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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Exploring LIDAR-RaDAR synergy - predicting aboveground biomass in a southwestern ponderosa pine forest using LiDAR, SAR and InSAR
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Exploring LIDAR-RaDAR synergy - predicting aboveground biomass in a southwestern ponderosa pine forest using LiDAR, SAR and InSAR

机译:探索LIDAR-RaDAR的协同作用-使用LiDAR,SAR和InSAR预测西南黄松林的地上生物量

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摘要

Scanning Light Detecting and Ranging (LiDAR), Synthetic Aperture Radar (SAR) and Interferometric SAR (InSAR) were analyzed to determine (1) which of the three sensor systems most accurately predicted forest biomass, and (2) if LiDAR and SAR/InSAR data sets, jointly considered, produced more accurate, precise results relative to those same data sets considered separately. LiDAR ranging measurements, VHF-SAR cross-sectional returns, and X- and P-band cross-sectional returns and interferometric ranges were regressed with ground-estimated (from dbh) forest biomass in ponderosa, pine forests in the southwestern United States. All models were cross-validated. Results indicated that the average canopy height measured by the scanning LiDAR produced the best predictive equation. The simple linear LiDAR equation explained 83% of the biomass variability (n = 52 plots) with a cross-validated root mean square error of 26.0 t/ha. Additional LiDAR metrics were not significant to the model. The GeoSAR P-band (lambda=86 cm) cross-sectional return and the GeoSAR/InSAR canopy height (X-P) captured 30% of the forest biomass variation with an average predictive error of 52.5 t/ha. A second RaDAR-FOPEN collected VHF (lambda similar to 7.8 m) and cross-polarized P-band (lambda = 88 cm) cross-sectional returns, none of which proved useful for forest biomass estimation (cross-validated R-2 =0.09, RMSE=63.7 t/ha). Joint consideration of LiDAR and RaDAR measurements produced a statistically significant, albeit small improvement in biomass estimation precision. The cross-validated R-2 increased from 83% to 84% and the prediction error decreased from 26.0 t/ha to 24.9 t/ha when the GeoSAR X-P interferometric height is considered along with the average LiDAR canopy height. Inclusion of a third LiDAR metric, the 60th decile height, further increased the R-2 to 85% and decreased the RMSE to 24.1 t/ha. On this I I km(2) ponderosa pine study area, LiDAR data proved most useful for predicting forest biomass. RaDAR ranging measurements did not improve the LiDAR estimates. (c) 2006 Elsevier Inc. All rights reserved.
机译:分析了扫描光探测与测距(LiDAR),合成孔径雷达(SAR)和干涉式SAR(InSAR),以确定(1)三种传感器系统中哪个最准确地预测了森林生物量,以及(2)LiDAR和SAR / InSAR是否与单独考虑的相同数据集相比,共同考虑的数据集产生了更准确,更精确的结果。 LiDAR测距测量,VHF-SAR横截面回报,X波段和P波段横截面回报以及干涉测量范围与美国西南部黄松,松林的地面估算(来自dbh)森林生物量进行了回归。所有模型都经过交叉验证。结果表明,通过扫描LiDAR测量的平均冠层高度产生了最佳的预测方程。简单的线性LiDAR方程式解释了83%的生物量可变性(n = 52个图),交叉验证的均方根误差为26.0 t / ha。额外的LiDAR指标对该模型并不重要。 GeoSAR P带(λ= 86 cm)横截面回波和GeoSAR / InSAR冠层高度(X-P)捕获了30%的森林生物量变化,平均预测误差为52.5吨/公顷。第二个RaDAR-FOPEN收集了VHF(λ近似于7.8 m)和交叉极化的P波段(λ= 88 cm)的横截面回波,没有一个对森林生物量估计有用(交叉验证的R-2 = 0.09 ,RMSE = 63.7吨/公顷)。 LiDAR和RaDAR测量的共同考虑产生了统计学上的显着意义,尽管生物量估算精度有所提高。当考虑GeoSAR X-P干涉高度和平均LiDAR顶篷高度时,交叉验证的R-2从83%增加到84%,预测误差从26.0 t / ha减少到24.9 t / ha。包括第三个LiDAR度量标准(第60十分位高度),R-2进一步提高到85%,RMSE降低到24.1吨/公顷。在这个I km(2)的美国黄松研究区上,LiDAR数据证明对预测森林生物量最有用。 RaDAR测距测量并不能改善LiDAR估算值。 (c)2006 Elsevier Inc.保留所有权利。

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