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Understanding Instructions on Large Scale for Human-Robot Interaction

机译:大规模理解人机交互指令

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Correctly interpreting human instructions is the first step to human-robot interaction. Previous approaches to semantically parsing the instructions relied on large numbers of training examples with annotation to widely cover all words in a domain. Annotating large enough instructions with semantic forms needs exhaustive engineering efforts. Hence, we propose propagating the semantic lexicon to learn a semantic parser from limited annotations, whereas the parser still has the ability of interpreting instructions on a large scale. We assume that the semantically-close words have the same semantic form based on the fact that human usually uses different words to refer to a same object or task. Our approach softly maps the unobserved words/phrases to the semantic forms learned from the annotated copurs through a metric for knowledge-based lexical similarity. Experiments on the collected instructions showed that the semantic parser learned with lexicon propagation outperformed the baseline. Our approach provides an opportunity for the robots to understand the human instructions on a large scale.
机译:正确解释人类指令是人机交互的第一步。语义上解析指令的先前方法依赖于带有注释的大量训练示例,以广泛覆盖域中的所有单词。用语义形式注释足够大的指令需要详尽的工程工作。因此,我们建议传播语义词典,以从有限的注释中学习语义解析器,而解析器仍然具有大规模解释指令的能力。我们基于人类通常使用不同的词来指代相同的对象或任务这一事实,来假设语义上接近的词具有相同的语义形式。我们的方法通过基于知识的词汇相似性度量,将未观察到的词/短语柔和地映射到从带注释的copur中学习的语义形式。对收集到的指令进行的实验表明,通过词典传播学习的语义解析器的性能优于基线。我们的方法为机器人提供了一个机会,可以大规模地理解人类的指令。

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