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Natural Language Communication with Robots

机译:与机器人进行自然语言交流

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摘要

We propose a framework for devising empirically testable algorithms for bridging the communication gap between humans and robots. We instantiate our framework in the context of a problem setting in which humans give instructions to robots using unrestricted natural language commands, with instruction sequences being subservient to building complex goal configurations in a blocks world. We show how one can collect meaningful training data and we propose three neural architectures for interpreting contextually grounded natural language commands. The proposed architectures allow us to correctly understand/ground the blocks that the robot should move when instructed by a human who uses unrestricted language. The architectures have more difficulty in correctly understanding/grounding the spatial relations required to place blocks correctly, especially when the blocks are not easily identifiable.
机译:我们提出了一个框架,用于设计可凭经验测试的算法,以弥合人与机器人之间的通信鸿沟。我们在问题设置的背景下实例化我们的框架,在这个问题中,人类使用不受限制的自然语言命令向机器人发出指令,而指令序列则可以服从于在块状世界中构建复杂的目标配置。我们展示了如何收集有意义的训练数据,并提出了三种用于解释基于上下文的自然语言命令的神经体系结构。所提出的体系结构使我们能够正确理解/接地,当使用不受限制的语言的人指示时,机器人应移动的块。这些架构在正确理解/接地正确放置块所需的空间关系方面存在更大的困难,尤其是在不容易识别块的情况下。

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