178

Adaptive Denoising of Signals with Shift-Invariant Structure

Abstract

We study the problem of discrete-time signal denoising, following the line of research initiated by [Nem91] and further developed in [JN09, JN10, HJNO15, OHJN16]. Previous papers considered the following setup: the signal is assumed to admit a convolution-type linear oracle -- an unknown linear estimator in the form of the convolution of the observations with an unknown time-invariant filter with small 2\ell_2-norm. It was shown that such an oracle can be "mimicked" by an efficiently computable non-linear convolution-type estimator, in which the filter minimizes the Fourier-domain \ell_\infty-norm of the residual, regularized by the Fourier-domain 1\ell_1-norm of the filter. Following [OHJN16], here we study an alternative family of estimators, replacing the \ell_\infty-norm of the residual with the 2\ell_2-norm. Such estimators are found to have better statistical properties, in particular, we prove sharp oracle inequalities for their 2\ell_2-loss. Our guarantees require an extra assumption of approximate shift-invariance: the signal must be ϰ\varkappa-close, in 2\ell_2-metric, to some shift-invariant linear subspace with bounded dimension ss. However, this subspace can be completely unknown, and the remainder terms in the oracle inequalities scale at most polynomially with ss and ϰ\varkappa. In conclusion, we show that the new assumption implies the previously considered one, providing explicit constructions of the convolution-type linear oracles with 2\ell_2-norm bounded in terms of parameters ss and ϰ\varkappa.

View on arXiv
Comments on this paper