General Approach for Forest Woody Debris Detection in Multi-Platform LiDAR Data

被引:0
作者
dos Santos, Renato Cesar [1 ]
Shin, Sang-Yeop [2 ]
Manish, Raja [2 ]
Zhou, Tian [2 ]
Fei, Songlin [3 ]
Habib, Ayman [2 ]
机构
[1] Sao Paulo State Univ, Dept Cartog, BR-19060900 Presidente Prudente, SP, Brazil
[2] Purdue Univ, Lyles Sch Civil & Construct Engn, W Lafayette, IN 47907 USA
[3] Purdue Univ, Dept Forestry & Nat Resources, W Lafayette, IN 47907 USA
基金
巴西圣保罗研究基金会;
关键词
woody debris; fuel load mapping; forestry; point cloud; morphological approaches; geometric features; LiDAR intensity; FUEL CONSUMPTION; FIRES; PREDICTION; LANDSCAPE;
D O I
10.3390/rs17040651
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Woody debris (WD) is an important element in forest ecosystems. It provides critical habitats for plants, animals, and insects. It is also a source of fuel contributing to fire propagation and sometimes leads to catastrophic wildfires. WD inventory is usually conducted through field surveys using transects and sample plots. Light Detection and Ranging (LiDAR) point clouds are emerging as a valuable source for the development of comprehensive WD detection strategies. Results from previous LiDAR-based WD detection approaches are promising. However, there is no general strategy for handling point clouds acquired by different platforms with varying characteristics such as the pulse repetition rate and sensor-to-object distance in natural forests. This research proposes a general and adaptive morphological WD detection strategy that requires only a few intuitive thresholds, making it suitable for multi-platform LiDAR datasets in both plantation and natural forests. The conceptual basis of the strategy is that WD LiDAR points exhibit non-planar characteristics and a distinct intensity and comprise clusters that exceed a minimum size. The developed strategy was tested using leaf-off point clouds acquired by Geiger-mode airborne, uncrewed aerial vehicle (UAV), and backpack LiDAR systems. The results show that using the intensity data did not provide a noticeable improvement in the WD detection results. Quantitatively, the approach achieved an average recall of 0.83, indicating a low rate of omission errors. Datasets with a higher point density (i.e., from UAV and backpack LiDAR) showed better performance. As for the precision evaluation metric, it ranged from 0.40 to 0.85. The precision depends on commission errors introduced by bushes and undergrowth.
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页数:30
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  • [1] Shokirov S., Schaefer M., Levick S.R., Jucker T., Borevitz J., Abdurahmanov I., Youngentob K., Multi-platform LiDAR approach for detecting coarse woody debris in a landscape with varied ground cover, Int. J. Remote Sens, 42, pp. 9324-9350, (2021)
  • [2] Lopes Queiroz G., McDermid G.J., Castilla G., Linke J., Rahman M.M., Mapping Coarse Woody Debris with Random Forest Classification of Centimetric Aerial Imagery, Forests, 10, (2019)
  • [3] Harmon M., Franklin J., Swanson F., Sollins P., Gregory S., Lattin J., Anderson N., Cline S., Aumen N., Sedell J., Ecology of coarse woody debris in temperate ecosystems, Adv. Ecol. Res, 34, pp. 59-234, (2004)
  • [4] Manning A.D., Cunningham R.B., Lindenmayer D.B., Bringing forward the benefits of coarse woody debris in ecosystem recovery under different levels of grazing and vegetation density, Biol. Conserv, 157, pp. 204-214, (2013)
  • [5] Woldendorp G., Keenan R.J., Coarse woody debris in Australian forest ecosystems: A review, Austral Ecol, 30, pp. 834-843, (2005)
  • [6] Hollis J., Matthews S., Anderson W., Cruz M., Burrows N., Behind the flaming zone: Predicting woody fuel consumption in eucalypt forest fires in southern Australia, For. Ecol. Manag, 261, pp. 2049-2067, (2011)
  • [7] Sullivan A., Surawski N., Crawford D., Hurley R., Volkova L., Weston C., Meyer C., Effect of woody debris on the rate of spread of surface fires in forest fuels in a combustion wind tunnel, For. Ecol. Manag, 424, pp. 236-245, (2018)
  • [8] van Leeuwen T.T., van der Werf G.R., Hoffmann A.A., Detmers R.G., Rucker G., French N.H., Archibald S., Carvalho J., Cook G.D., de Groot W.J., Biomass burning fuel consumption rates: A field measurement database, Biogeosciences, 11, pp. 7305-7329, (2014)
  • [9] Volkova L., Weston C.J., Carbon loss from planned fires in southeastern Australian dry Eucalyptus forests, For. Ecol. Manag, 336, pp. 91-98, (2015)
  • [10] Kurbanov E., Vorobev O., Lezhnin S., Sha J., Wang J., Li X., Cole J., Dergunov D., Wang Y., Remote sensing of forest burnt area, burn severity, and post-fire recovery: A review, Remote Sens, 14, (2022)