Robust Non-linear Regression: A Greedy Approach Employing Kernels with Application to Image Denoising

01/04/2016
by   George Papageorgiou, et al.
0

We consider the task of robust non-linear regression in the presence of both inlier noise and outliers. Assuming that the unknown non-linear function belongs to a Reproducing Kernel Hilbert Space (RKHS), our goal is to estimate the set of the associated unknown parameters. Due to the presence of outliers, common techniques such as the Kernel Ridge Regression (KRR) or the Support Vector Regression (SVR) turn out to be inadequate. Instead, we employ sparse modeling arguments to explicitly model and estimate the outliers, adopting a greedy approach. The proposed robust scheme, i.e., Kernel Greedy Algorithm for Robust Denoising (KGARD), is inspired by the classical Orthogonal Matching Pursuit (OMP) algorithm. Specifically, the proposed method alternates between a KRR task and an OMP-like selection step. Theoretical results concerning the identification of the outliers are provided. Moreover, KGARD is compared against other cutting edge methods, where its performance is evaluated via a set of experiments with various types of noise. Finally, the proposed robust estimation framework is applied to the task of image denoising, and its enhanced performance in the presence of outliers is demonstrated.

READ FULL TEXT
research
11/27/2010

Edge Preserving Image Denoising in Reproducing Kernel Hilbert Spaces

The goal of this paper is the development of a novel approach for the pr...
research
09/19/2018

Noise Statistics Oblivious GARD For Robust Regression With Sparse Outliers

Linear regression models contaminated by Gaussian noise (inlier) and pos...
research
03/15/2017

Tuning Free Orthogonal Matching Pursuit

Orthogonal matching pursuit (OMP) is a widely used compressive sensing (...
research
04/24/2017

Denoising Linear Models with Permuted Data

The multivariate linear regression model with shuffled data and additive...
research
07/11/2012

On-line Prediction with Kernels and the Complexity Approximation Principle

The paper describes an application of Aggregating Algorithm to the probl...
research
11/25/2018

Recovery guarantees for polynomial approximation from dependent data with outliers

Learning non-linear systems from noisy, limited, and/or dependent data i...
research
10/11/2019

Robust Hierarchical-Optimization RLS Against Sparse Outliers

This paper fortifies the recently introduced hierarchical-optimization r...

Please sign up or login with your details

Forgot password? Click here to reset