English

Recursive Diffeomorphism-Based Regression for Shape Functions

Numerical Analysis 2017-08-01 v2 Computer Vision and Pattern Recognition Statistics Theory Statistics Theory

Abstract

This paper proposes a recursive diffeomorphism based regression method for one-dimensional generalized mode decomposition problem that aims at extracting generalized modes αk(t)sk(2πNkϕk(t))\alpha_k(t)s_k(2\pi N_k\phi_k(t)) from their superposition k=1Kαk(t)sk(2πNkϕk(t))\sum_{k=1}^K \alpha_k(t)s_k(2\pi N_k\phi_k(t)). First, a one-dimensional synchrosqueezed transform is applied to estimate instantaneous information, e.g., αk(t)\alpha_k(t) and Nkϕk(t)N_k\phi_k(t). Second, a novel approach based on diffeomorphisms and nonparametric regression is proposed to estimate wave shape functions sk(t)s_k(t). These two methods lead to a framework for the generalized mode decomposition problem under a weak well-separation condition. Numerical examples of synthetic and real data are provided to demonstrate the fruitful applications of these methods.

Keywords

Cite

@article{arxiv.1610.03819,
  title  = {Recursive Diffeomorphism-Based Regression for Shape Functions},
  author = {Jieren Xu and Haizhao Yang and Ingrid Daubechies},
  journal= {arXiv preprint arXiv:1610.03819},
  year   = {2017}
}