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Mapping biomass and stress in the Sierra Nevada using lidar and hyperspectral data fusion

机译:使用激光雷达和高光谱数据融合绘制内华达山脉的生物量和应力图

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In this paper, we explored fusion of structural metrics from the Laser Vegetation Imaging Sensor (LVIS) and spectral characteristics from the Airborne Visible Infrared Imaging Spectrometer (AVIRIS) for biomass estimation in the Sierra Nevada. In addition, we combined the two sensors to map species-specific biomass and stress at landscape scale. Multiple endmember spectral mixture analysis (MESMA) was used to classify vegetation from AVIRIS images and obtain sub-pixel fractions of green vegetation, non-photosynthetic vegetation, soil, and shade. LVIS metrics, AVIRIS spectral indices, and MESMA fractions were compared with field measures of biomass using linear and stepwise regressions at stand (1ha) level. AVIRIS metrics such as water band indices and shade fractions showed strong correlation with LVIS canopy height (r~2=0.69, RMSE=5.2m) and explained around 60% variability in biomass. LVIS variables were found to be consistently good predictors of total and species specific biomass (r~2=0.77, RMSE=70.12Mg/ha). Prediction by LVIS after species stratification of field data reduced errors by 12% (r~2=0.84, RMSE=58.78Mg/ha) over using LVIS metrics alone. Species-specific biomass maps and associated errors created from fusion were different from those produced without fusion, particularly for hardwoods and pines, although mean biomass differences between the two techniques were not statistically significant. A combined analysis of spatial maps from LVIS and AVIRIS showed increased water and chlorophyll stress in several high biomass stands in the study area. This study provides further evidence that lidar is better suited for biomass estimation, per se, while the best use of hyperspectral data may be to refine biomass predictions through a priori species stratification, while also providing information on canopy state, such as stress. Together, the two sensors have many potential applications in carbon dynamics, ecological and habitat studies.
机译:在本文中,我们探索了激光植被成像传感器(LVIS)的结构指标与机载可见红外成像光谱仪(AVIRIS)的光谱特征的融合,用于内华达山脉的生物量估算。此外,我们结合了这两种传感器,可在景观尺度上绘制特定物种的生物量和压力。使用多端元光谱混合分析(MESMA)对AVIRIS图像中的植被进行分类,并获得绿色植被,非光合植被,土壤和阴影的亚像素部分。使用标准(1ha)水平的线性和逐步回归,将LVIS指标,AVIRIS光谱指数和MESMA分数与生物量的现场测量值进行比较。 AVIRIS指标(如水带指数和阴影分数)与LVIS冠层高度(r〜2 = 0.69,RMSE = 5.2m)显示出很强的相关性,并解释了生物量约60%的变异性。发现LVIS变量始终是总生物量和物种特定生物量的良好预测因子(r〜2 = 0.77,RMSE = 70.12Mg / ha)。与仅使用LVIS指标相比,通过对现场数据进行物种分层后的LV​​IS预测,可将误差降低12%(r〜2 = 0.84,RMSE = 58.78Mg / ha)。尽管两种技术之间的平均生物量差异在统计学上没有显着性,但特定物种的生物量图和因融合而产生的相关误差与没有融合时产生的图不同,特别是对于硬木和松树。来自LVIS和AVIRIS的空间图的综合分析表明,研究区域中几个高生物量林分中水分和叶绿素胁迫的增加。这项研究提供了进一步的证据,证明激光雷达本身更适合于生物量估计,而高光谱数据的最佳用途可能是通过先验物种分层来完善生物量预测,同时还提供有关冠层状态(例如胁迫)的信息。这两个传感器一起在碳动力学,生态学和栖息地研究中具有许多潜在应用。

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