首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Selection of Hyperspectral Narrowbands (HNBs) and Composition of Hyperspectral Twoband Vegetation Indices (HVIs) for Biophysical Characterization and Discrimination of Crop Types Using Field Reflectance and Hyperion/EO-1 Data
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Selection of Hyperspectral Narrowbands (HNBs) and Composition of Hyperspectral Twoband Vegetation Indices (HVIs) for Biophysical Characterization and Discrimination of Crop Types Using Field Reflectance and Hyperion/EO-1 Data

机译:利用场反射和Hyperion / EO-1数据选择高光谱窄带(HNB)和高光谱双谱带植被指数(HVI)进行生物物理表征和作物类型区分

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The overarching goal of this study was to establish optimal hyperspectral vegetation indices (HVIs) and hyperspectral narrowbands (HNBs) that best characterize, classify, model, and map the world's main agricultural crops. The primary objectives were: (1) crop biophysical modeling through HNBs and HVIs, (2) accuracy assessment of crop type discrimination using Wilks' Lambda through a discriminant model, and (3) meta-analysis to select optimal HNBs and HVIs for applications related to agriculture. The study was conducted using two Earth Observing One (EO-1) Hyperion scenes and other surface hyperspectral data for the eight leading worldwide crops (wheat, corn, rice, barley, soybeans, pulses, cotton, and alfalfa) that occupy ${sim} $70% of all cropland areas globally. This study integrated data collected from multiple study areas in various agroecosystems of Africa, the Middle East, Central Asia, and India. Data were collected for the eight crop types in six distinct growth stages. These included (a) field spectroradiometer measurements (350–2500 nm) sampled at 1-nm discrete bandwidths, and (b) field biophysical variables (e.g., biomass, leaf area index) acquired to correspond with spectroradiometer measurements. The eight crops were described and classified using ${sim} $20 HNBs. The accuracy of classifying these 8 crops using HNBs was around 95%, which was ${sim} $25% better than the multi-spectral results possible from Landsat-7's Enhanced Thematic Mapper+ or EO-1's Advanced Land Imager. Further, based on this research and meta-analysis involving over 100 papers, the study established 33 optimal HNBs and an equal number of specific two-band normalized difference HVIs to best model and study specific biophysical and biochemical quantities of major agricu- tural crops of the world. Redundant bands identified in this study will help overcome the Hughes Phenomenon (or “the curse of high dimensionality”) in hyperspectral data for a particular application (e.g., biophysical characterization of crops). The findings of this study will make a significant contribution to future hyperspectral missions such as NASA's HyspIRI.
机译:这项研究的总体目标是建立最佳的高光谱植被指数(HVIs)和高光谱窄带(HNBs),以最佳地表征,分类,建模和绘制世界主要农作物。主要目标是:(1)通过HNB和HVI进行作物生物物理建模,(2)使用Wilks's Lambda通过判别模型对作物类型歧视进行准确性评估,以及(3)荟萃分析为相关应用选择最佳HNB和HVI农业。该研究使用两个地球观测一号(EO-1)Hyperion场景和其他地面高光谱数据进行,这些数据均占据了以下<公式>式的八种世界主要农作物(小麦,玉米,水稻,大麦,大豆,豆类,棉花和苜蓿) =“ inline”> $ {sim} $ 全球所有耕地面积的70%。这项研究整合了从非洲,中东,中亚和印度的各种农业生态系统的多个研究区域收集的数据。在六个不同的生长阶段收集了八种作物类型的数据。其中包括(a)以1 nm离散带宽采样的现场分光辐射计测量值(350-2500 nm),以及(b)获得的与分光辐射计测量值相对应的现场生物物理变量(例如,生物量,叶面积指数)。使用20种HNB对8种农作物进行了描述和分类,其中 $ {sim} $ 20种HNB。使用HNB对这8种农作物进行分类的准确度约为95%,比 $ {sim} $ 好25%。 Landsat-7的增强主题地图器+或EO-1的高级土地成像器可能会产生多光谱结果。此外,基于这项研究和涉及100多篇论文的荟萃分析,该研究建立了33个最佳HNB和相等数量的特定两波段归一化差异HVI,以最佳地模拟和研究该州主要农业作物的特定生物物理和生化量。世界。这项研究中确定的冗余谱带将有助于克服高光谱数据中特定应用(例如农作物的生物物理特性)的休斯现象(或“高维诅咒”)。这项研究的结果将为未来的高光谱任务(例如NASA的HyspIRI)做出重要贡献。

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