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Effective and Robust Natural Language Understanding for Human-Robot Interaction

机译:对人机互动的有效和强大的自然语言理解

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Robots are slowly becoming part of everyday life, as they are being marketed for commercial applications (viz. telepresence, cleaning or entertainment). Thus, the ability to interact with non-expert users is becoming a key requirement. Even if user utterances can be efficiently recognized and transcribed by Automatic Speech Recognition systems, several issues arise in translating them into suitable robotic actions. In this paper, we will discuss both approaches providing two existing Natural Language Understanding workflows for Human Robot Interaction. First, we discuss a grammar based approach: it is based on grammars thus recognizing a restricted set of commands. Then, a data driven approach, based on a free-from speech recognizer and a statistical semantic parser, is discussed. The main advantages of both approaches are discussed, also from an engineering perspective, i.e. considering the effort of realizing HRI systems, as well as their reusability and robustness. An empirical evaluation of the proposed approaches is carried out on several datasets, in order to understand performances and identify possible improvements towards the design of NLP components in HRI.
机译:机器人正在慢慢成为日常生活的一部分,因为他们正在为商业应用而销售(QIZ。小说,清洁或娱乐)。因此,与非专家用户互动的能力正在成为一个关键要求。即使用户话语可以通过自动语音识别系统有效地识别和转录,也会产生几个问题,即将其转换为合适的机器人动作。在本文中,我们将讨论两种方法,为人类机器人互动提供了两个现有的自然语言理解工作流程。首先,我们讨论基于语法的方法:它基于语法,从而识别受限制的一组命令。然后,讨论了基于自由来自来自语音识别器和统计语义解析器的数据驱动方法。讨论了两种方法的主要优点,也来自工程视角,即考虑到实现HRI系统的努力,以及他们的可重用性和鲁棒性。对拟议方法的实证评估在多个数据集上进行,以便了解表演并确定HRI中NLP组分设计的可能改进。

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