机器人导航的路径自然语言处理方法

Keding Zhang, Qi Chen
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引用次数: 3

摘要

随着人工智能的发展,基于自然语言处理的机器人导航受到越来越多的研究关注。在现阶段,关于路由自然语言处理(RNLP)的研究很少,也没有专业的语料库,因此路由自然语言处理的方法一般是基于少量的受限语料库。提出了一种基于语义角色标注的语义抽取方法。首先,构建仿真环境,构建路由自然语言语料库。然后,在对路线自然语言语料库进行分析的基础上,提出了几种常见的路线自然语言块,并进行了分块实验。最后,在分块的基础上进行语义角色标注(SRL)。根据语义角色标注结果,生成导航意图图。实验结果表明,该方法适用于无约束的路线自然语言的语义提取。
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Route natural language processing method for robot navigation
With the development of artificial intelligence, robot navigation based on natural language processing is concerned by more researchs. At the present stage, there are few studies on route natural language processing (RNLP), and there is no professional corpus, so the method of route natural language processing is generally based on a small amount of restricted corpus. This paper puts forward a method of semantic extraction based on semantic role labeling. Firstly, the simulation environment is built, and the route natural language corpus is built. Then, based on the analysis of the route natural language corpus, this paper proposes several common chunks of route natural language, and carries out the chunking experiment. Finally, semantic role labeling (SRL) is performed on the basis of the chunking. According to the results of semantic role labeling, navigation intention map is generated. The experimental results show that this method is suitable for the semantic extraction of route natural languages with non restricted.
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