Estimation and navigation methods with limited information for autonomous urban driving

Autonomous driving in dense urban areas presents an especially difficult task. First, globally localizing information, such as GPS signal, often proves to be unreliable in such areas due to signal shadowing and multipath errors. Second, the high‐definition environmental maps with sufficient informat...

Full description

Bibliographic Details
Main Authors: Jordan B. Chipka, Mark Campbell
Format: Article
Language:English
Published: Wiley 2019-11-01
Series:Engineering Reports
Online Access:https://doi.org/10.1002/eng2.12054
id doaj-27937043f70f45e2a77539ba00ea14cc
record_format Article
spelling doaj-27937043f70f45e2a77539ba00ea14cc2020-11-25T02:32:22ZengWileyEngineering Reports2577-81962019-11-0114n/an/a10.1002/eng2.12054Estimation and navigation methods with limited information for autonomous urban drivingJordan B. Chipka0Mark Campbell1Department of Mechanical and Aerospace Engineering Cornell University Ithaca New York New YorkDepartment of Mechanical and Aerospace Engineering Cornell University Ithaca New York New YorkAutonomous driving in dense urban areas presents an especially difficult task. First, globally localizing information, such as GPS signal, often proves to be unreliable in such areas due to signal shadowing and multipath errors. Second, the high‐definition environmental maps with sufficient information for autonomous navigation require a large amount of data to be collected from these areas, significant postprocessing of this data to generate the map, and then continual maintenance of the map to account for changes in the environment. This paper addresses the issue of autonomous driving in urban environments by investigating algorithms and an architecture to enable fully functional autonomous driving with little to no reliance on map‐based measurements or GPS signals. An extended Kalman filter with odometry, compass, and sparse landmark measurements as inputs is used to provide localization. Real‐time detection and estimation of key roadway features are used to create an understanding of the surrounding static scene. Navigation is accomplished by a compass‐based navigation control law. Experimental scene understanding results are obtained using computer vision and estimation techniques and demonstrate the ability to probabilistically infer key features of an intersection in real time. Key results from Monte Carlo studies demonstrate the proposed localization and navigation methods. These tests provide success rates of urban navigation under different environmental conditions, such as landmark density, and show that the vehicle can navigate to a goal nearly 10 km away without any external pose update at all. Field tests validate these simulated results and demonstrate that, for given test conditions, an expected range can be determined for a given success rate.https://doi.org/10.1002/eng2.12054
collection DOAJ
language English
format Article
sources DOAJ
author Jordan B. Chipka
Mark Campbell
spellingShingle Jordan B. Chipka
Mark Campbell
Estimation and navigation methods with limited information for autonomous urban driving
Engineering Reports
author_facet Jordan B. Chipka
Mark Campbell
author_sort Jordan B. Chipka
title Estimation and navigation methods with limited information for autonomous urban driving
title_short Estimation and navigation methods with limited information for autonomous urban driving
title_full Estimation and navigation methods with limited information for autonomous urban driving
title_fullStr Estimation and navigation methods with limited information for autonomous urban driving
title_full_unstemmed Estimation and navigation methods with limited information for autonomous urban driving
title_sort estimation and navigation methods with limited information for autonomous urban driving
publisher Wiley
series Engineering Reports
issn 2577-8196
publishDate 2019-11-01
description Autonomous driving in dense urban areas presents an especially difficult task. First, globally localizing information, such as GPS signal, often proves to be unreliable in such areas due to signal shadowing and multipath errors. Second, the high‐definition environmental maps with sufficient information for autonomous navigation require a large amount of data to be collected from these areas, significant postprocessing of this data to generate the map, and then continual maintenance of the map to account for changes in the environment. This paper addresses the issue of autonomous driving in urban environments by investigating algorithms and an architecture to enable fully functional autonomous driving with little to no reliance on map‐based measurements or GPS signals. An extended Kalman filter with odometry, compass, and sparse landmark measurements as inputs is used to provide localization. Real‐time detection and estimation of key roadway features are used to create an understanding of the surrounding static scene. Navigation is accomplished by a compass‐based navigation control law. Experimental scene understanding results are obtained using computer vision and estimation techniques and demonstrate the ability to probabilistically infer key features of an intersection in real time. Key results from Monte Carlo studies demonstrate the proposed localization and navigation methods. These tests provide success rates of urban navigation under different environmental conditions, such as landmark density, and show that the vehicle can navigate to a goal nearly 10 km away without any external pose update at all. Field tests validate these simulated results and demonstrate that, for given test conditions, an expected range can be determined for a given success rate.
url https://doi.org/10.1002/eng2.12054
work_keys_str_mv AT jordanbchipka estimationandnavigationmethodswithlimitedinformationforautonomousurbandriving
AT markcampbell estimationandnavigationmethodswithlimitedinformationforautonomousurbandriving
_version_ 1724819728035217408