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Collocation Based on Different Variance Component Estimators with Application in GIS Error Fitting

机译:基于不同方差分量估计的搭配在GIS误差拟合中的应用

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Collocation needs to know the covariance matrix of the signal vector,which is usually evaluated by a chosen covariance function and corresponding coefficient fitting. The covariance matrices of the observational noises and the stochastic signals should be harmonic,the corresponding weight matrices of the observations and the signals should correspond to the same variance scale. Otherwise,the collocation results will be twisted. This paper introduces the variance component estimation to balance the stochastic models of the observations and signals in a collocation model. The maximum likelihood estimator,MINQUE estimator and Helmert estimator of variance components are applied and compared in the collocation. A practical example of error fitting and correcting for a scanning map is given. It is shown that the collocation supported by variance component estimation improves the accuracy of scanning maps,and three kinds of variance component estimations and the approximate Helmert type estimation are nearly equivalent.
机译:搭配需要知道信号向量的协方差矩阵,通常通过选择的协方差函数和相应的系数拟合来对其进行评估。观测噪声和随机信号的协方差矩阵应该是谐波,相应的观测权重和信号权重矩阵应该对应相同的方差尺度。否则,并置结果将被扭曲。本文介绍了方差分量估计,以在搭配模型中平衡观测和信号的随机模型。应用方差分量的最大似然估计器,MINQUE估计器和Helmert估计器,并在搭配中进行比较。给出了误差拟合和校正扫描图的实际示例。结果表明,方差成分估计支持的搭配提高了扫描图的准确性,并且三种方差成分估计与近似Helmert类型估计几乎相等。

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