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Applying linear spectral unmixing to airborne hyperspectral imagery for mapping crop yield variability

机译:应用线性光谱解密到机载高光谱图像,用于映射作物产量变异性

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This study evaluated linear spectral unmixing techniques for mapping the variation in crop yield. Both unconstrained and constrained linear spectral unmixing models were applied to airborne hyperspectral imagery recorded from a grain sorghum field and a cotton field. A pair of plant and soil spectra derived from each image was used as endmember spectra to generate unconstrained and constrained plant and soil cover fractions. Yield was positively related to plant fractions and negatively related to soil fractions. For comparison, all 5151 possible narrow-band normalized difference vegetation indices (NDVIs) were calculated from the 102-band images and related to yield. Plant fractions provided better correlations with yield than the majority of the NDVIs. These results indicate that plant cover fraction maps derived from hyperspectral imagery can be used as relative yield maps to characterize crop yield variability.
机译:该研究评估了用于映射作物产量的变化的线性光谱解密技术。无约束和约束的线性光谱解混模型应用于从谷物高粱场和棉田记录的机载高光谱图像。从每个图像衍生的一对植物和土壤光谱用作终点光谱,以产生无约束和约束的植物和土壤覆盖级分。产率与植物分数呈正相关,与土壤部分负相关。为了比较,从102频带图像计算所有5151可能的窄带归一化差异植被指数(NDVIS)并与产量相关。植物馏分提供了比大多数NDVI的产量更好的相关性。这些结果表明,从高光谱图像衍生的植物覆盖分数图可以用作相对产量图,以表征作物产量变异性。

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