Artificial intelligence-based software (AID-FOREST) for tree detection: A new framework for fast and accurate forest inventorying using LiDAR point clouds

被引:11
作者
Lopez Serrano, F. R. [1 ,2 ]
Rubio, E. [2 ,3 ]
Garcia Morote, F. A. [1 ,2 ]
Andres Abellan, M. [1 ,2 ]
Picazo Cordoba, M., I [2 ]
Garcia Saucedo, F. [2 ]
Martinez Garcia, E. [4 ]
Sanchez Garcia, J. M. [5 ]
Serena Innerarity, J. [5 ]
Carrasco Lucas, L. [6 ]
Garcia Gonzalez, O. [6 ]
Garcia Gonzalez, J. C. [6 ]
机构
[1] Univ Castilla La Mancha, Higher Tech Sch Agr & Forest Engn, Campus Univ S-N, Albacete 02071, Spain
[2] Univ Castilla La Mancha, Renewable Energy Res Inst Environm & Forest Resou, Campus Univ S-N, Albacete 02071, Spain
[3] Univ Castilla La Mancha, Appl Phys Dept, Campus Univ S-N, Albacete 02071, Spain
[4] Swedish Univ Agr Sci, Dept Forest Ecol & Management, Skogsruarksgrand 17, S-90183 Umea, Sweden
[5] Naturaleza & Tecnol La Mancha SL NATURTEC, Poligono Ind Rom C 1,Parcela 199 Nave E2, Albacete 02080, Spain
[6] Digital Elevat Models DIELMO 3D, Plaza Vicente Andres Estelles 2 Bajo, Valencia 46950, Spain
关键词
Mobile laser scanner; Artificial intelligence; Automatic tree detection; Ecosystem visual complexity index; Tree stem volume; Forest stand parameters; LASER SCANNERS; HEIGHT; EXTRACTION; SYSTEM; STEM;
D O I
10.1016/j.jag.2022.103014
中图分类号
TP7 [遥感技术];
学科分类号
081102 ; 0816 ; 081602 ; 083002 ; 1404 ;
摘要
Forest inventories are essential to accurately estimate different dendrometric and forest stand parameters. However, classical forest inventories are time consuming, slow to conduct, sometimes inaccurate and costly. To address this problem, an efficient alternative approach has been sought and designed that will make this type of field work cheaper, faster, more accurate, and easier to complete. The implementation of this concept has required the development of a specifically designed software called "Artificial Intelligence for Digital Forest (AID-FOREST)", which is able to process point clouds obtained via mobile terrestrial laser scanning (MTLS) and then, to provide an array of multiple useful and accurate dendrometric and forest stand parameters. Singular characteristics of this approach are: No data pre-processing is required either pre-treatment of forest stand; fully automatic process once launched; no limitations by the size of the point cloud file and fast computations.To validate AID-FOREST, results provided by this software were compared against the obtained from in-situ classical forest inventories. To guaranty the soundness and generality of the comparison, different tree spe-cies, plot sizes, and tree densities were measured and analysed. A total of 76 plots (10,887 trees) were selected to conduct both a classic forest inventory reference method and a MTLS (ZEB-HORIZON, Geoslam, ltd.) scanning to obtain point clouds for AID-FOREST processing, known as the MTLS-AIDFOREST method. Thus, we compared the data collected by both methods estimating the average number of trees and diameter at breast height (DBH) for each plot. Moreover, 71 additional individual trees were scanned with MTLS and processed by AID-FOREST and were then felled and divided into logs measuring 1 m in length. This allowed us to accurately measure the DBH, total height, and total volume of the stems.When we compared the results obtained with each methodology, the mean detectability was 97% and ranged from 81.3 to 100%, with a bias (underestimation by MTLS-AIDFOREST method) in the number of trees per plot of 2.8% and a relative root-mean-square error (RMSE) of 9.2%. Species, plot size, and tree density did not significantly affect detectability. However, this parameter was significantly affected by the ecosystem visual complexity index (EVCI). The average DBH per plot was underestimated (but was not significantly different from 0) by the MTLS-AIDFOREST, with the average bias for pooled data being 1.8% with a RMSE of 7.5%. Similarly, there was no statistically significant differences between the two distribution functions of the DBH at the 95.0% confidence level.Regarding the individual tree parameters, MTLS-AIDFOREST underestimated DBH by 0.16 % (RMSE = 5.2 %) and overestimated the stem volume (Vt) by 1.37 % (RMSE = 14.3 %, although the BIAS was not statistically significantly different from 0). However, the MTLS-AIDFOREST method overestimated the total height (Ht) of the trees by a mean 1.33 m (5.1 %; relative RMSE = 11.5 %), because of the different height concepts measured by both methodological approaches. Finally, AID-FOREST required 30 to 66 min per ha-1 to fully automatically process the point cloud data from the *.las file corresponding to a given hectare plot. Thus, applying our MTLS-AIDFOREST methodology to make full forest inventories, required a 57.3 % of the time required to perform classical plot forest inventories (excluding the data postprocessing time in the latter case). A free trial of AID -FOREST can be requested at dielmo@dielmo.com.
