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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Crop Yield Estimation Based on Unsupervised Linear Unmixing of Multidate Hyperspectral Imagery
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Crop Yield Estimation Based on Unsupervised Linear Unmixing of Multidate Hyperspectral Imagery

机译:基于多日期高光谱图像无监督线性分解的作物产量估算

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摘要

Hyperspectral imagery, which contains hundreds of spectral bands, has the potential to better describe the biological and chemical attributes on the plants than multispectral imagery and has been evaluated in this paper for the purpose of crop yield estimation. The spectrum of each pixel in a hyperspectral image is considered as a linear combinations of the spectra of the vegetation and the bare soil. Recently developed linear unmixing approaches are evaluated in this paper, which automatically extracts the spectra of the vegetation and bare soil from the images. The vegetation abundances are then computed based on the extracted spectra. In order to reduce the influences of this uncertainty and obtain a robust estimation results, the vegetation abundances extracted on two different dates on the same fields are then combined. The experiments are carried on the multidate hyperspectral images taken from two grain sorghum fields. The results show that the correlation coefficients between the vegetation abundances obtained by unsupervised linear unmixing approaches are as good as the results obtained by supervised methods, where the spectra of the vegetation and bare soil are measured in the laboratory. In addition, the combination of vegetation abundances extracted on different dates can improve the correlations (from 0.6 to 0.7).
机译:高光谱图像包含数百个光谱带,与多光谱图像相比,它有可能更好地描述植物的生物学和化学属性,并且已在本文中进行了评估,以估计作物产量。高光谱图像中每个像素的光谱被视为植被和裸露土壤的光谱的线性组合。本文评估了最近开发的线性分解方法,该方法可自动从图像中提取植被和裸土的光谱。然后基于提取的光谱计算植被丰度。为了减少这种不确定性的影响并获得可靠的估计结果,然后将在相同田地上两个不同日期提取的植被丰度进行组合。实验是从两个谷物高粱田拍摄的多日期高光谱图像上进行的。结果表明,通过无监督线性分解方法获得的植被丰度之间的相关系数与通过有监督方法获得的结果(在实验室中测量植被和裸土的光谱)的相关系数一样好。另外,在不同日期提取的植被丰度的组合可以改善相关性(从0.6到0.7)。

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