waveformlidar: An R Package for Waveform LiDAR Processing and Analysis

A wealth of Full Waveform (FW) LiDAR (Light Detection and Ranging) data are available to the public from different sources, which is poised to boost extensive applications of FW LiDAR data. However, we lack a handy and open source tool that can be used by potential users for processing and analyzing...

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Main Authors: Tan Zhou, Sorin Popescu
Format: Article
Language:English
Published: MDPI AG 2019-10-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/11/21/2552
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spelling doaj-1a98c0cba3554f339489f8d8ac01b5e22020-11-25T01:55:20ZengMDPI AGRemote Sensing2072-42922019-10-011121255210.3390/rs11212552rs11212552waveformlidar: An R Package for Waveform LiDAR Processing and AnalysisTan Zhou0Sorin Popescu1Colaberry Inc., 200 Portland St, Boston, MA 02114, USALiDAR Applications for the Study of Ecosystems with Remote Sensing (LASERS) Laboratory, Department of Ecosystem Science and Management, Texas A&amp;M University, College Station, TX 77450, USAA wealth of Full Waveform (FW) LiDAR (Light Detection and Ranging) data are available to the public from different sources, which is poised to boost extensive applications of FW LiDAR data. However, we lack a handy and open source tool that can be used by potential users for processing and analyzing FW LiDAR data. To this end, we introduce <i>waveformlidar,</i> an R package dedicated to FW LiDAR processing, analysis and visualization as a solution to the constraint. Specifically, this package provides several commonly used waveform processing methods such as Gaussian, Adaptive Gaussian and Weibull decompositions and deconvolution approaches (Gold and Richard-Lucy (RL)) with users&#8217; customized settings. In addition, we also developed functions to derive commonly used waveform metrics for characterizing vegetation structure. Moreover, a new way to directly visualize FW LiDAR data is developed by converting waveforms into points to form the Hyper Point Cloud (HPC), which can be easily adopted and subsequently analyzed with existing discrete-return LiDAR processing tools such as <i>LAStools</i> and <i>FUSION</i>. Basic explorations of the HPC such as 3D voxelization of the HPC and conversion from original waveforms to composite waveforms are also available in this package. All of these functions are developed based on small-footprint FW LiDAR data but they can be easily transplanted to the large footprint FW LiDAR data such as Geoscience Laser Altimeter System (GLAS) and Global Ecosystem Dynamics Investigation (GEDI) data analysis. It is anticipated that these functions will facilitate the widespread use of FW LiDAR and be beneficial for better estimating biomass and characterizing vegetation structure at various scales.https://www.mdpi.com/2072-4292/11/21/2552waveform decompositionhyper point clouddeconvolutionwaveform voxelcomposite waveform
collection DOAJ
language English
format Article
sources DOAJ
author Tan Zhou
Sorin Popescu
spellingShingle Tan Zhou
Sorin Popescu
waveformlidar: An R Package for Waveform LiDAR Processing and Analysis
Remote Sensing
waveform decomposition
hyper point cloud
deconvolution
waveform voxel
composite waveform
author_facet Tan Zhou
Sorin Popescu
author_sort Tan Zhou
title waveformlidar: An R Package for Waveform LiDAR Processing and Analysis
title_short waveformlidar: An R Package for Waveform LiDAR Processing and Analysis
title_full waveformlidar: An R Package for Waveform LiDAR Processing and Analysis
title_fullStr waveformlidar: An R Package for Waveform LiDAR Processing and Analysis
title_full_unstemmed waveformlidar: An R Package for Waveform LiDAR Processing and Analysis
title_sort waveformlidar: an r package for waveform lidar processing and analysis
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2019-10-01
description A wealth of Full Waveform (FW) LiDAR (Light Detection and Ranging) data are available to the public from different sources, which is poised to boost extensive applications of FW LiDAR data. However, we lack a handy and open source tool that can be used by potential users for processing and analyzing FW LiDAR data. To this end, we introduce <i>waveformlidar,</i> an R package dedicated to FW LiDAR processing, analysis and visualization as a solution to the constraint. Specifically, this package provides several commonly used waveform processing methods such as Gaussian, Adaptive Gaussian and Weibull decompositions and deconvolution approaches (Gold and Richard-Lucy (RL)) with users&#8217; customized settings. In addition, we also developed functions to derive commonly used waveform metrics for characterizing vegetation structure. Moreover, a new way to directly visualize FW LiDAR data is developed by converting waveforms into points to form the Hyper Point Cloud (HPC), which can be easily adopted and subsequently analyzed with existing discrete-return LiDAR processing tools such as <i>LAStools</i> and <i>FUSION</i>. Basic explorations of the HPC such as 3D voxelization of the HPC and conversion from original waveforms to composite waveforms are also available in this package. All of these functions are developed based on small-footprint FW LiDAR data but they can be easily transplanted to the large footprint FW LiDAR data such as Geoscience Laser Altimeter System (GLAS) and Global Ecosystem Dynamics Investigation (GEDI) data analysis. It is anticipated that these functions will facilitate the widespread use of FW LiDAR and be beneficial for better estimating biomass and characterizing vegetation structure at various scales.
topic waveform decomposition
hyper point cloud
deconvolution
waveform voxel
composite waveform
url https://www.mdpi.com/2072-4292/11/21/2552
work_keys_str_mv AT tanzhou waveformlidaranrpackageforwaveformlidarprocessingandanalysis
AT sorinpopescu waveformlidaranrpackageforwaveformlidarprocessingandanalysis
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