共享控制机器人中的递归贝叶斯人类意图识别。

Siddarth Jain, Brenna Argall
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引用次数: 35

摘要

在共享控制中,有效的人机协作需要对人类用户的意图进行推理。在这项工作中,我们提出了共享自主下辅助遥操作过程中人类意图识别的数学公式。我们的递归贝叶斯过滤方法建模并融合了多个非语言观察,以概率推理用户的预期目标。除了上下文观察外,我们还将人类代理的行为建模并合并为具有可调节理性的目标导向行为,以告知潜在意图。我们研究了人类对机器人运动的推理,并进一步验证了我们的方法与人类受试者的研究,该研究评估了新手受试者在各种目标场景和任务下的自主意图推理性能。结果表明,我们的方法优于现有的解决方案,并证明了多个观测值的概率融合提高了共享控制操作的意图推理和性能。
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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Recursive Bayesian Human Intent Recognition in Shared-Control Robotics.

Effective human-robot collaboration in shared control requires reasoning about the intentions of the human user. In this work, we present a mathematical formulation for human intent recognition during assistive teleoperation under shared autonomy. Our recursive Bayesian filtering approach models and fuses multiple non-verbal observations to probabilistically reason about the intended goal of the user. In addition to contextual observations, we model and incorporate the human agent's behavior as goal-directed actions with adjustable rationality to inform the underlying intent. We examine human inference on robot motion and furthermore validate our approach with a human subjects study that evaluates autonomy intent inference performance under a variety of goal scenarios and tasks, by novice subjects. Results show that our approach outperforms existing solutions and demonstrates that the probabilistic fusion of multiple observations improves intent inference and performance for shared-control operation.

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