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Optimal Modality Selection for Cooperative Human–Robot Task Completion

机译:人机协作任务完成的最优模式选择

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摘要

Human–robot cooperation in complex environments must be fast, accurate, and resilient. This requires efficient communication channels where robots need to assimilate information using a plethora of verbal and nonverbal modalities such as hand gestures, speech, and gaze. However, even though hybrid human–robot communication frameworks and multimodal communication have been studied, a systematic methodology for designing multimodal interfaces does not exist. This paper addresses the gap by proposing a novel methodology to generate multimodal lexicons which maximizes multiple performance metrics over a wide range of communication modalities (i.e., lexicons). The metrics are obtained through a mixture of simulation and real-world experiments. The methodology is tested in a surgical setting where a robot cooperates with a surgeon to complete a mock abdominal incision and closure task by delivering surgical instruments. Experimental results show that predicted optimal lexicons significantly outperform predicted suboptimal lexicons ( p<0.05 ) in all metrics validating the predictability of the methodology. The methodology is validated in two scenarios (with and without modeling the risk of a human–robot collision) and the differences in the lexicons are analyzed.
机译:复杂环境中的人机协作必须快速,准确且具有弹性。这需要高效的通信渠道,在这种渠道中,机器人需要使用大量的言语和非言语形式(例如手势,语音和注视)来吸收信息。但是,尽管已经研究了人机混合通信框架和多模式通信,但仍不存在用于设计多模式接口的系统方法。本文通过提出一种新颖的方法来生成多模式词典来解决这一空白,该方法可以在广泛的通信模式(即词典)上最大化多个性能指标。这些指标是通过模拟和实际实验混合而成的。该方法在外科手术环境中进行了测试,其中机器人与外科医生合作以通过交付外科器械来完成模拟的腹部切口和闭合任务。实验结果表明,在验证该方法具有可预测性的所有指标中,预测的最佳词典显着优于预测的次优词典(p <0.05)。该方法论已在两种情况下进行了验证(有无模型对人机碰撞的风险进行建模),并分析了词典中的差异。

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