论文标题

在机器人操纵中避免人为辅助失败的注意转移模型

An Attention Transfer Model for Human-Assisted Failure Avoidance in Robot Manipulations

论文作者

Song, Boyi, Peng, Yuntao, Luo, Ruijiao, Liu, Rui

论文摘要

由于现实世界的动态和硬件不确定性,机器人不可避免地会在任务执行中失败,从而导致不希望的甚至危险的执行。为了避免失败并提高机器人性能,在早期阶段识别和纠正异常机器人执行至关重要。但是,由于推理能力和知识存储的有限,机器人在计划和执行方面的自我诊断和正确正确的异常是具有挑战性的。为了提高机器人的自我诊断能力,在这项研究中,开发了一种新型的人为机器人注意转移(\ textIt {\ textbf {h2r-at}})方法,以通过利用人类的说明来识别机器人操纵错误。 \ textIt {\ textbf {h2r-at}}是通过将注意力映射机制融合到一个新颖的堆叠神经网络模型中,将人的言语注意力转移到机器人视觉注意力中来开发的。通过注意力转移,机器人了解\ textit {what}和\ textit {where}人类的关注点是识别和纠正异常操作。两个代表性的任务方案:````为厨房里的人提供水为水提供水'',``在工厂中捡起有缺陷的装备在仿真框架Craihri中设计了,并带有异常的机器人操纵;招募了$ 252美元的志愿者,以提供约12000个口头提醒,以学习和测试\ textit {\ textbf {h2r-at}}。通过转移注意力的73.68美元的高精度$ 73.68 \%$的高精度以及$ 66.86 \%$的高准确性在避免抓握失败时的高精度得到了验证。

Due to real-world dynamics and hardware uncertainty, robots inevitably fail in task executions, resulting in undesired or even dangerous executions. In order to avoid failures and improve robot performance, it is critical to identify and correct abnormal robot executions at an early stage. However, due to limited reasoning capability and knowledge storage, it is challenging for robots to self-diagnose and -correct their own abnormality in both planning and executing. To improve robot self diagnosis capability, in this research a novel human-to-robot attention transfer (\textit{\textbf{H2R-AT}}) method was developed to identify robot manipulation errors by leveraging human instructions. \textit{\textbf{H2R-AT}} was developed by fusing attention mapping mechanism into a novel stacked neural networks model, transferring human verbal attention into robot visual attention. With the attention transfer, a robot understands \textit{what} and \textit{where} human concerns are to identify and correct abnormal manipulations. Two representative task scenarios: ``serve water for a human in a kitchen" and ``pick up a defective gear in a factory" were designed in a simulation framework CRAIhri with abnormal robot manipulations; and $252$ volunteers were recruited to provide about 12000 verbal reminders to learn and test \textit{\textbf{H2R-AT}}. The method effectiveness was validated by the high accuracy of $73.68\%$ in transferring attention, and the high accuracy of $66.86\%$ in avoiding grasping failures.

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