开药瓶的AOG表示是从人类演示中学习的,并产生一个层次结构,该结构捕获了给定任务的时空组成性质,这对用户来说是高度可解释的。通过一系列的心理学实验,我们证明,与其他形式的解释相比,继承并由AOG产生的机器人系统的解释可以更好地培养人类的信任。此外,通过可视化的知识结构和机器人状态,AR界面可以让人类用户直观地了解机器人知道什么,监督机器人的任务计划,并交互式地教机器人新的动作。用户可以快速识别故障的原因,并方便地修补当前的知识结构,以防止未来的错误。这种能力证明了我们的知识表示的可解释性以及所提出的AR接口提供的新形式的交互。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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