High-definition map creation and update for autonomous driving

Autonomous driving technology is now evolving at an unprecedented speed. HD maps, which are embedded with highly precise and detailed road spatial and object information, play an important role in supporting autonomous vehicles. This thesis presents the development of a semi-automated HD map creatio...

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Main Author: Xia, Wanru
Format: Others
Language:English
Published: KTH, Geoinformatik 2021
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-298491
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spelling ndltd-UPSALLA1-oai-DiVA.org-kth-2984912021-07-08T05:24:16ZHigh-definition map creation and update for autonomous drivingengHög-definition karta skapande och uppdatering för autonom körningXia, WanruKTH, Geoinformatik2021HD mapmobile LiDARpoint cloudroad edgeroad surfaceroad markingOther Social SciencesAnnan samhällsvetenskapAutonomous driving technology is now evolving at an unprecedented speed. HD maps, which are embedded with highly precise and detailed road spatial and object information, play an important role in supporting autonomous vehicles. This thesis presents the development of a semi-automated HD map creation and updating method that is capable of extracting basic road feature information to HD maps by employing raw MLS point cloud data. The proposed HD map creation method consists of four steps: Road edge extraction, road surface extraction, road marking extraction and driving line generation. First, an existing curb-based road edge detection method is applied to extract road edge candidate points according to the elevation difference and slope between points. This thesis develops an edge vectorization algorithm based on the point's distance-to-trajectory. Then, the road surface is extracted by filtering the points inside fitted edges on the XY plane within a range of the ground elevation. In the next step, instead of using intensity to detect road markings used by most studies, this thesis fuses point clouds and images to assign each point with an RGB value to segment marking points. Marking objects are extracted by conditional Euclidean clustering and classified according to a manually defined decision tree. Finally, driving lines are generated based on the vectorized road edge and lane markings. The HD map update method varies depending on which data source is updated for the road segments, including updating images only, updating point clouds only and updating both images and point clouds. The method is evaluated by six point clouds and image datasets collected from different types of roads. The extracted road edges are assessed by both length- and buffer-based assessment methods. The results indicate that the road edge extraction algorithm performs well in all three dimensions. The road surface extraction results confirm the high accuracy of extracted edges. In addition, the quantitative evaluations of road markings demonstrate that the proposed road marking extraction method achieves an average recall, precision, and F1-score of 94.50%, 81.65% and 87.09%. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-298491TRITA-ABE-MBT ; 21458application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic HD map
mobile LiDAR
point cloud
road edge
road surface
road marking
Other Social Sciences
Annan samhällsvetenskap
spellingShingle HD map
mobile LiDAR
point cloud
road edge
road surface
road marking
Other Social Sciences
Annan samhällsvetenskap
Xia, Wanru
High-definition map creation and update for autonomous driving
description Autonomous driving technology is now evolving at an unprecedented speed. HD maps, which are embedded with highly precise and detailed road spatial and object information, play an important role in supporting autonomous vehicles. This thesis presents the development of a semi-automated HD map creation and updating method that is capable of extracting basic road feature information to HD maps by employing raw MLS point cloud data. The proposed HD map creation method consists of four steps: Road edge extraction, road surface extraction, road marking extraction and driving line generation. First, an existing curb-based road edge detection method is applied to extract road edge candidate points according to the elevation difference and slope between points. This thesis develops an edge vectorization algorithm based on the point's distance-to-trajectory. Then, the road surface is extracted by filtering the points inside fitted edges on the XY plane within a range of the ground elevation. In the next step, instead of using intensity to detect road markings used by most studies, this thesis fuses point clouds and images to assign each point with an RGB value to segment marking points. Marking objects are extracted by conditional Euclidean clustering and classified according to a manually defined decision tree. Finally, driving lines are generated based on the vectorized road edge and lane markings. The HD map update method varies depending on which data source is updated for the road segments, including updating images only, updating point clouds only and updating both images and point clouds. The method is evaluated by six point clouds and image datasets collected from different types of roads. The extracted road edges are assessed by both length- and buffer-based assessment methods. The results indicate that the road edge extraction algorithm performs well in all three dimensions. The road surface extraction results confirm the high accuracy of extracted edges. In addition, the quantitative evaluations of road markings demonstrate that the proposed road marking extraction method achieves an average recall, precision, and F1-score of 94.50%, 81.65% and 87.09%.
author Xia, Wanru
author_facet Xia, Wanru
author_sort Xia, Wanru
title High-definition map creation and update for autonomous driving
title_short High-definition map creation and update for autonomous driving
title_full High-definition map creation and update for autonomous driving
title_fullStr High-definition map creation and update for autonomous driving
title_full_unstemmed High-definition map creation and update for autonomous driving
title_sort high-definition map creation and update for autonomous driving
publisher KTH, Geoinformatik
publishDate 2021
url http://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-298491
work_keys_str_mv AT xiawanru highdefinitionmapcreationandupdateforautonomousdriving
AT xiawanru hogdefinitionkartaskapandeochuppdateringforautonomkorning
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