STMLSep 10, 2020

Error analysis for denoising smooth modulo signals on a graph

arXiv:2009.04859v23 citations
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This work provides refined theoretical guarantees for denoising modulo signals, which is important for applications like phase unwrapping, but it is incremental as it builds on prior methods without introducing new paradigms.

The paper tackles the problem of denoising modulo signals on graphs by analyzing two estimators, a trust region subproblem and an unconstrained relaxation, and derives noise regimes where they provably denoise observations with respect to the ℓ₂ norm under Gaussian noise.

In many applications, we are given access to noisy modulo samples of a smooth function with the goal being to robustly unwrap the samples, i.e., to estimate the original samples of the function. In a recent work, Cucuringu and Tyagi proposed denoising the modulo samples by first representing them on the unit complex circle and then solving a smoothness regularized least squares problem -- the smoothness measured w.r.t the Laplacian of a suitable proximity graph $G$ -- on the product manifold of unit circles. This problem is a quadratically constrained quadratic program (QCQP) which is nonconvex, hence they proposed solving its sphere-relaxation leading to a trust region subproblem (TRS). In terms of theoretical guarantees, $\ell_2$ error bounds were derived for (TRS). These bounds are however weak in general and do not really demonstrate the denoising performed by (TRS). In this work, we analyse the (TRS) as well as an unconstrained relaxation of (QCQP). For both these estimators we provide a refined analysis in the setting of Gaussian noise and derive noise regimes where they provably denoise the modulo observations w.r.t the $\ell_2$ norm. The analysis is performed in a general setting where $G$ is any connected graph.

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