Research Article
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Automatic detection of forest trees from digital surface models derived by aerial images

Year 2022, Volume: 7 Issue: 3, 208 - 213, 15.10.2022
https://doi.org/10.26833/ijeg.908004

Abstract

For the sustainable management of forests, obtaining the spatial information of the tree existence (location, number, height, and crown diameter of trees, etc.) with high accuracy and quickly is very important. In this context, the study aims to detect forest trees automatically through flow analysis applied to a 5 m resolution digital surface model by geospatial analysis. The study was carried out in five sample areas with different physical and topographic characteristics in the Antalya province of Turkey. The method consists of two steps which are identifying tree populations and determining tree peaks by applying flow analysis on the surface model. First, the canopy height model was extracted by applying a morphological filter to the image-based digital surface model. Then, the tree peak points are considered sink points, and these sink points were determined on the inverted surface model by the flow analysis approach which is frequently used in hydrological studies. The results showed that the applied method gives approximately 70% accuracy depending on the terrain conditions. Tree crown diameter, distance between trees, slope of the land, and digital surface model resolution significantly affect the accuracy of the results. It is predicted that this study will be an important guide for decision-makers in the preparation of forest plans.

Supporting Institution

Ministry of National Defense, General Directorate of Mapping, Turkey.

Thanks

This work has been supported and funded by Ministry of National Defense, General Directorate of Mapping, Turkey.

References

  • Barnes C, Balzter H, Barrett K, Eddy J, Milner S & Suárez J C (2017). Individual tree crown delineation from airborne laser scanning for diseased larch forest stands. Remote Sensing, 9, 231.
  • Bienert A, Scheller S, Keane E, Mohan F & Nugent C (2007). Tree detection and diameter estimations by analysis of forest terrestrial laser scanner point clouds. ISPRS Workshop on Laser Scanning 2007 and SilviLaser, 36, 50–55.
  • Bouvier M, Durrieu S, Fournier R A & Renaud J P (2015). Generalizing predictive models of forest inventory attributes using an area-based approach with airborne LiDAR data. In Remote Sensing of Environment, 156, 322–334.
  • Cabo C, Ordóñez C, López-Sánchez C A & Armesto J (2018). Automatic dendrometry: Tree detection, tree height and diameter estimation using terrestrial laser scanning. International Journal of Applied Earth Observation and Geoinformation, 69, 164–174.
  • Dalla Corte AP, Souza DV, Rex FE, Sanquetta CR, Mohan M, Silva CA, ... & Broadbent EN (2020). Forest inventory with high-density UAV-Lidar: Machine learning approaches for predicting individual tree attributes. Computers and Electronics in Agriculture, 179, 105815.
  • Demir N (2018). Using UAVs For Detection of Trees from Digital Surface Models. Journal of Forestry Research, 29, 813-821.
  • Ferraz A, Saatchi S, Mallet C & Meyer V (2016). Lidar detection of individual tree size in tropical forests. Remote Sensing of Environment, 183, 318–333.
  • Hao Y, Widagdo FRA, Liu X, Quan Y, Dong L & Li F (2021). Individual tree diameter estimation in small-scale forest inventory using UAV laser scanning. Remote Sensing, 13(1), 24.
  • Hopkinson C, Chasmer L, Young-Pow C & Treitz P (2004). Assessing forest metrics with a ground-based scanning lidar. Canadian Journal of Forest Research, 34(3), 573–583.
  • Magnard C, Morsdorf F, Small D, Stilla U, Schaepman M E & Meier E (2016). Single tree identification using airborne multibaseline SAR interferometry data. Remote Sensing of Environment, 186, 567–580.
  • Mohan M, Silva C A, Klauberg C, Jat P, Catts G, Cardil A, Hudak A T & Dia M (2017). Individual tree detection from unmanned aerial vehicle (UAV) derived canopy height model in an open canopy mixed conifer forest. Forests, 8(9), 340.
  • Paris C, Kelbe D, Van Aardt J & Bruzzone L (2017). A Novel Automatic Method for the Fusion of ALS and TLS LiDAR Data for Robust Assessment of Tree Crown Structure. IEEE Transactions on Geoscience and Remote Sensing, 55(7), 3679–3693.
  • Pitkänen J & Maltamo M (2004). Adaptive Methods for Individual Tree Detection on Airborne Laser Based Canopy Height Model. International Archives of Photogrammetry, Remote Sensing and Spatial Information Sciences, 36(8), 187–191.
  • Selim S, Sonmez NK, Coslu M, & Onur I (2019). Semi-automatic tree detection from images of unmanned aerial vehicle using object-based image analysis method. Journal of the Indian Society of Remote Sensing, 47(2), 193-200.
  • Silva C A, Hudak A T, Vierling L A, Loudermilk E L, O’Brien J J, Hiers J K, Jack S B, Gonzalez-Benecke C, Lee H, Falkowski M J & Khosravipour A. (2016). Imputation of Individual Longleaf Pine (Pinus palustris Mill.) Tree Attributes from Field and LiDAR Data. Canadian Journal of Remote Sensing, 42(5), 554–573.
  • Simonse M, Aschoff T, Spiecker H & Thies M. (2003). Automatic Determination of Forest Inventory Parameters Using Terrestrial Laserscanning. In Institute for Forest Growth, 2003, 252-258.
  • Su Y, Guo Q, Xue B, Hu T, Alvarez O, Tao S & Fang J (2016). Spatial distribution of forest aboveground biomass in China: Estimation through combination of spaceborne lidar, optical imagery, and forest inventory data. Remote Sensing of Environment, 173, 187–199.
  • Toklu E (2017). Biomass energy potential and utilization in Turkey. Renewable Energy, 107, 235–244.
  • Yang B, Dai W, Dong Z & Liu, Y (2016). Automatic forest mapping at individual tree levels from terrestrial laser scanning point clouds with a hierarchical minimum cut method. Remote Sensing, 8(5), 372.
  • Zhang KQ, Chen SC, Whitman D, Shyu ML, Yan JH, Zhang CC (2003). A progressive morphological filter for removing nonground measurements from airborne LIDAR data. IEEE Trans Geosci Remote Sens, 41, 872–882
  • Zhen Z, Quackenbush L J & Zhang L (2016). Trends in automatic individual tree crown detection and delineation-evolution of LiDAR data. Remote Sensing, 8(4), 333.

