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Yield estimation from hyperspectral imagery using spectral angle mapper (SAM).

机译:使用光谱角映射器(SAM)从高光谱图像进行产量估算。

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摘要

Vegetation indices (VIs) derived from remotely sensed imagery are commonly used to estimate crop yields. Spectral angle mapper (SAM) provides an alternative approach to quantifying the spectral differences among all pixels in an image and therefore has the potential for mapping yield variability. The objective of this study was to apply the SAM technique to airborne hyperspectral imagery for mapping yield variability. Airborne hyper spectral imagery was acquired from two grain sorghum fields in south Texas (USA), and yield data were collected using a grain yield monitor. SAM images were generated from the hyperspectral images based on six reference spectra extracted directly from the hyperspectral images and four reflectance spectra measured on the ground. Statistical analysis showed that the ten SAM images for each field produced similar correlation coefficients with yield. For comparison, all 5151 possible narrow-band normalized difference vegetation indices (NDVIs) were derived from the 102-band images and related to yield. Results showed that the SAM images based on the soil reference spectra provided higher correlation coefficients with yield than 75 and 92% of the 5151 narrow-band NDVIs for fields 1 and 2, respectively. Like an NDVI image, a SAM image can be easily generated from a hyperspectral image to characterize the spatial variability in yield. Moreover, since the best NDVI typically varies with yield datasets, a SAM image based on a single reference spectrum can be a better representation of yield variability if actual yield data are not available for the identification of the best NDVI. The results indicate that the SAM technique can be used alone or in conjunction with other VIs for yield estimation from hyperspectral imagery.
机译:来自遥感影像的植被指数(VIs)通常用于估算农作物产量。光谱角映射器(SAM)提供了另一种方法来量化图像中所有像素之间的光谱差异,因此具有映射良率变化的潜力。这项研究的目的是将SAM技术应用于机载高光谱图像,以绘制产量变化。从美国得克萨斯州南部的两个谷物高粱田采集了机载高光谱图像,并使用谷物产量监控器收集了产量数据。基于直接从高光谱图像中提取的六个参考光谱和在地面上测量的四个反射光谱,从高光谱图像中生成SAM图像。统计分析表明,每个场的十张SAM图像产生的收益率具有相似的相关系数。为了进行比较,所有的5151种可能的窄带归一化植被指数(NDVI)均来自102波段图像,并与产量相关。结果表明,基于土壤参考光谱的SAM图像提供了更高的相关系数,与产量相比,分别对应于场1和场2的5151窄带NDVI的75和92%。像NDVI图像一样,可以轻松地从高光谱图像生成SAM图像,以表征产量的空间变异性。此外,由于最佳NDVI通常随产量数据集而变化,如果实际产量数据不可用于识别最佳NDVI,则基于单个参考光谱的SAM图像可以更好地表示产量可变性。结果表明,SAM技术可以单独使用,也可以与其他VI结合使用,以根据高光谱图像估算产量。

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