A Non-Convex Optimization Technique for Sparse Blind Deconvolution -- Initialization Aspects and Error Reduction Properties
Aniruddha Adiga, Chandra Sekhar Seelamantula

TL;DR
This paper introduces ALPA, a non-convex optimization algorithm for sparse blind deconvolution that improves accuracy through better initialization and error bounds, especially in speech signal applications.
Contribution
It develops a novel iterative scheme for non-convex sparse blind deconvolution, analyzing initialization effects and demonstrating superior accuracy over existing methods.
Findings
ALPA outperforms state-of-the-art algorithms in deconvolution accuracy.
The method effectively handles non-convexity and regularization in blind deconvolution.
Accurate deconvolution of speech signals into sparse excitation and smooth response.
Abstract
Sparse blind deconvolution is the problem of estimating the blur kernel and sparse excitation, both of which are unknown. Considering a linear convolution model, as opposed to the standard circular convolution model, we derive a sufficient condition for stable deconvolution. The columns of the linear convolution matrix form a Riesz basis with the tightness of the Riesz bounds determined by the autocorrelation of the blur kernel. Employing a Bayesian framework results in a non-convex, non-smooth cost function consisting of an data-fidelity term and a sparsity promoting -norm () regularizer. Since the -norm is not differentiable at the origin, we employ an -regularized -norm as a surrogate. The data term is also non-convex in both the blur kernel and excitation. An iterative scheme termed alternating minimization (Alt. Min.)…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Image and Signal Denoising Methods · Advanced Image Processing Techniques