Year 2022, Volume: 7 Issue: 3, 208 - 213, 15.10.2022
https://doi.org/10.26833/ijeg.908004

Abstract

References

  • Barnes C, Balzter H, Barrett K, Eddy J, Milner S & Suárez J C (2017). Individual tree crown delineation from airborne laser scanning for diseased larch forest stands. Remote Sensing, 9, 231.
  • Bienert A, Scheller S, Keane E, Mohan F & Nugent C (2007). Tree detection and diameter estimations by analysis of forest terrestrial laser scanner point clouds. ISPRS Workshop on Laser Scanning 2007 and SilviLaser, 36, 50–55.
  • Bouvier M, Durrieu S, Fournier R A & Renaud J P (2015). Generalizing predictive models of forest inventory attributes using an area-based approach with airborne LiDAR data. In Remote Sensing of Environment, 156, 322–334.
  • Cabo C, Ordóñez C, López-Sánchez C A & Armesto J (2018). Automatic dendrometry: Tree detection, tree height and diameter estimation using terrestrial laser scanning. International Journal of Applied Earth Observation and Geoinformation, 69, 164–174.
  • Dalla Corte AP, Souza DV, Rex FE, Sanquetta CR, Mohan M, Silva CA, ... & Broadbent EN (2020). Forest inventory with high-density UAV-Lidar: Machine learning approaches for predicting individual tree attributes. Computers and Electronics in Agriculture, 179, 105815.
  • Demir N (2018). Using UAVs For Detection of Trees from Digital Surface Models. Journal of Forestry Research, 29, 813-821.
  • Ferraz A, Saatchi S, Mallet C & Meyer V (2016). Lidar detection of individual tree size in tropical forests. Remote Sensing of Environment, 183, 318–333.
  • Hao Y, Widagdo FRA, Liu X, Quan Y, Dong L & Li F (2021). Individual tree diameter estimation in small-scale forest inventory using UAV laser scanning. Remote Sensing, 13(1), 24.
  • Hopkinson C, Chasmer L, Young-Pow C & Treitz P (2004). Assessing forest metrics with a ground-based scanning lidar. Canadian Journal of Forest Research, 34(3), 573–583.
  • Magnard C, Morsdorf F, Small D, Stilla U, Schaepman M E & Meier E (2016). Single tree identification using airborne multibaseline SAR interferometry data. Remote Sensing of Environment, 186, 567–580.
  • Mohan M, Silva C A, Klauberg C, Jat P, Catts G, Cardil A, Hudak A T & Dia M (2017). Individual tree detection from unmanned aerial vehicle (UAV) derived canopy height model in an open canopy mixed conifer forest. Forests, 8(9), 340.
  • Paris C, Kelbe D, Van Aardt J & Bruzzone L (2017). A Novel Automatic Method for the Fusion of ALS and TLS LiDAR Data for Robust Assessment of Tree Crown Structure. IEEE Transactions on Geoscience and Remote Sensing, 55(7), 3679–3693.
  • Pitkänen J & Maltamo M (2004). Adaptive Methods for Individual Tree Detection on Airborne Laser Based Canopy Height Model. International Archives of Photogrammetry, Remote Sensing and Spatial Information Sciences, 36(8), 187–191.
  • Selim S, Sonmez NK, Coslu M, & Onur I (2019). Semi-automatic tree detection from images of unmanned aerial vehicle using object-based image analysis method. Journal of the Indian Society of Remote Sensing, 47(2), 193-200.
  • Silva C A, Hudak A T, Vierling L A, Loudermilk E L, O’Brien J J, Hiers J K, Jack S B, Gonzalez-Benecke C, Lee H, Falkowski M J & Khosravipour A. (2016). Imputation of Individual Longleaf Pine (Pinus palustris Mill.) Tree Attributes from Field and LiDAR Data. Canadian Journal of Remote Sensing, 42(5), 554–573.
  • Simonse M, Aschoff T, Spiecker H & Thies M. (2003). Automatic Determination of Forest Inventory Parameters Using Terrestrial Laserscanning. In Institute for Forest Growth, 2003, 252-258.
  • Su Y, Guo Q, Xue B, Hu T, Alvarez O, Tao S & Fang J (2016). Spatial distribution of forest aboveground biomass in China: Estimation through combination of spaceborne lidar, optical imagery, and forest inventory data. Remote Sensing of Environment, 173, 187–199.
  • Toklu E (2017). Biomass energy potential and utilization in Turkey. Renewable Energy, 107, 235–244.
  • Yang B, Dai W, Dong Z & Liu, Y (2016). Automatic forest mapping at individual tree levels from terrestrial laser scanning point clouds with a hierarchical minimum cut method. Remote Sensing, 8(5), 372.
  • Zhang KQ, Chen SC, Whitman D, Shyu ML, Yan JH, Zhang CC (2003). A progressive morphological filter for removing nonground measurements from airborne LIDAR data. IEEE Trans Geosci Remote Sens, 41, 872–882
  • Zhen Z, Quackenbush L J & Zhang L (2016). Trends in automatic individual tree crown detection and delineation-evolution of LiDAR data. Remote Sensing, 8(4), 333.

