Blind Deconvolution by a Steepest Descent Algorithm on a Quotient Manifold
Authors
Wen Huang, Paul Hand
Abstract
In this paper, we propose a Riemannian steepest descent method for solving a blind deconvolution problem. We prove that the proposed algorithm with an appropriate initialization will recover the exact solution with high probability when the number of measurements is, up to log-factors, the information-theoretical minimum scaling. The quotient structure in our formulation yields a simpler penalty term in the cost function compared to [LLSW16], which eases the convergence analysis and yields a natural implementation. Empirically, the proposed algorithm has better performance than the Wirtinger gradient descent algorithm and an alternating minimization algorithm in the sense that i) it needs fewer operations, such as DFTs and matrix-vector multiplications, to reach a similar accuracy, and ii) it has a higher probability of successful recovery in synthetic tests. An image deblurring problem is also used to demonstrate the efficiency and effectiveness of the proposed algorithm.
Key words
Blind Deconvolution, nonconvex optimization, Riemannian optimization; Quotient manifold; Fixed-rank manifold
Status
Accepted in SIAM Journal on Imaging Sciences.
Download
- Technical report: arxiv
- Experiment code: zip
BibTex entry
- Technical Report
@TECHREPORT{HH2017,
author = "Wen Huang and Paul Hand",
title = "Blind Deconvolution by a Steepest Descent Algorithm on a Quotient Manifold",
arxiv = "1710.03309",
year = 2017,
}