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IEICE TRANSACTIONS on Information

Ontology-Based Driving Decision Making: A Feasibility Study at Uncontrolled Intersections

Lihua ZHAO, Ryutaro ICHISE, Zheng LIU, Seiichi MITA, Yutaka SASAKI

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Summary :

This paper presents an ontology-based driving decision making system, which can promptly make safety decisions in real-world driving. Analyzing sensor data for improving autonomous driving safety has become one of the most promising issues in the autonomous vehicles research field. However, representing the sensor data in a machine understandable format for further knowledge processing still remains a challenging problem. In this paper, we introduce ontologies designed for autonomous vehicles and ontology-based knowledge base, which are used for representing knowledge of maps, driving paths, and perceived driving environments. Advanced Driver Assistance Systems (ADAS) are developed to improve safety of autonomous vehicles by accessing to the ontology-based knowledge base. The ontologies can be reused and extended for constructing knowledge base for autonomous vehicles as well as for implementing different types of ADAS such as decision making system.

Publication
IEICE TRANSACTIONS on Information Vol.E100-D No.7 pp.1425-1439
Publication Date
2017/07/01
Publicized
2017/04/05
Online ISSN
1745-1361
DOI
10.1587/transinf.2016EDP7337
Type of Manuscript
PAPER
Category
Artificial Intelligence, Data Mining

Authors

Lihua ZHAO
  National Institute of Advanced Industrial Science and Technology (AIST)
Ryutaro ICHISE
  National Institute of Informatics (NII)
Zheng LIU
  University of British Columbia
Seiichi MITA
  Toyota Technological Institute (TTI)
Yutaka SASAKI
  Toyota Technological Institute (TTI)

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