Road detection based on the fusion of Lidar and image data

In this article, we propose a road detection method based on the fusion of Lidar and image data under the framework of conditional random field. Firstly, Lidar point clouds are projected into the monocular images by cross calibration to get the sparse height images, and then we get high-resolution h...

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Main Authors: Xiaofeng Han, Huan Wang, Jianfeng Lu, Chunxia Zhao
Format: Article
Language:English
Published: SAGE Publishing 2017-11-01
Series:International Journal of Advanced Robotic Systems
Online Access:https://doi.org/10.1177/1729881417738102
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spelling doaj-2d908bac4767428092feec879d6687412020-11-25T02:52:41ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142017-11-011410.1177/1729881417738102Road detection based on the fusion of Lidar and image dataXiaofeng HanHuan WangJianfeng LuChunxia ZhaoIn this article, we propose a road detection method based on the fusion of Lidar and image data under the framework of conditional random field. Firstly, Lidar point clouds are projected into the monocular images by cross calibration to get the sparse height images, and then we get high-resolution height images via a joint bilateral filter. Then, for all the training image pixels which have corresponding Lidar points, we extract their features from color image and Lidar point clouds, respectively, and use these features together with the location features to train an Adaboost classifier. After that, all the testing pixels are classified into road or non-road under a conditional random field framework. In this conditional random field framework, we use the scores computed from the Adaboost classifier as the unary potential and take the height value of each pixel and its color information into consideration together for the pairwise potential. Finally, experimental tests have been carried out on the KITTI Road data set, and the results show that our method performs well on this data set.https://doi.org/10.1177/1729881417738102
collection DOAJ
language English
format Article
sources DOAJ
author Xiaofeng Han
Huan Wang
Jianfeng Lu
Chunxia Zhao
spellingShingle Xiaofeng Han
Huan Wang
Jianfeng Lu
Chunxia Zhao
Road detection based on the fusion of Lidar and image data
International Journal of Advanced Robotic Systems
author_facet Xiaofeng Han
Huan Wang
Jianfeng Lu
Chunxia Zhao
author_sort Xiaofeng Han
title Road detection based on the fusion of Lidar and image data
title_short Road detection based on the fusion of Lidar and image data
title_full Road detection based on the fusion of Lidar and image data
title_fullStr Road detection based on the fusion of Lidar and image data
title_full_unstemmed Road detection based on the fusion of Lidar and image data
title_sort road detection based on the fusion of lidar and image data
publisher SAGE Publishing
series International Journal of Advanced Robotic Systems
issn 1729-8814
publishDate 2017-11-01
description In this article, we propose a road detection method based on the fusion of Lidar and image data under the framework of conditional random field. Firstly, Lidar point clouds are projected into the monocular images by cross calibration to get the sparse height images, and then we get high-resolution height images via a joint bilateral filter. Then, for all the training image pixels which have corresponding Lidar points, we extract their features from color image and Lidar point clouds, respectively, and use these features together with the location features to train an Adaboost classifier. After that, all the testing pixels are classified into road or non-road under a conditional random field framework. In this conditional random field framework, we use the scores computed from the Adaboost classifier as the unary potential and take the height value of each pixel and its color information into consideration together for the pairwise potential. Finally, experimental tests have been carried out on the KITTI Road data set, and the results show that our method performs well on this data set.
url https://doi.org/10.1177/1729881417738102
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AT huanwang roaddetectionbasedonthefusionoflidarandimagedata
AT jianfenglu roaddetectionbasedonthefusionoflidarandimagedata
AT chunxiazhao roaddetectionbasedonthefusionoflidarandimagedata
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