对无组织数据点进行隐式曲线和曲面鲁棒拟合的高斯-牛顿型技术

M. Aigner, B. Jüttler
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引用次数: 21

摘要

我们描述了高斯-牛顿型方法拟合隐式定义曲线和曲面到给定的无组织数据点。该方法可以处理一般的误差函数,如残差向量的l1或linfin范数的近似。根据残差的定义,我们区分了直接方法和基于数据的方法。此外,我们表明,这些方法可以被视为(离散的)迭代方法,其中在每一步中计算未知形状参数的更新,或者作为连续的进化过程,产生与时间相关的曲线或曲面族,其收敛于最终结果。结果表明,基于数据的方法-由于不需要计算最近点而成本较低-可以有效地处理适应于噪声和不确定数据的误差函数。此外,我们观察到作为演化过程的解释允许处理正则化问题和附加约束。
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Gauss-Newton-type techniques for robustly fitting implicitly defined curves and surfaces to unorganized data points
We describe Gauss-Newton type methods for fitting implicitly defined curves and surfaces to given unorganized data points. The methods can deal with general error functions, such as approximations to the l1 or linfin norm of the vector of residuals. Depending on the definition of the residuals, we distinguish between direct and data-based methods. In addition, we show that these methods can either be seen as (discrete) iterative methods, where an update of the unknown shape parameters is computed in each step, or as continuous evolution processes, that generate a time-dependent family of curves or surfaces, which converges towards the final result. It is shown that the data-based methods - which are less costly, as they work without the need of computing the closest points - can efficiently deal with error functions that are adapted to noisy and uncertain data. In addition, we observe that the interpretation as evolution process allows to deal with the issues of regularization and with additional constraints.
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