An Efficient Framework for Mobile Lidar Trajectory Reconstruction and <i>Mo-norvana</i> Segmentation

Mobile laser scanning (MLS, or mobile lidar) is a 3-D data acquisition technique that has been widely used in a variety of applications in recent years due to its high accuracy and efficiency. However, given the large data volume and complexity of the point clouds, processing MLS data can be still c...

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Main Authors: Erzhuo Che, Michael J. Olsen
Format: Article
Language:English
Published: MDPI AG 2019-04-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/11/7/836
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spelling doaj-5cfe99936ccf45a998ff5aa5142a0ec42020-11-24T21:21:36ZengMDPI AGRemote Sensing2072-42922019-04-0111783610.3390/rs11070836rs11070836An Efficient Framework for Mobile Lidar Trajectory Reconstruction and <i>Mo-norvana</i> SegmentationErzhuo Che0Michael J. Olsen1School of Civil and Construction Engineering, Oregon State university, Corvallis, OR 97331, USASchool of Civil and Construction Engineering, Oregon State university, Corvallis, OR 97331, USAMobile laser scanning (MLS, or mobile lidar) is a 3-D data acquisition technique that has been widely used in a variety of applications in recent years due to its high accuracy and efficiency. However, given the large data volume and complexity of the point clouds, processing MLS data can be still challenging with respect to effectiveness, efficiency, and versatility. This paper proposes an efficient MLS data processing framework for general purposes consisting of three main steps: trajectory reconstruction, scan pattern grid generation, and <i>Mo-norvana</i> (Mobile Normal Variation Analysis) segmentation. We present a novel approach to reconstructing the scanner trajectory, which can then be used to structure the point cloud data into a scan pattern grid. By exploiting the scan pattern grid, point cloud segmentation can be performed using <i>Mo-norvana</i>, which is developed based on our previous work for processing Terrestrial Laser Scanning (TLS) data, normal variation analysis (<i>Norvana</i>). In this work, with an unorganized MLS point cloud as input, the proposed framework can complete various tasks that may be desired in many applications including trajectory reconstruction, data structuring, data visualization, edge detection, feature extraction, normal estimation, and segmentation. The performance of the proposed procedures are experimentally evaluated both qualitatively and quantitatively using multiple MLS datasets via the results of trajectory reconstruction, visualization, and segmentation. The efficiency of the proposed method is demonstrated to be able to handle a large dataset stably with a fast computation speed (about 1 million pts/sec. with 8 threads) by taking advantage of parallel programming.https://www.mdpi.com/2072-4292/11/7/836feature extractionmobile lidarpoint cloudsegmentationtrajectoryvisualization
collection DOAJ
language English
format Article
sources DOAJ
author Erzhuo Che
Michael J. Olsen
spellingShingle Erzhuo Che
Michael J. Olsen
An Efficient Framework for Mobile Lidar Trajectory Reconstruction and <i>Mo-norvana</i> Segmentation
Remote Sensing
feature extraction
mobile lidar
point cloud
segmentation
trajectory
visualization
author_facet Erzhuo Che
Michael J. Olsen
author_sort Erzhuo Che
title An Efficient Framework for Mobile Lidar Trajectory Reconstruction and <i>Mo-norvana</i> Segmentation
title_short An Efficient Framework for Mobile Lidar Trajectory Reconstruction and <i>Mo-norvana</i> Segmentation
title_full An Efficient Framework for Mobile Lidar Trajectory Reconstruction and <i>Mo-norvana</i> Segmentation
title_fullStr An Efficient Framework for Mobile Lidar Trajectory Reconstruction and <i>Mo-norvana</i> Segmentation
title_full_unstemmed An Efficient Framework for Mobile Lidar Trajectory Reconstruction and <i>Mo-norvana</i> Segmentation
title_sort efficient framework for mobile lidar trajectory reconstruction and <i>mo-norvana</i> segmentation
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2019-04-01
description Mobile laser scanning (MLS, or mobile lidar) is a 3-D data acquisition technique that has been widely used in a variety of applications in recent years due to its high accuracy and efficiency. However, given the large data volume and complexity of the point clouds, processing MLS data can be still challenging with respect to effectiveness, efficiency, and versatility. This paper proposes an efficient MLS data processing framework for general purposes consisting of three main steps: trajectory reconstruction, scan pattern grid generation, and <i>Mo-norvana</i> (Mobile Normal Variation Analysis) segmentation. We present a novel approach to reconstructing the scanner trajectory, which can then be used to structure the point cloud data into a scan pattern grid. By exploiting the scan pattern grid, point cloud segmentation can be performed using <i>Mo-norvana</i>, which is developed based on our previous work for processing Terrestrial Laser Scanning (TLS) data, normal variation analysis (<i>Norvana</i>). In this work, with an unorganized MLS point cloud as input, the proposed framework can complete various tasks that may be desired in many applications including trajectory reconstruction, data structuring, data visualization, edge detection, feature extraction, normal estimation, and segmentation. The performance of the proposed procedures are experimentally evaluated both qualitatively and quantitatively using multiple MLS datasets via the results of trajectory reconstruction, visualization, and segmentation. The efficiency of the proposed method is demonstrated to be able to handle a large dataset stably with a fast computation speed (about 1 million pts/sec. with 8 threads) by taking advantage of parallel programming.
topic feature extraction
mobile lidar
point cloud
segmentation
trajectory
visualization
url https://www.mdpi.com/2072-4292/11/7/836
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