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Generalization of total least-squares on example of unweighted and weighted 2D similarity transformation

机译:关于未加权和加权2D相似度变换的示例的总最小二乘归纳

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In this contribution it is shown that the so-called "total least-squares estimate" (TLS) within an errors-in-variables (EIV) model can be identified as a special case of the method of least-squares within the nonlinear Gauss-Helmert model. In contrast to the EIV-model, the nonlinear GH-model does not impose any restrictions on the form of functional relationship between the quantities involved in the model. Even more complex EIV-models, which require specific approaches like "generalized total least-squares" (GTLS) or "structured total least-squares" (STLS), can be treated as nonlinear GH-models without any serious problems. The example of a similarity transformation of planar coordinates shows that the "total least-squares solution" can be obtained easily from a rigorous evaluation of the Gauss-Helmert model. In contrast to weighted TLS, weights can then be introduced without further limitations. Using two numerical examples taken from the literature, these solutions are compared with those obtained from certain specialized TLS approaches.
机译:在该贡献中,表明了可以将变量误差(EIV)模型中的所谓“总最小二乘估计”(​​TLS)识别为非线性高斯内最小二乘法的一种特殊情况。 -Helmert模型。与EIV模型相反,非线性GH模型对模型中涉及的量之间的函数关系形式没有施加任何限制。甚至更复杂的EIV模型,都需要使用诸如“广义总最小二乘法”(GTLS)或“结构化总最小二乘法”(STLS)之类的特定方法,可以视为非线性GH模型,而不会出现任何严重问题。平面坐标的相似性变换的示例表明,可以通过对高斯-赫尔默特模型进行严格的评估而轻松地获得“总最小二乘解”。与加权TLS相比,可以引入权重而没有更多限制。使用从文献中获得的两个数值示例,将这些解决方案与从某些专门的TLS方法获得的解决方案进行比较。

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