Approximation of noisy data using multivariate splines and finite element methods

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Abstract

We compare a recently proposed multivariate spline based on mixed partial derivatives with two other standard splines for the scattered data smoothing problem. The splines are defined as the minimiser of a penalised least squares functional. The penalties are based on partial differential operators, and are integrated using the finite element method. We compare three methods to two problems: to remove the mixture of Gaussian and impulsive noise from an image, and to recover a continuous function from a set of noisy observations.

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Lamichhane, B. P., Harris, E., & Le Gia, Q. T. (2021). Approximation of noisy data using multivariate splines and finite element methods. Journal of Algorithms and Computational Technology, 15. https://doi.org/10.1177/17483026211008405

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