A Robotic Context Query-Processing Framework Based on Spatio-Temporal Context Ontology.

Seokjun Lee, Incheol Kim
Author Information
  1. Seokjun Lee: Department of Computer Science, Kyonggi University, San 94-6, Yiui-dong, Youngtong-gu, Suwon-si 443-760, Korea. 20171102101@kyonggi.ac.kr. ORCID
  2. Incheol Kim: Department of Computer Science, Kyonggi University, San 94-6, Yiui-dong, Youngtong-gu, Suwon-si 443-760, Korea. kic@kyonggi.ac.kr. ORCID

Abstract

Service robots operating in indoor environments should recognize dynamic changes from sensors, such as RGB-depth (RGB-D) cameras, and recall the past context. Therefore, we propose a context query-processing framework, comprising spatio-temporal robotic context query language (ST-RCQL) and a spatio-temporal robotic context query-processing system (ST-RCQP), for service robots. We designed them based on spatio-temporal context ontology. ST-RCQL can query not only the current context knowledge, but also the past. In addition, ST-RCQL includes a variety of time operators and time constants; thus, queries can be written very efficiently. The ST-RCQP is a query-processing system equipped with a perception handler, working memory, and backward reasoner for real-time query-processing. Moreover, ST-RCQP accelerates query-processing speed by building a spatio-temporal index in the working memory, where percepts are stored. Through various qualitative and quantitative experiments, we demonstrate the high efficiency and performance of the proposed context query-processing framework.

Keywords

Grants

  1. 10060086/Ministry of Trade, Industry and Energy

Word Cloud

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