A Comparison of Two Open Source LiDAR Surface Classification Algorithms

With the progression of LiDAR (Light Detection and Ranging) towards a mainstream resource management tool, it has become necessary to understand how best to process and analyze the data. While most ground surface identification algorithms remain proprietary and have high purchase costs; a few are op...

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Bibliographic Details
Main Authors: Danny G Marks, Nancy F. Glenn, Timothy E. Link, Andrew T. Hudak, Rupesh Shrestha, Michael J. Falkowski, Alistair M. S. Smith, Hongyu Huang, Wade T. Tinkham
Format: Article
Language:English
Published: MDPI AG 2011-03-01
Series:Remote Sensing
Subjects:
DTM
MCC
Online Access:http://www.mdpi.com/2072-4292/3/3/638/
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spelling doaj-883e9ea173b7473799acd85fa3f821742020-11-25T00:19:13ZengMDPI AGRemote Sensing2072-42922011-03-013363864910.3390/rs3030638A Comparison of Two Open Source LiDAR Surface Classification AlgorithmsDanny G MarksNancy F. GlennTimothy E. LinkAndrew T. HudakRupesh ShresthaMichael J. FalkowskiAlistair M. S. SmithHongyu HuangWade T. TinkhamWith the progression of LiDAR (Light Detection and Ranging) towards a mainstream resource management tool, it has become necessary to understand how best to process and analyze the data. While most ground surface identification algorithms remain proprietary and have high purchase costs; a few are openly available, free to use, and are supported by published results. Two of the latter are the multiscale curvature classification and the Boise Center Aerospace Laboratory LiDAR (BCAL) algorithms. This study investigated the accuracy of these two algorithms (and a combination of the two) to create a digital terrain model from a raw LiDAR point cloud in a semi-arid landscape. Accuracy of each algorithm was assessed via comparison with >7,000 high precision survey points stratified across six different cover types. The overall performance of both algorithms differed by only 2%; however, within specific cover types significant differences were observed in accuracy. The results highlight the accuracy of both algorithms across a variety of vegetation types, and ultimately suggest specific scenarios where one approach may outperform the other. Each algorithm produced similar results except in the ceanothus and conifer cover types where BCAL produced lower errors. http://www.mdpi.com/2072-4292/3/3/638/LiDARalgorithmfilteringDTMMCCBCAL
collection DOAJ
language English
format Article
sources DOAJ
author Danny G Marks
Nancy F. Glenn
Timothy E. Link
Andrew T. Hudak
Rupesh Shrestha
Michael J. Falkowski
Alistair M. S. Smith
Hongyu Huang
Wade T. Tinkham
spellingShingle Danny G Marks
Nancy F. Glenn
Timothy E. Link
Andrew T. Hudak
Rupesh Shrestha
Michael J. Falkowski
Alistair M. S. Smith
Hongyu Huang
Wade T. Tinkham
A Comparison of Two Open Source LiDAR Surface Classification Algorithms
Remote Sensing
LiDAR
algorithm
filtering
DTM
MCC
BCAL
author_facet Danny G Marks
Nancy F. Glenn
Timothy E. Link
Andrew T. Hudak
Rupesh Shrestha
Michael J. Falkowski
Alistair M. S. Smith
Hongyu Huang
Wade T. Tinkham
author_sort Danny G Marks
title A Comparison of Two Open Source LiDAR Surface Classification Algorithms
title_short A Comparison of Two Open Source LiDAR Surface Classification Algorithms
title_full A Comparison of Two Open Source LiDAR Surface Classification Algorithms
title_fullStr A Comparison of Two Open Source LiDAR Surface Classification Algorithms
title_full_unstemmed A Comparison of Two Open Source LiDAR Surface Classification Algorithms
title_sort comparison of two open source lidar surface classification algorithms
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2011-03-01
description With the progression of LiDAR (Light Detection and Ranging) towards a mainstream resource management tool, it has become necessary to understand how best to process and analyze the data. While most ground surface identification algorithms remain proprietary and have high purchase costs; a few are openly available, free to use, and are supported by published results. Two of the latter are the multiscale curvature classification and the Boise Center Aerospace Laboratory LiDAR (BCAL) algorithms. This study investigated the accuracy of these two algorithms (and a combination of the two) to create a digital terrain model from a raw LiDAR point cloud in a semi-arid landscape. Accuracy of each algorithm was assessed via comparison with >7,000 high precision survey points stratified across six different cover types. The overall performance of both algorithms differed by only 2%; however, within specific cover types significant differences were observed in accuracy. The results highlight the accuracy of both algorithms across a variety of vegetation types, and ultimately suggest specific scenarios where one approach may outperform the other. Each algorithm produced similar results except in the ceanothus and conifer cover types where BCAL produced lower errors.
topic LiDAR
algorithm
filtering
DTM
MCC
BCAL
url http://www.mdpi.com/2072-4292/3/3/638/
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