4.5 Article

The local piecewisely linear kernel smoothing procedure for fitting jump regression surfaces

Journal

TECHNOMETRICS
Volume 46, Issue 1, Pages 87-98

Publisher

AMER STATISTICAL ASSOC
DOI: 10.1198/004017004000000149

Keywords

denoising; edge detection; image reconstruction; jump location curves; jump-preserving surface estimation; local linear kernel estimation; nonparametric regression

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It is known that a surface fitted by conventional local smoothing procedures is not statistically consistent at the jump locations of the true regression surface. This article suggests a procedure for modifying conventional local smoothing procedures such that the modified procedures fit the surface with jumps preserved automatically. Taking the local linear kernel smoothing procedure as an example, in a neighborhood of a given point, a bivariate piecewisely linear function is fitted with possible jumps along the boundaries of four quadrants. The fitted function provides four estimators of the surface at the given point, which are constructed from observations in the four quadrants. When the difference among the four estimators is smaller than a threshold value, the given point is most likely a continuous point, and the surface at that point is then estimated by the average of the four estimators. When the difference is larger than the threshold value, the given point is likely a jump point, and at least one of the four estimators estimates the surface well under some regularity conditions. By comparing the weighted residual sums of squares of the four estimators, the best one is selected to define the surface estimator at the given point. Like most conventional estimators, the current surface estimator has an explicit mathematical formula and thus is easy to compute and convenient to use. It can be applied directly to image reconstruction problems and other jump surface estimation problems, including mine surface estimation in geology and equitemperature surface estimation in meteorology and oceanography.

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