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Division of AI, Big data and Block chain
1. Journal Articles
고신뢰 자율주행을 위한 악의 조건 측위성능 평가 시나리오 설계 방법 연구
조희섭
;
박영진
;
박명옥
;
손준우
Division of AI, Big data and Block chain
1. Journal Articles
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Title
고신뢰 자율주행을 위한 악의 조건 측위성능 평가 시나리오 설계 방법 연구
Alternative Title
Study on Designing Scenarios to Evaluate Adverse Condition Positioning for Highly Reliable Autonomous Driving
Issued Date
2023-12
Citation
조희섭. (2023-12). 고신뢰 자율주행을 위한 악의 조건 측위성능 평가 시나리오 설계 방법 연구. 한국자동차공학회 논문집, 31(12), 1021–1037. doi: 10.7467/KSAE.2023.31.12.1021
Type
Article
Author Keywords
Sensor limitation
;
Scenario-based evaluation
;
Adverse driving condition
;
Simulation
;
하이퍼 측위
;
센서 제약
;
시나리오 기반 평가
;
악의 조건
;
시뮬레이션
;
Hyper localization
ISSN
1225-6382
Abstract
In order for autonomous vehicles to drive safely on real roads, the role of high-definition maps is becoming increasingly important, and so is the importance of positioning technology. Since precise localization is an indispensable element of autonomous driving systems that recognizes the vehicle’s surroundings and determines its current location, the performance of localization should be evaluated not only in normal driving situations, but also in harsh driving situations that limit the ability to perceive the surroundings. In this study, we propose a methodology for building risk scenarios for the evaluation of localization performance in adverse driving conditions. To accomplish this, we define adverse conditions that affect the positioning performance of autonomous systems, break them down into perception related causal factors, and specify the effect of each on the physical and functional properties of sensors to derive risk scenarios caused by adverse conditions. In addition, by combining various scenarios with sensor specific perception limitations to build an integrated scenario, we found that realistic and efficient performance evaluation is possible. © 2023 KSAE.
URI
http://hdl.handle.net/20.500.11750/47539
DOI
10.7467/KSAE.2023.31.12.1021
Publisher
한국자동차공학회
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Cho, Hui-Sup
조희섭
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