International Journal of Applied Mathematics and Computer Science (Dec 2022)

A Proximal–Based Algorithm for Piecewise Sparse Approximation with Application to Scattered Data Fitting

  • Zhong Yijun,
  • Li Chongjun,
  • Li Zhong,
  • Duan Xiaojuan

DOI
https://doi.org/10.34768/amcs-2022-0046
Journal volume & issue
Vol. 32, no. 4
pp. 671 – 682

Abstract

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In some applications, there are signals with a piecewise structure to be recovered. In this paper, we propose a piecewise sparse approximation model and a piecewise proximal gradient method (JPGA) which aim to approximate piecewise signals. We also make an analysis of the JPGA based on differential equations, which provides another perspective on the convergence rate of the JPGA. In addition, we show that the problem of sparse representation of the fitting surface to the given scattered data can be considered as a piecewise sparse approximation. Numerical experimental results show that the JPGA can not only effectively fit the surface, but also protect the piecewise sparsity of the representation coefficient.

Keywords