Model-Based Estimation of Forest Inventory Attributes Using Lidar: A Comparison of the Area-Based and Semi-Individual Tree Crown Approaches

被引:11
作者
Frank, Bryce [1 ]
Mauro, Francisco [1 ]
Temesgen, Hailemariam [1 ]
机构
[1] Oregon State Univ, Coll Forestry, Dept Forest Engn Resources & Management, 3100 SW Jefferson Way, Corvallis, OR 97333 USA
关键词
small area estimation; tree segmentation; lidar; model-based inference; linear mixed modeling; STAND CHARACTERISTICS; LEVEL; RETRIEVAL; DENSITY; CANOPY; FIELD;
D O I
10.3390/rs12162525
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The use of individual tree detection methods to support forest management inventories has been a research topic for over two decades, but a formal assessment of these methods to produce stand-level and region-level predictions of forest attributes and measures of error is lacking. We employed model-based estimation methods in conjunction with the semi-individual tree crown approach (s-ITC) to produce predictions and measures of error for tree volume (VOL), basal area (BA), stem density (DEN), and quadratic mean diameter (QMD) at the scale of forest stands and the entire study region. We compared the s-ITC approach against the area-based approach (ABA) for predictions of region-level and stand-level attributes via model-based root mean squared errors (RMSEs). The study was conducted at the Panther Creek watershed in Oregon, USA using a set of 78 field plots and aerial lidar information. For region-level attributes, s-ITC RMSEs demonstrated changes between -31% and 17% relative to ABA models. At the stand level, median s-ITC RMSEs generally increased, with changes between -29% and 414% relative to ABA models, but demonstrated important reductions in stands where segmentation provided large increases in sample size and was less prone to extrapolation than ABA models. The ABA demonstrated smaller RMSEs in stands without sampled population units for all variables. Our findings motivate further research into niche applications where s-ITC models may consistently outperform ABA models.
引用
收藏
页数:24
相关论文
共 45 条
[21]   Model-dependent forest stand-level inference with and without estimates of stand-effects [J].
Magnussen, Steen ;
Breidenbach, Johannes .
FORESTRY, 2017, 90 (05) :675-685
[22]   Analysis of spatial correlation in predictive models of forest variables that use LiDAR auxiliary information [J].
Mauro, F. ;
Monleon, V. J. ;
Temesgen, H. ;
Ruiz, L. A. .
CANADIAN JOURNAL OF FOREST RESEARCH, 2017, 47 (06) :788-799
[23]   Remote sensing estimates and measures of uncertainty for forest variables at different aggregation levels [J].
Mauro, F. ;
Molina, I. ;
Garcia-Abril, A. ;
Valbuena, R. ;
Ayuga-Tellez, E. .
ENVIRONMETRICS, 2016, 27 (04) :225-238
[24]   Analysis of area level and unit level models for small area estimation in forest inventories assisted with LiDAR auxiliary information [J].
Mauro, Francisco ;
Monleon, Vicente J. ;
Temesgen, Hailemariam ;
Ford, Kevin R. .
PLOS ONE, 2017, 12 (12)
[25]   Individual Tree Detection and Classification with UAV-Based Photogrammetric Point Clouds and Hyperspectral Imaging [J].
Nevalainen, Olli ;
Honkavaara, Eija ;
Tuominen, Sakari ;
Viljanen, Niko ;
Hakala, Teemu ;
Yu, Xiaowei ;
Hyyppa, Juha ;
Saari, Heikki ;
Polonen, Ilkka ;
Imai, Nilton N. ;
Tommaselli, Antonio M. G. .
REMOTE SENSING, 2017, 9 (03)
[26]   Predicting forest stand characteristics with airborne scanning laser using a practical two-stage procedure and field data [J].
Næsset, E .
REMOTE SENSING OF ENVIRONMENT, 2002, 80 (01) :88-99
[27]   Resolution dependence in an area-based approach to forest inventory with airborne laser scanning [J].
Packalen, Petteri ;
Strunk, Jacob ;
Packalen, Tuula ;
Maltamo, Matti ;
Mehtatalo, Lauri .
REMOTE SENSING OF ENVIRONMENT, 2019, 224 :192-201
[28]   Comparing individual tree detection and the area-based statistical approach for the retrieval of forest stand characteristics using airborne laser scanning in Scots pine stands [J].
Peuhkurinen, Jussi ;
Mehtatalo, Lauri ;
Maltamo, Matti .
CANADIAN JOURNAL OF FOREST RESEARCH, 2011, 41 (03) :583-598
[29]  
Pinheiro J, 2020, Nlme: Linear and nonlinear mixed effects models. R package version3
[30]   Estimating plot-level tree heights with lidar: local filtering with a canopy-height based variable window size [J].
Popescu, SC ;
Wynne, RH ;
Nelson, RF .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2002, 37 (1-3) :71-95