UAV Photogrammetry of Forests as a Vulnerable Process. A Sensitivity Analysis for a Structure from Motion RGB-Image Pipeline

Structural analysis of forests by UAV is currently growing in popularity. Given the reduction in platform costs, and the number of algorithms available to analyze data output, the number of applications has grown rapidly. Forest structures are not only linked to economic value in forestry, but also...

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Published in:Remote Sensing
Main Authors: Julian Frey, Kyle Kovach, Simon Stemmler, Barbara Koch
Format: Article
Language:English
Published: MDPI AG 2018-06-01
Subjects:
Online Access:http://www.mdpi.com/2072-4292/10/6/912
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author Julian Frey
Kyle Kovach
Simon Stemmler
Barbara Koch
author_facet Julian Frey
Kyle Kovach
Simon Stemmler
Barbara Koch
author_sort Julian Frey
collection DOAJ
container_title Remote Sensing
description Structural analysis of forests by UAV is currently growing in popularity. Given the reduction in platform costs, and the number of algorithms available to analyze data output, the number of applications has grown rapidly. Forest structures are not only linked to economic value in forestry, but also to biodiversity and vulnerability issues. LiDAR remains the most promising technique for forest structural assessment, but small LiDAR sensors suitable for UAV applications are expensive and are limited to a few manufactures. The estimation of 3D-structures from two-dimensional image sequences called ‘Structure from motion’ (SfM) overcomes this limitation by photogrammetrically reconstructing point clouds similar to those rendered from LiDAR sensors. The result of these techniques in highly structured terrain strongly depends on the methods employed during image acquisition, therefore structural indices might be vulnerable to misspecifications in flight campaigns. In this paper, we outline how image overlap and ground sampling distances affect image reconstruction completeness in 2D and 3D. Higher image overlaps and coarser GSDs have a clearly positive influence on reconstruction quality. Therefore, higher accuracy requirements in the GSD must be compensated by a higher image overlap. The best results are achieved with an image overlap of > 95% and a resolution of > 5 cm. The most important environmental factors have been found to be wind and terrain elevation, which could be an indicator of vegetation density.
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spelling doaj-art-809fd6a08ec74e0db9cab8951f8a9cd62025-08-19T19:52:48ZengMDPI AGRemote Sensing2072-42922018-06-0110691210.3390/rs10060912rs10060912UAV Photogrammetry of Forests as a Vulnerable Process. A Sensitivity Analysis for a Structure from Motion RGB-Image PipelineJulian Frey0Kyle Kovach1Simon Stemmler2Barbara Koch3Chair of Remote Sensing and Landscape Information Systems FeLis, University of Freiburg, D-79106 Freiburg, GermanyChair of Geobotany, Faculty of Biology, University of Freiburg, D-79106 Freiburg, GermanyChair of Remote Sensing and Landscape Information Systems FeLis, University of Freiburg, D-79106 Freiburg, GermanyChair of Remote Sensing and Landscape Information Systems FeLis, University of Freiburg, D-79106 Freiburg, GermanyStructural analysis of forests by UAV is currently growing in popularity. Given the reduction in platform costs, and the number of algorithms available to analyze data output, the number of applications has grown rapidly. Forest structures are not only linked to economic value in forestry, but also to biodiversity and vulnerability issues. LiDAR remains the most promising technique for forest structural assessment, but small LiDAR sensors suitable for UAV applications are expensive and are limited to a few manufactures. The estimation of 3D-structures from two-dimensional image sequences called ‘Structure from motion’ (SfM) overcomes this limitation by photogrammetrically reconstructing point clouds similar to those rendered from LiDAR sensors. The result of these techniques in highly structured terrain strongly depends on the methods employed during image acquisition, therefore structural indices might be vulnerable to misspecifications in flight campaigns. In this paper, we outline how image overlap and ground sampling distances affect image reconstruction completeness in 2D and 3D. Higher image overlaps and coarser GSDs have a clearly positive influence on reconstruction quality. Therefore, higher accuracy requirements in the GSD must be compensated by a higher image overlap. The best results are achieved with an image overlap of > 95% and a resolution of > 5 cm. The most important environmental factors have been found to be wind and terrain elevation, which could be an indicator of vegetation density.http://www.mdpi.com/2072-4292/10/6/912UAVphotogrammetrySfMimage aggregationforestsensitivity analysesreconstruction quality
spellingShingle Julian Frey
Kyle Kovach
Simon Stemmler
Barbara Koch
UAV Photogrammetry of Forests as a Vulnerable Process. A Sensitivity Analysis for a Structure from Motion RGB-Image Pipeline
UAV
photogrammetry
SfM
image aggregation
forest
sensitivity analyses
reconstruction quality
title UAV Photogrammetry of Forests as a Vulnerable Process. A Sensitivity Analysis for a Structure from Motion RGB-Image Pipeline
title_full UAV Photogrammetry of Forests as a Vulnerable Process. A Sensitivity Analysis for a Structure from Motion RGB-Image Pipeline
title_fullStr UAV Photogrammetry of Forests as a Vulnerable Process. A Sensitivity Analysis for a Structure from Motion RGB-Image Pipeline
title_full_unstemmed UAV Photogrammetry of Forests as a Vulnerable Process. A Sensitivity Analysis for a Structure from Motion RGB-Image Pipeline
title_short UAV Photogrammetry of Forests as a Vulnerable Process. A Sensitivity Analysis for a Structure from Motion RGB-Image Pipeline
title_sort uav photogrammetry of forests as a vulnerable process a sensitivity analysis for a structure from motion rgb image pipeline
topic UAV
photogrammetry
SfM
image aggregation
forest
sensitivity analyses
reconstruction quality
url http://www.mdpi.com/2072-4292/10/6/912
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