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Using Multispectral Imagery and Linear Spectral Unmixing Techniques for Estimating Crop Yield Variability

机译:使用多光谱图像和线性光谱分解技术估算作物产量变异性

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Vegetation indices derived from multispectral imagery are commonly used to extract crop growth and yield information. Spectral unmixing techniques provide an alternative approach to quantifying crop canopy abundance within each image pixel and have the potential for mapping crop yield variability. The objective of this study was to apply linear spectral unmixing techniques to airborne multispectral imagery for estimating grain sorghum yield variability. Five time-sequential airborne multispectral images and yield monitor data collected from a grain sorghum field were used for this study. Both unconstrained and constrained linear spectral unmixing models were applied to the images to generate crop plant and soil abundances for each image and for all 26 multi-image combinations of the five images. Yield was related to unconstrained and constrained plant and soil abundances as well as to the normalized difference vegetation index (NDVI) and the green NDVI (GNDVI). Results showed that unconstrained plant abundance had better correlations with yield than NDVI for all five images, but GNDVI had better correlations with yield for the first three images. Unconstrained plant abundance derived from the fourth image provided the best overall correlation with yield (r = 0.88). Moreover, multi-image combinations generally improved the correlations with yield over single images, and the best three-image combination resulted in the highest overall correlation (r = 0.90) between yield and unconstrained plant abundance. These results indicate that linear spectral unmixing techniques can be a useful tool for quantifying crop canopy abundance and mapping crop yield
机译:来自多光谱图像的植被指数通常用于提取作物生长和产量信息。光谱分解技术提供了一种量化每个图像像素内作物冠层丰度的替代方法,并具有绘制作物产量变异性的潜力。这项研究的目的是将线性光谱分解技术应用于机载多光谱图像,以估计谷物高粱的产量变异性。从谷物高粱田收集的五个时间序列机载多光谱图像和产量监测数据用于这项研究。将无约束和受约束的线性光谱解混模型都应用于图像,以针对每个图像以及五个图像的所有26个多图像组合生成农作物和土壤的丰度。产量与不受约束和受约束的植物和土壤丰度以及归一化差异植被指数(NDVI)和绿色NDVI(GNDVI)有关。结果表明,对于所有五个图像,不受约束的植物丰度与产量的相关性均高于NDVI,但对于前三个图像,GNDVI与产量的相关性更好。从第四张图像得出的不受约束的植物丰度提供了与产量的最佳总体相关性(r = 0.88)。此外,多图像组合通常比单幅图像改善了与产量的相关性,最佳的三幅图像组合导致了产量与不受约束的植物丰度之间的最高总体相关性(r = 0.90)。这些结果表明,线性光谱分解技术可以作为量化作物冠层丰度和绘制作物产量的有用工具

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