Fast and guaranteed blind multichannel deconvolution under a bilinear system model
Kiryung Lee, Ning Tian, Justin Romberg

TL;DR
This paper introduces a fast, guaranteed method for multichannel blind deconvolution under a bilinear model, providing performance guarantees and effective algorithms with theoretical and empirical validation.
Contribution
It proposes a novel bilinear subspace model for blind deconvolution and analyzes two non-convex optimization algorithms with performance guarantees.
Findings
Algorithms achieve accurate channel estimates with high probability.
Performance depends on the number of samples per channel.
Empirical results match theoretical predictions.
Abstract
We consider the multichannel blind deconvolution problem where we observe the output of multiple channels that are all excited with the same unknown input. From these observations, we wish to estimate the impulse responses of each of the channels. We show that this problem is well-posed if the channels follow a bilinear model where the ensemble of channel responses is modeled as lying in a low-dimensional subspace but with each channel modulated by an independent gain. Under this model, we show how the channel estimates can be found by minimizing a quadratic functional over a non-convex set. We analyze two methods for solving this non-convex program, and provide performance guarantees for each. The first is a method of alternating eigenvectors that breaks the program down into a series of eigenvalue problems. The second is a truncated power iteration, which can roughly be interpreted…
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