2012
DOI: 10.1080/02827581.2012.686625
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Forest variable estimation using photogrammetric matching of digital aerial images in combination with a high-resolution DEM

Abstract: The rapid development in aerial digital cameras in combination with the increased availability of high-resolution Digital Elevation Models (DEMs) provides a renaissance for photogrammetry in forest management planning. Tree height, stem volume, and basal area were estimated for forest stands using canopy height, density, and texture metrics derived from photogrammetric matching of digital aerial images and a high-resolution DEM. The study was conducted at a coniferous hemi-boreal site in southern Sweden. Three… Show more

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Cited by 192 publications
(189 citation statements)
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“…However, the visual interpretation of forest attributes, such as tree species, health status, and maturity, cannot currently be estimated from LiDAR data (White et al 2013). To utilise the advantages of each method, the option to combine photogrammetry and LiDAR for forest inventory purposes has attracted the attention of many researchers (Popescu et al 2004, StOnge et al 2004, 2008, Holmgren et al 2008, Bohlin et al 2012, Nurminen et al 2013. For example, St-Onge et al (2004) proposed the photogrammetric-LiDAR ('photo-LiDAR') approach to estimate tree height by calculating the difference between the photogrammetrically detected tree tops and tree bottoms derived from LiDAR DTM.…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…However, the visual interpretation of forest attributes, such as tree species, health status, and maturity, cannot currently be estimated from LiDAR data (White et al 2013). To utilise the advantages of each method, the option to combine photogrammetry and LiDAR for forest inventory purposes has attracted the attention of many researchers (Popescu et al 2004, StOnge et al 2004, 2008, Holmgren et al 2008, Bohlin et al 2012, Nurminen et al 2013. For example, St-Onge et al (2004) proposed the photogrammetric-LiDAR ('photo-LiDAR') approach to estimate tree height by calculating the difference between the photogrammetrically detected tree tops and tree bottoms derived from LiDAR DTM.…”
Section: Discussionmentioning
confidence: 99%
“…Based on a review of the research on the applications of digital photogrammetric method in forest inventories, differentiated between (i) manual methods (e.g., Korpela 2004, Magnusson et al 2007, 2012, Hoxha 2012, Ferdinent & Padmanaban 2013; (ii) automated methods of photogrammetric measurement and interpretation of digital aerial images using a computer or DPW (e.g., Naesset 2002a, Korpela 2004, Korpela & Anttila 2004, Zagalikis et al 2005, Bohlin et al 2012. Disadvantages of manual methods, such as the required expertise of the workforce, need for interpreters, increased time requirements, and subjectivity of interpreters (Meyer et al 1996, Anttila 2005, Morgan et al 2010, have made automated methods more attractive and interesting for researchers (Ke & Quackenbush 2011).…”
Section: Introductionmentioning
confidence: 99%
“…However, airborne photogrammetric data has proven to be a viable data source alternative to ALS to model forest biophysical properties [30,31], suggesting the possibility to apply such methods to UAS-SfM data. Thus, the objectives of our study were to:…”
Section: Objectivesmentioning
confidence: 99%
“…We can also create digital surface models (DSMs), which are similar to those derived from airborne LiDAR, from a pair of stereo aerial photographs using stereo matching algorithms. The DSM derived from aerial photographs have significant potential to accurately estimate tree height, stem volume and basal area [24,25]. Recent progress in computer science enables the production of DSMs using the Structure from Motion (SfM) approach with a much higher level of automation and much greater ease of use [26].…”
Section: Introductionmentioning
confidence: 99%