A Method for Validating the Structural Completeness of Understory Vegetation Models Captured with 3D Remote Sensing

Characteristics describing below canopy vegetation are important for a range of forest ecosystem applications including wildlife habitat, fuel hazard and fire behaviour modelling, understanding forest recovery after disturbance and competition dynamics. Such applications all rely on accurate measure...

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Main Authors: Samuel Hillman, Luke Wallace, Karin Reinke, Bryan Hally, Simon Jones, Daisy S. Saldias
Format: Article
Language:English
Published: MDPI AG 2019-09-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/11/18/2118
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spelling doaj-e726b8300b4b4a69b2b9273805f46dae2020-11-25T01:22:45ZengMDPI AGRemote Sensing2072-42922019-09-011118211810.3390/rs11182118rs11182118A Method for Validating the Structural Completeness of Understory Vegetation Models Captured with 3D Remote SensingSamuel Hillman0Luke Wallace1Karin Reinke2Bryan Hally3Simon Jones4Daisy S. Saldias5School of Science, RMIT University, Melbourne 3000, AustraliaSchool of Science, RMIT University, Melbourne 3000, AustraliaSchool of Science, RMIT University, Melbourne 3000, AustraliaSchool of Science, RMIT University, Melbourne 3000, AustraliaSchool of Science, RMIT University, Melbourne 3000, AustraliaSchool of Science, RMIT University, Melbourne 3000, AustraliaCharacteristics describing below canopy vegetation are important for a range of forest ecosystem applications including wildlife habitat, fuel hazard and fire behaviour modelling, understanding forest recovery after disturbance and competition dynamics. Such applications all rely on accurate measures of vegetation structure. Inherent in this is the assumption or ability to demonstrate measurement accuracy. 3D point clouds are being increasingly used to describe vegetated environments, however limited research has been conducted to validate the information content of terrestrial point clouds of understory vegetation. This paper describes the design and use of a field frame to co-register point intercept measurements with point cloud data to act as a validation source. Validation results show high correlation of point matching in forests with understory vegetation elements with large mass and/or surface area, typically consisting of broad leaves, twigs and bark 0.02 m diameter or greater in size (SfM, MCC 0.51−0.66; TLS, MCC 0.37−0.47). In contrast, complex environments with understory vegetation elements with low mass and low surface area showed lower correlations between validation measurements and point clouds (SfM, MCC 0.40 and 0.42; TLS, MCC 0.25 and 0.16). The results of this study demonstrate that the validation frame provides a suitable method for comparing the relative performance of different point cloud generation processes.https://www.mdpi.com/2072-4292/11/18/2118structure from motionterrestrial laser scanningvalidation3D remote sensingvegetation structurebiomassforest measurement
collection DOAJ
language English
format Article
sources DOAJ
author Samuel Hillman
Luke Wallace
Karin Reinke
Bryan Hally
Simon Jones
Daisy S. Saldias
spellingShingle Samuel Hillman
Luke Wallace
Karin Reinke
Bryan Hally
Simon Jones
Daisy S. Saldias
A Method for Validating the Structural Completeness of Understory Vegetation Models Captured with 3D Remote Sensing
Remote Sensing
structure from motion
terrestrial laser scanning
validation
3D remote sensing
vegetation structure
biomass
forest measurement
author_facet Samuel Hillman
Luke Wallace
Karin Reinke
Bryan Hally
Simon Jones
Daisy S. Saldias
author_sort Samuel Hillman
title A Method for Validating the Structural Completeness of Understory Vegetation Models Captured with 3D Remote Sensing
title_short A Method for Validating the Structural Completeness of Understory Vegetation Models Captured with 3D Remote Sensing
title_full A Method for Validating the Structural Completeness of Understory Vegetation Models Captured with 3D Remote Sensing
title_fullStr A Method for Validating the Structural Completeness of Understory Vegetation Models Captured with 3D Remote Sensing
title_full_unstemmed A Method for Validating the Structural Completeness of Understory Vegetation Models Captured with 3D Remote Sensing
title_sort method for validating the structural completeness of understory vegetation models captured with 3d remote sensing
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2019-09-01
description Characteristics describing below canopy vegetation are important for a range of forest ecosystem applications including wildlife habitat, fuel hazard and fire behaviour modelling, understanding forest recovery after disturbance and competition dynamics. Such applications all rely on accurate measures of vegetation structure. Inherent in this is the assumption or ability to demonstrate measurement accuracy. 3D point clouds are being increasingly used to describe vegetated environments, however limited research has been conducted to validate the information content of terrestrial point clouds of understory vegetation. This paper describes the design and use of a field frame to co-register point intercept measurements with point cloud data to act as a validation source. Validation results show high correlation of point matching in forests with understory vegetation elements with large mass and/or surface area, typically consisting of broad leaves, twigs and bark 0.02 m diameter or greater in size (SfM, MCC 0.51−0.66; TLS, MCC 0.37−0.47). In contrast, complex environments with understory vegetation elements with low mass and low surface area showed lower correlations between validation measurements and point clouds (SfM, MCC 0.40 and 0.42; TLS, MCC 0.25 and 0.16). The results of this study demonstrate that the validation frame provides a suitable method for comparing the relative performance of different point cloud generation processes.
topic structure from motion
terrestrial laser scanning
validation
3D remote sensing
vegetation structure
biomass
forest measurement
url https://www.mdpi.com/2072-4292/11/18/2118
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