학술논문

Sparse Stable Outlier-Robust Signal Recovery Under Gaussian Noise
Document Type
Periodical
Source
IEEE Transactions on Signal Processing IEEE Trans. Signal Process. Signal Processing, IEEE Transactions on. 71:372-387 2023
Subject
Signal Processing and Analysis
Communication, Networking and Broadcast Technologies
Computing and Processing
Robustness
Noise measurement
Gaussian noise
Cost function
Noise reduction
Indexes
Estimation
Sparse modeling
outlier-robust signal recovery
minimax concave function
convex optimization
sparse outlier-robust signal recovery
Language
ISSN
1053-587X
1941-0476
Abstract
This paper presents a novel framework for sparse robust signal recovery integrating the sparse recovery using the minimax concave (MC) penalty and robust regression called sparse outlier-robust regression (SORR) using the MC loss. While the proposed approach is highly robust against huge outliers, the sparseness of estimates can be controlled by taking into consideration a tradeoff between sparseness and robustness. To accommodate the prior information about additive Gaussian noise and outliers, an auxiliary vector to model the noise is introduced. The remarkable robustness and stability come from the use of the MC loss and the squared $\ell _{2}$ penalty of the noise vector, respectively. In addition, the simultaneous use of the MC and squared $\ell _{2}$ penalties of the coefficient vector leads to a certain remarkable grouping effect. The necessary and sufficient conditions for convexity of the smooth part of the cost are derived under a certain nonempty-interior assumption via the product space formulation using the linearly-involved Moreau-enhanced-over-subspace (LiMES) framework. The efficacy of the proposed method is demonstrated by simulations in its application to speech denoising under highly noisy environments as well as to toy problems.