基于语音的协作任务机器人动作自动生成

Manizheh Zand, K. Kodur, Maria Kyrarini
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引用次数: 0

摘要

机器人有潜力帮助人们完成日常任务,比如做饭。与机器人进行口头和非结构化的交流非常重要,因为口头语言是人类交流的主要形式。本文提出了一种从非结构化语音中自动生成机器人动作的新框架。通过收集15名参与者在随机干扰的环境中坐在椅子上准备饭菜的数据,对拟议的框架进行了评估。当用户可能在进行不相关的对话时,系统可以识别并响应任务序列,即使用户的讲话可能是无结构的和语法错误的。该系统的准确率为98.6%,这是一个非常有希望的发现。
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Automatic Generation of Robot Actions for Collaborative Tasks from Speech
Robots have the potential to assist people in daily tasks, such as cooking a meal. Communicating with the robots verbally and in an unstructured way is important, as spoken language is the main form of communication for humans. This paper proposes a novel framework that automatically generates robot actions from unstructured speech. The proposed frame-work was evaluated by collecting data from 15 participants preparing their meals while seating on a chair in a randomly disrupted environment. The system can identify and respond to a task sequence while the user may be engaged in unrelated conversations, even if the user's speech might be unstructured and grammatically incorrect. The accuracy of the proposed system is 98.6%, which is a very promising finding.
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