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页数:20
相关论文
共 60 条
  • [11] Critical Points Extraction from Building Facades by Analyzing Gradient Structure Tensor
    Chen, Dong
    Li, Jing
    Di, Shaoning
    Peethambaran, Jiju
    Xiang, Guiqiu
    Wan, Lincheng
    Li, Xianghong
    [J]. REMOTE SENSING, 2021, 13 (16)
  • [12] Applicability of personal laser scanning in forestry inventory
    Chen, Shilin
    Liu, Haiyang
    Feng, Zhongke
    Shen, Chaoyong
    Chen, Panpan
    [J]. PLOS ONE, 2019, 14 (02):
  • [13] Influence of Scan Density on the Estimation of Single-Tree Attributes by Hand-Held Mobile Laser Scanning
    Del Perugia, Barbara
    Giannetti, Francesca
    Chirici, Gherardo
    Travaglini, Davide
    [J]. FORESTS, 2019, 10 (03)
  • [14] Towards cavity-collapse hazard maps with Zeb-Revo handheld laser scanner point clouds
    Dewez, Thomas J. B.
    Yart, Silvain
    Thuon, Ysoline
    Pannet, Pierre
    Plat, Emmanuelle
    [J]. PHOTOGRAMMETRIC RECORD, 2017, 32 (160) : 354 - 376
  • [15] Adjudicating Perspectives on Forest Structure: How Do Airborne, Terrestrial, and Mobile Lidar-Derived Estimates Compare?
    Donager, Jonathon J.
    Meador, Andrew J. Sanchez
    Blackburn, Ryan C.
    [J]. REMOTE SENSING, 2021, 13 (12)
  • [16] Forest Inventory with Long Range and High-Speed Personal Laser Scanning (PLS) and Simultaneous Localization and Mapping (SLAM) Technology
    Gollob, Christoph
    Ritter, Tim
    Nothdurft, Arne
    [J]. REMOTE SENSING, 2020, 12 (09)
  • [17] Gorte B., 2004, STRUCTURING LASER SC
  • [18] Detecting Tree Stems from Volumetric TLS Data in Forest Environments with Rich Understory
    Heinzel, Johannes
    Huber, Markus O.
    [J]. REMOTE SENSING, 2017, 9 (01):
  • [19] Estimating the heights and diameters at breast height of trees in an urban park and along a street using mobile LiDAR
    Heo, Han Kyul
    Lee, Dong Kun
    Park, Jin Han
    Thorne, James H.
    [J]. LANDSCAPE AND ECOLOGICAL ENGINEERING, 2019, 15 (03) : 253 - 263
  • [20] Outlook for the Next Generation's Precision Forestry in Finland
    Holopainen, Markus
    Vastaranta, Mikko
    Hyyppa, Juha
    [J]. FORESTS, 2014, 5 (07) : 1682 - 1694