首页> 外文期刊>International journal of applied earth observation and geoinformation >Multi-scale remote sensing sagebrush characterization with regression trees over Wyoming, USA: Laying a foundation for monitoring
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Multi-scale remote sensing sagebrush characterization with regression trees over Wyoming, USA: Laying a foundation for monitoring

机译:美国怀俄明州具有回归树的多尺度遥感鼠尾草特征:为监测奠定基础

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摘要

Sagebrush ecosystems in North America have experienced extensive degradation since European settlement. Further degradation continues from exotic invasive plants, altered fire frequency, intensive grazing practices, oil and gas development, and climate change -adding urgency to the need for ecosystem-wide understanding. Remote sensing is often identified as a key information source to facilitate ecosystem-wide characterization, monitoring, and analysis; however, approaches that characterize sagebrush with sufficient and accurate local detail across large enough areas to support this paradigm are unavailable. We describe the development of a new remote sensing sagebrush characterization approach for the state of Wyoming, U.S.A. This approach integrates 2.4 m QuickBird, 30 m Landsat TM, and 56 m AWiFS imagery into the characterization of four primary continuous field components including percent bare ground, percent herbaceous cover, percent litter, and percent shrub, and four secondary components including percent sagebrush (Artemisia spp.), percent big sagebrush (Artemisia tridentata), percent Wyoming sagebrush (Artemisia tridentata Wyomingensis), and shrub height using a regression tree. According to an independent accuracy assessment, primary component root mean square error (RMSE) values ranged from 4.90 to 10.16 for 2.4 m QuickBird, 6.01 to 15.54 for 30 m Landsat, and 6.97 to 16.14 for 56 m AWiFS. Shrub and herbaceous components outperformed the current data standard called LANDFIRE, with a shrub RMSE value of 6.04 versus 12.64 and a herbaceous component RMSE value of 12.89 versus 14.63. This approach offers new advancements in sagebrush characterization from remote sensing and provides a foundation to quantitatively monitor these components into the future.
机译:自欧洲定居以来,北美的鼠尾草生态系统经历了广泛的退化。外来入侵植物,改变的射击频率,密集的放牧习惯,石油和天然气开发以及气候变化继续导致进一步的退化,这增加了对整个生态系统的了解的紧迫性。遥感通常被认为是促进整个生态系统的表征,监测和分析的关键信息来源;但是,尚无法使用在足够大的区域上具有足够准确的局部细节来表征鼠尾草的方法来支持这种范例。我们描述了针对美国怀俄明州的一种新的遥感鼠尾草表征方法的开发。该方法将2.4 m QuickBird,30 m Landsat TM和56 m AWiFS影像整合到了四个主要连续场成分的表征中,包括裸地百分比,草本覆盖率,凋落物和灌木的百分比,以及四个次要成分,包括鼠尾草(Artemisia spp。),大鼠尾草(Artemisia tridentata),怀俄明鼠尾草(Artemisia tridentata Wyomingensis)和使用回归树的灌木高度。根据一项独立的准确性评估,对于2.4 m QuickBird,主要成分均方根误差(RMSE)值范围为4.90至10.16,对于30 m Landsat,主要成分均方根误差(RMSE)值范围为6.01至15.54,对于56 m AWiFS,其范围为6.97至16.14。灌木和草本成分的性能优于当前的数据标准LANDFIRE,灌木的RMSE值为6.04对12.64,草本成分的RMSE值为12.89对14.63。这种方法从遥感技术的树丹树表征方面提供了新的进步,并提供了定量监测未来这些成分的基础。

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