2021
DOI: 10.1080/02827581.2021.1936153
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Updating of forest stand data by using recent digital photogrammetry in combination with older airborne laser scanning data

Abstract: Accurate and up-to-date data about growing stock volume are essential for forest management planning. Airborne Laser Scanning (ALS) is known for producing accurate wall-to-wall predictions but the data are at present collected at long time intervals. Digital Photogrammetry (DP) is cheaper and often more frequently available but known to be less accurate. This study investigates the potential of using contemporary DP data together with older ALS data and compares this with the case when only old ALS data are tr… Show more

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Cited by 7 publications
(4 citation statements)
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“…Remote sensing data are a promising and potentially highly informative data source for the task of biodiversity estimation ( Gholizadeh et al, 2020 ; Moat et al, 2021 ). These data have been successfully applied in several recent studies for modeling vegetation attributes such as biomass ( Breidenbach et al, 2021 ), growing stock volume ( Lindgren et al, 2021 ), and plant size ( Söderberg et al, 2021 ), and can be applied for global inventory of habitats and for estimating the trait diversity within these habitats ( Cavender-Bares et al, 2020 ). These data sources, which are already successfully applied for many biodiversity-related purposes (see overview in Cavender-Bares et al, 2020 ), will likely play a key role for future developments in the field of automated biodiversity assessments, and can be readily added as additional features to neural network models as the ones presented in this study.…”
Section: Discussionmentioning
confidence: 99%
“…Remote sensing data are a promising and potentially highly informative data source for the task of biodiversity estimation ( Gholizadeh et al, 2020 ; Moat et al, 2021 ). These data have been successfully applied in several recent studies for modeling vegetation attributes such as biomass ( Breidenbach et al, 2021 ), growing stock volume ( Lindgren et al, 2021 ), and plant size ( Söderberg et al, 2021 ), and can be applied for global inventory of habitats and for estimating the trait diversity within these habitats ( Cavender-Bares et al, 2020 ). These data sources, which are already successfully applied for many biodiversity-related purposes (see overview in Cavender-Bares et al, 2020 ), will likely play a key role for future developments in the field of automated biodiversity assessments, and can be readily added as additional features to neural network models as the ones presented in this study.…”
Section: Discussionmentioning
confidence: 99%
“…The high-resolution DTMs obtained from UAV flights highlight a modern low-cost data collection method that is highly applicable to the remote settings of NbS sites. This approach can better represent the smaller-scale features at NbS sites, update boundary conditions and elevation changes for use in flood modelling, and address areas with outdated or unmapped high-resolution LiDAR [56]. Conducting flights during periods of low flows or low vegetation cover will help gather the most accurate ground elevation values.…”
Section: Reducing Remote Data Scarcitymentioning
confidence: 99%
“…PCCs are products derived from aerial images from which, through image matching techniques of the overlapping stereo images, a 3D image or point cloud can be obtained [101]. As with LiDAR data, some metrics such as tree height can be obtained from a digital elevation model (DEM) or a canopy height model (CHM) [88].…”
Section: Aerial Imagerymentioning
confidence: 99%