Details

Primary Language English
Journal Section Articles
Authors

Serdar SELİM
Akdeniz Üniversitesi
0000-0002-5631-6253
Türkiye


Nusret DEMİR
AKDENIZ UNIVERSITY
0000-0002-8756-7127
Türkiye


Selen OY ŞAHİN
AKDENIZ UNIVERSITY
0000-0002-0741-1684
Türkiye

Project Number -
Publication Date October 15, 2022
Published in Issue Year 2022 Volume: 7 Issue: 3

Cite

Bibtex @research article { ijeg908004, journal = {International Journal of Engineering and Geosciences}, eissn = {2548-0960}, address = {}, publisher = {Murat YAKAR}, year = {2022}, volume = {7}, number = {3}, pages = {208 - 213}, doi = {10.26833/ijeg.908004}, title = {Automatic detection of forest trees from digital surface models derived by aerial images}, key = {cite}, author = {Selim, Serdar and Demir, Nusret and Oy Şahin, Selen} }
APA Selim, S. , Demir, N. & Oy Şahin, S. (2022). Automatic detection of forest trees from digital surface models derived by aerial images . International Journal of Engineering and Geosciences , 7 (3) , 208-213 . DOI: 10.26833/ijeg.908004
MLA Selim, S. , Demir, N. , Oy Şahin, S. "Automatic detection of forest trees from digital surface models derived by aerial images" . International Journal of Engineering and Geosciences 7 (2022 ): 208-213 <https://dergipark.org.tr/en/pub/ijeg/issue/68445/908004>
Chicago Selim, S. , Demir, N. , Oy Şahin, S. "Automatic detection of forest trees from digital surface models derived by aerial images". International Journal of Engineering and Geosciences 7 (2022 ): 208-213
RIS TY - JOUR T1 - Automatic detection of forest trees from digital surface models derived by aerial images AU - SerdarSelim, NusretDemir, SelenOy Şahin Y1 - 2022 PY - 2022 N1 - doi: 10.26833/ijeg.908004 DO - 10.26833/ijeg.908004 T2 - International Journal of Engineering and Geosciences JF - Journal JO - JOR SP - 208 EP - 213 VL - 7 IS - 3 SN - -2548-0960 M3 - doi: 10.26833/ijeg.908004 UR - https://doi.org/10.26833/ijeg.908004 Y2 - 2021 ER -
EndNote %0 International Journal of Engineering and Geosciences Automatic detection of forest trees from digital surface models derived by aerial images %A Serdar Selim , Nusret Demir , Selen Oy Şahin %T Automatic detection of forest trees from digital surface models derived by aerial images %D 2022 %J International Journal of Engineering and Geosciences %P -2548-0960 %V 7 %N 3 %R doi: 10.26833/ijeg.908004 %U 10.26833/ijeg.908004
ISNAD Selim, Serdar , Demir, Nusret , Oy Şahin, Selen . "Automatic detection of forest trees from digital surface models derived by aerial images". International Journal of Engineering and Geosciences 7 / 3 (October 2022): 208-213 . https://doi.org/10.26833/ijeg.908004
AMA Selim S. , Demir N. , Oy Şahin S. Automatic detection of forest trees from digital surface models derived by aerial images. IJEG. 2022; 7(3): 208-213.
Vancouver Selim S. , Demir N. , Oy Şahin S. Automatic detection of forest trees from digital surface models derived by aerial images. International Journal of Engineering and Geosciences. 2022; 7(3): 208-213.
IEEE S. Selim , N. Demir and S. Oy Şahin , "Automatic detection of forest trees from digital surface models derived by aerial images", International Journal of Engineering and Geosciences, vol. 7, no. 3, pp. 208-213, Oct. 2022, doi:10.26833/ijeg.908004