Automatic Building Robot Technology Ontology Based on Basic-Level Knowledge

Author:

Ngo Trung Lam, ,Lee Haeyeon,Mizukawa Makoto,

Abstract

When robot comes to our daily life, sharing knowledge is a key factor to realize the symbiosis between human and robot. In previous research, Robot Technology (RT) ontology was proposed as a knowledge base to help robot understands human’s intention in daily activities. However, the method to build that ontology was not discussed. This paper presents our approach to build RT ontology based on basic-level knowledge. We proposed a new structure for RT ontology with Where, What, and How layers based on 4W1H. As for input data, we used educational books and MIT’s ConceptNet. Our method is able to build RT ontology automatically by extracting objects and human activities from these data sources. We also implemented a weighting mechanism for the new ontology. Result shows that our method achieved better accuracy than conventional approach using Internet data.

Publisher

Fuji Technology Press Ltd.

Subject

Electrical and Electronic Engineering,General Computer Science

Reference17 articles.

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2. C. Havasi, R. Speer, and J. Alonso, “ConceptNet3: a Flexible, Multilingual Semantic Network for Common Sense Knowledge,” Proc. of Recent Advances in Natural Languages Processing, 2007.

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