Yıl: 2022 Cilt: 8 Sayı: 2 Sayfa Aralığı: 46 - 54 Metin Dili: İngilizce DOI: 10.33904/ejfe.1174123 İndeks Tarihi: 12-01-2023

Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data

Öz:
Two of the very basic forestry parameters, the Breast Height Diameter (DBH) and Tree Height (TH) are very effective when characterizing forest stands and individual trees. The traditional measurement process of these parameters takes a lot of time and consumes human power. On the other hand, 3D Point Cloud (PC) quickly provides a very detailed view of forestry parameters, because of the development of computer processing power and digital storage in recent years. PC data sources for forestry applications include Airborne LiDAR Systems (ALS), Terrestrial Laser Scanning (TLS) and most recently the Unmanned Air Vehicle (UAV). In this study, the PC datasets from these sources were used to study the feasibility of the DBH and TH values of a d development stage (i.e. DBH > 52 cm in mature stage) oak stand. The DBH and TH estimates are compared with the onsite measurements, which are considered to be fundamental truths, to their performance due to overall error statistics, as well as the cost of calculation and the difficulties in data collection. The results show that the computer data obtained by TLS has the best average square error (0.22 cm for DBH and 0,051 m for TH) compared to other computer data. The size of Pearson correlation between TLS-based and on-site-based measurements has reached 0.97 and 0.99 for DBH, respectively.
Anahtar Kelime: 3D remote sensing TLS ALS UAV Tree Height diameter at breast height forest tree height

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA ARSLAN A, Inan M, Çelik M, Erten E (2022). Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data. , 46 - 54. 10.33904/ejfe.1174123
Chicago ARSLAN ADİL ENİS,Inan Muhittin,Çelik Mehmet Furkan,Erten Esra Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data. (2022): 46 - 54. 10.33904/ejfe.1174123
MLA ARSLAN ADİL ENİS,Inan Muhittin,Çelik Mehmet Furkan,Erten Esra Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data. , 2022, ss.46 - 54. 10.33904/ejfe.1174123
AMA ARSLAN A,Inan M,Çelik M,Erten E Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data. . 2022; 46 - 54. 10.33904/ejfe.1174123
Vancouver ARSLAN A,Inan M,Çelik M,Erten E Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data. . 2022; 46 - 54. 10.33904/ejfe.1174123
IEEE ARSLAN A,Inan M,Çelik M,Erten E "Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data." , ss.46 - 54, 2022. 10.33904/ejfe.1174123
ISNAD ARSLAN, ADİL ENİS vd. "Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data". (2022), 46-54. https://doi.org/10.33904/ejfe.1174123
APA ARSLAN A, Inan M, Çelik M, Erten E (2022). Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data. European Journal of Forest Engineering, 8(2), 46 - 54. 10.33904/ejfe.1174123
Chicago ARSLAN ADİL ENİS,Inan Muhittin,Çelik Mehmet Furkan,Erten Esra Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data. European Journal of Forest Engineering 8, no.2 (2022): 46 - 54. 10.33904/ejfe.1174123
MLA ARSLAN ADİL ENİS,Inan Muhittin,Çelik Mehmet Furkan,Erten Esra Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data. European Journal of Forest Engineering, vol.8, no.2, 2022, ss.46 - 54. 10.33904/ejfe.1174123
AMA ARSLAN A,Inan M,Çelik M,Erten E Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data. European Journal of Forest Engineering. 2022; 8(2): 46 - 54. 10.33904/ejfe.1174123
Vancouver ARSLAN A,Inan M,Çelik M,Erten E Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data. European Journal of Forest Engineering. 2022; 8(2): 46 - 54. 10.33904/ejfe.1174123
IEEE ARSLAN A,Inan M,Çelik M,Erten E "Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data." European Journal of Forest Engineering, 8, ss.46 - 54, 2022. 10.33904/ejfe.1174123
ISNAD ARSLAN, ADİL ENİS vd. "Estimations of Forest Stand Parameters in Open Forest Stand Using Point Cloud Data from Terrestrial Laser Scanning, Unmanned Aerial Vehicle and Aerial LiDAR Data". European Journal of Forest Engineering 8/2 (2022), 46-54. https://doi.org/10.33904/ejfe.1174123