资源论文SHORT AND SPARSE DECONVOLUTION —A GEOMET-RIC APPROACH

SHORT AND SPARSE DECONVOLUTION —A GEOMET-RIC APPROACH

2020-01-02 | |  56 |   45 |   0

Abstract

Short-and-sparse deconvolution (SaSD) is the problem of extracting localized, recurring motifs in signals with spatial or temporal structure. Variants of this problem arise in applications such as image deblurring, microscopy, neural spike sorting, and more. The problem is challenging in both theory and practice, as natural optimization formulations are nonconvex. Moreover, practical deconvolution problems involve smooth motifs (kernels) whose spectra decay rapidly, resulting in poor conditioning and numerical challenges. This paper is motivated by recent theoretical advances (Zhang et al., 2017; Kuo et al., 2019), which characterize the optimization landscape of a particular nonconvex formulation of SaSD and give a provable algorithm which exactly solves certain non-practical instances of the SaSD problem. We leverage the key ideas from this theory (sphere constraints, datadriven initialization) to develop a practical algorithm, which performs well on data arising from a range of application areas. We highlight key additional challenges posed by the ill-conditioning of real SaSD problems, and suggest heuristics (acceleration, continuation, reweighting) to mitigate them. Experiments demonstrate the performance and generality of the proposed method.

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