High Definition Map-Based Localization Using ADAS Environment Sensors for Application to Automated Driving Vehicles

This paper presents high definition (HD) map-based localization using advanced driver assistance system (ADAS) environment sensors for application to automated driving vehicles. A variety of autonomous driving technologies are being developed using expensive and high-performance sensors, but limitat...

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Main Authors: Donghoon Shin, Kang-moon Park, Manbok Park
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/10/14/4924
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spelling doaj-2e6d4a5d4a7048aab40b7750885c9fbf2020-11-25T02:35:48ZengMDPI AGApplied Sciences2076-34172020-07-01104924492410.3390/app10144924High Definition Map-Based Localization Using ADAS Environment Sensors for Application to Automated Driving VehiclesDonghoon Shin0Kang-moon Park1Manbok Park2Department of Mechanical Systems Engineering, Sookmyung Women’s University, Seoul 04310, KoreaDepartment of Computer Science, College of Natural Science, Republic of Korea Naval Academy, Changwon-si 51704, KoreaDepartment of Electrical Engineering, College of Convergence Technology, Korea National University of Transportation, Chungju-si 27469, KoreaThis paper presents high definition (HD) map-based localization using advanced driver assistance system (ADAS) environment sensors for application to automated driving vehicles. A variety of autonomous driving technologies are being developed using expensive and high-performance sensors, but limitations exist due to several practical issues. In respect of the application of autonomous driving cars in the near future, it is necessary to ensure autonomous driving performance by effectively utilizing sensors that are already installed for ADAS purposes. Additionally, the most common localization algorithm, which is usually used lane information only, has a highly unstable disadvantage in the absence of that information. Therefore, it is essential to ensure localization performance with other road features such as guardrails when there are no lane markings. In this study, we would like to propose a localization algorithm that could be implemented in the near future by using low-cost sensors and HD maps. The proposed localization algorithm consists of several sections: environment feature representation with low-cost sensors, digital map analysis and application, position correction based on map-matching, designated validation gates, and extended Kalman filter (EKF)-based localization filtering and fusion. Lane information is detected by monocular vision in front of the vehicle. A guardrail is perceived by radar by distinguishing low-speed object measurements and by accumulating several steps to extract wall features. These lane and guardrail information are able to correct the host vehicle position by using the iterative closest point (ICP) algorithm. The rigid transformation between the digital high definition map (HD map) and environment features is calculated through ICP matching. Each corrected vehicle position by map-matching is selected and merged based on EKF with double updating. The proposed algorithm was verified through simulation based on actual driving log data.https://www.mdpi.com/2076-3417/10/14/4924high definition(HD) mapadvanced driver assistance systems (ADASs)localizationiterative closest point (ICP)automated driving vehicle
collection DOAJ
language English
format Article
sources DOAJ
author Donghoon Shin
Kang-moon Park
Manbok Park
spellingShingle Donghoon Shin
Kang-moon Park
Manbok Park
High Definition Map-Based Localization Using ADAS Environment Sensors for Application to Automated Driving Vehicles
Applied Sciences
high definition(HD) map
advanced driver assistance systems (ADASs)
localization
iterative closest point (ICP)
automated driving vehicle
author_facet Donghoon Shin
Kang-moon Park
Manbok Park
author_sort Donghoon Shin
title High Definition Map-Based Localization Using ADAS Environment Sensors for Application to Automated Driving Vehicles
title_short High Definition Map-Based Localization Using ADAS Environment Sensors for Application to Automated Driving Vehicles
title_full High Definition Map-Based Localization Using ADAS Environment Sensors for Application to Automated Driving Vehicles
title_fullStr High Definition Map-Based Localization Using ADAS Environment Sensors for Application to Automated Driving Vehicles
title_full_unstemmed High Definition Map-Based Localization Using ADAS Environment Sensors for Application to Automated Driving Vehicles
title_sort high definition map-based localization using adas environment sensors for application to automated driving vehicles
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2020-07-01
description This paper presents high definition (HD) map-based localization using advanced driver assistance system (ADAS) environment sensors for application to automated driving vehicles. A variety of autonomous driving technologies are being developed using expensive and high-performance sensors, but limitations exist due to several practical issues. In respect of the application of autonomous driving cars in the near future, it is necessary to ensure autonomous driving performance by effectively utilizing sensors that are already installed for ADAS purposes. Additionally, the most common localization algorithm, which is usually used lane information only, has a highly unstable disadvantage in the absence of that information. Therefore, it is essential to ensure localization performance with other road features such as guardrails when there are no lane markings. In this study, we would like to propose a localization algorithm that could be implemented in the near future by using low-cost sensors and HD maps. The proposed localization algorithm consists of several sections: environment feature representation with low-cost sensors, digital map analysis and application, position correction based on map-matching, designated validation gates, and extended Kalman filter (EKF)-based localization filtering and fusion. Lane information is detected by monocular vision in front of the vehicle. A guardrail is perceived by radar by distinguishing low-speed object measurements and by accumulating several steps to extract wall features. These lane and guardrail information are able to correct the host vehicle position by using the iterative closest point (ICP) algorithm. The rigid transformation between the digital high definition map (HD map) and environment features is calculated through ICP matching. Each corrected vehicle position by map-matching is selected and merged based on EKF with double updating. The proposed algorithm was verified through simulation based on actual driving log data.
topic high definition(HD) map
advanced driver assistance systems (ADASs)
localization
iterative closest point (ICP)
automated driving vehicle
url https://www.mdpi.com/2076-3417/10/14/4924
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