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Grey Cluster Estimating Model of Soil Organic Matter Content Based On Hyper-spectral Data

机译:基于高光谱数据的土壤有机质含量灰色聚类估计模型

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As to the uncertainty relations between soil organic matter content and spectral characteristics, at first, based on the objective function that sum of squares of generalized weighted grey distance is minimum, this paper proposes a new self-iteration grey clustering model whose classification standard is unknown. It then establishes a grey clustering estimating model of soil organic matter content based on hyper-spectral data, and then applies the model to Hengshan County of Shanxi Province. The results show that ?he self-iteration grey clustering model can not only make full use of the intrinsic information of clustering object indicators but also utilize expert knowledge and experience, and overcome the subjectivity of determining classification standards and weights. The average whitening and grey prediction accuracy of test sample is 93.088% and 99.192% respectively. The example shows that the presented model is valid.
机译:关于土壤有机质含量与光谱特征之间的不确定性关系,首先,基于广义加权灰度距离平方和最小的目标函数,提出了分类标准未知的自迭代灰度聚类模型。 。然后基于高光谱数据建立了土壤有机质含量的灰色聚类估计模型,并将其应用于山西省衡山县。结果表明,该自迭代灰色聚类模型不仅可以充分利用聚类指标的内在信息,而且可以利用专家的知识和经验,克服了确定分类标准和权重的主观性。测试样品的平均增白和灰度预测准确度分别为93.088%和99.192%。该示例表明所提出的模型是有效的。

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