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Fusing optical and radar data to estimate sagebrush, herbaceous, and bare ground cover in Yellowstone

机译:融合光学和雷达数据以估算黄石中的鼠尾草,草本植物和裸露的地面覆盖物

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The and and semi-arid sagebrush-grass ecosystem occupies a substantial portion of rangelands in the western United States. Using remote sensing techniques to map the percent of sagebrush, grass/forb, and bare ground components is necessary for forage production estimation and natural resource management over large areas. However optical data have significant deficiencies in these ecosystems because of exposed bright soil, spectrally-indeterminate vegetation, and a large dead vegetation component. Radar data also have deficiencies caused by factors such as antenna pattern calibration, local incidence angle (LIA), soil moisture, and surface roughness. With the complementary vegetation information gained from optical data and radar data, these two datasets were fused to estimate 10-m sagebrush, grass, and bare ground percent cover in the non-forested areas of Yellowstone National Park, which is a representative native western rangeland ecosystem of the US. The datasets were processed to resolve the issues of antenna pattern calibration and LIA effect. Peak green Landsat, late fall Airborne Visible and Infrared Imaging Spectrometer (AVIRIS), and Airborne Synthetic Aperture Radar (AirSAR) data were fused in this analysis. AVIRIS, Landsat, AirSAR and elevation data were used to segment the study area into two main subcategories of "pure grass" and "mixed sagebrush and grass". Landsat Tasseled Cap Greenness (LTCG) was used to retrieve bare land and grass percentages in pure grass areas. In the areas with mixed grass and sagebrush, standardized LTCG and radar C-vv were used to derive the vegetation cover percentage, and the ratio of standardized LTCG and radar L-hv was further used to calculate the relative abundance of sagebrush and grass. Comparison between the field and remote sensing estimations shows the correlation coefficients were 0.838, 0.746, and 0.830 for bare land, grass, and sagebrush, respectively. When grouped into three discrete categories of "low", "medium", and "high", the overall accuracies were 79.4%, 75.9%, and 77.6%. respectively. Our study shows the potential for application of global spaceborne C- and L-band radar and optical data fusion for large-area rangeland monitoring.
机译:鼠尾草和半干旱鼠尾草草的生态系统占据了美国西部牧场的很大一部分。对于大型地区的草料产量估算和自然资源管理,必须使用遥感技术绘制鼠尾草,草/草和裸露地成分的比例图。然而,由于暴露的明亮土壤,光谱不确定的植被以及大量的枯死植被成分,光学数据在这些生态系统中存在明显的缺陷。雷达数据还存在缺陷,这些缺陷是由诸如天线方向图校准,局部入射角(LIA),土壤湿度和表面粗糙度等因素引起的。借助从光学数据和雷达数据获得的补充植被信息,将这两个数据集融合在一起,以估算黄石国家公园非森林地区(代表西部原生牧场)的10米鼠尾草,草和裸露的地面覆盖率美国的生态系统。处理数据集以解决天线方向图校准和LIA效应的问题。在此分析中融合了峰值绿色Landsat,深秋的机载可见光和红外成像光谱仪(AVIRIS)和机载合成孔径雷达(AirSAR)数据。使用AVIRIS,Landsat,AirSAR和海拔数据将研究区域划分为“纯草”和“鼠尾草和草混合”两个主要子类别。 Landsat asse草帽绿度(LTCG)用于在纯草地区恢复裸地和草的百分比。在混有鼠尾草的地区,用标准LTCG和雷达C-vv得出植被覆盖率,并用标准化LTCG和雷达L-hv的比值计算鼠尾草和草的相对丰度。野外估计与遥感估计之间的比较表明,裸地,草和鼠尾草的相关系数分别为0.838、0.746和0.830。当分为“低”,“中”和“高”三个离散类别时,总体准确度分别为79.4%,75.9%和77.6%。分别。我们的研究表明了将全球星载C波段和L波段雷达以及光学数据融合应用于大范围牧场监测的潜力。

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