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Mapping the spatial pattern of temperate forest above ground biomass by integrating airborne LiDAR with Radarsat-2 imagery via geostatistical models

机译:通过地统计学模型将机载LiDAR与Radarsat-2影像整合,绘制地面生物量以上温带森林的空间格局

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Light Detection and Ranging (LiDAR) and Synthetic Aperture Radar (SAR) are two competitive active remote sensing techniques in forest above ground biomass estimation, which is important for forest management and global climate change study. This study aims to further explore their capabilities in temperate forest above ground biomass (AGB) estimation by emphasizing the spatial auto-correlation of variables obtained from these two remote sensing tools, which is a usually overlooked aspect in remote sensing applications to vegetation studies. Remote sensing variables including airborne LiDAR metrics, backscattering coefficient for different SAR polarizations and their ratio variables for Radarsat-2 imagery were calculated. First, simple linear regression models (SLR) was established between the field-estimated above ground biomass and the remote sensing variables. Pearson's correlation coefficient (R~2) was used to find which LiDAR metric showed the most significant correlation with the regression residuals and could be selected as co-variable in regression co-kriging (RCoKrig). Second, regression co-kriging was conducted by choosing the regression residuals as dependent variable and the LiDAR metric (Hmean) with highest R~2 as co-variable. Third, above ground biomass over the study area was estimated using SLR model and RCoKrig model, respectively. The results for these two models were validated using the same ground points. Results showed that both of these two methods achieved satisfactory prediction accuracy, while regression co-kriging showed the lower estimation error. It is proved that regression co-kriging model is feasible and effective in mapping the spatial pattern of AGB in the temperate forest using Radarsat-2 data calibrated by airborne LiDAR metrics.
机译:光探测与测距(LiDAR)和合成孔径雷达(SAR)是森林地上生物量估算中的两种竞争性主动遥感技术,对森林管理和全球气候变化研究具有重要意义。这项研究旨在通过强调从这两个遥感工具获得的变量的空间自相关性,进一步探索其在温带森林地上生物量(AGB)估计中的能力,这在遥感技术应用于植被研究中通常被忽视。计算了遥感变量,包括机载LiDAR度量,不同SAR极化的后向散射系数及其对Radarsat-2影像的比率变量。首先,在现场估算的地面生物量与遥感变量之间建立了简单的线性回归模型(SLR)。利用皮尔逊相关系数(R〜2)来确定哪种LiDAR度量标准与回归残差之间的相关性最显着,并且可以将其选择为回归协克里金(RCoKrig)的协变量。其次,通过选择回归残差作为因变量,选择R〜2最高的LiDAR度量(Hmean)作为协变量,进行回归协同克里格法。第三,分别使用SLR模型和RCoKrig模型估算研究区域的地上生物量。使用相同的基准点验证了这两个模型的结果。结果表明,这两种方法均达到了令人满意的预测精度,而回归协同克里格法则显示出较低的估计误差。通过机载LiDAR指标校准的Radarsat-2数据,证明了回归协同克里格模型在温带森林AGB空间图的绘制中是可行和有效的。

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