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Journal ArticleDOI

A robust nonlinear filter for image restoration

Visa Koivunen
- 01 May 1995 - 
- Vol. 4, Iss: 5, pp 569-578
TLDR
A class of nonlinear regression filters based on robust estimation theory is introduced to recover a high-quality image from degraded observations and effectively attenuate both impulsive and nonimpulsive noise while recovering the signal structure and preserving interesting details.
Abstract
A class of nonlinear regression filters based on robust estimation theory is introduced. The goal of the filtering is to recover a high-quality image from degraded observations. Models for desired image structures and contaminating processes are employed, but deviations from strict assumptions are allowed since the assumptions on signal and noise are typically only approximately true. The robustness of filters is usually addressed only in a distributional sense, i.e., the actual error distribution deviates from the nominal one. In this paper, the robustness is considered in a broad sense since the outliers may also be due to inappropriate signal model, or there may be more than one statistical population present in the processing window, causing biased estimates. Two filtering algorithms minimizing a least trimmed squares criterion are provided. The design of the filters is simple since no scale parameters or context-dependent threshold values are required. Experimental results using both real and simulated data are presented. The filters effectively attenuate both impulsive and nonimpulsive noise while recovering the signal structure and preserving interesting details. >

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Citations
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Journal ArticleDOI

A robust approach to image enhancement based on fuzzy logic

TL;DR: A robust approach to image enhancement based on fuzzy logic that addresses the seemingly conflicting goals of image enhancement: removing impulse noise, smoothing out nonimpulse noise, and enhancing (or preserving) edges and certain other salient structures is proposed.
Book ChapterDOI

5 Introduction to positive-breakdown methods

TL;DR: In this article, positive-breakdown regression methods, such as LMS, can be extended to models with several intercepts and to models including dummy regressors, as well as to nonparametric regression, nonlinear regression, alternating regression, and logistic regression.
Journal ArticleDOI

Adaptive ultrasonic speckle reduction based on the slope-facet model

TL;DR: The proposed SSRF algorithm was compared with two filtered-based and one wavelet-based approaches and the experimental results showed that the proposedSSRF outperformed these three previous approaches in both the synthetic images and the clinical US images tested in this study.
Journal ArticleDOI

Nonlinear filtering of multivariate images under robust error criterion

TL;DR: A class of nonlinear filters for multivariate data is introduced and a polynomial signal model is used in applications where the signal amplitude has to be retained with high fidelity.
References
More filters
Journal ArticleDOI

Exploratory data analysis

F. N. David, +1 more
- 01 Dec 1977 - 
Journal ArticleDOI

Exploratory Data Analysis.

Book

Robust statistics: the approach based on influence functions

TL;DR: This paper presents a meta-modelling framework for estimating the values of Covariance Matrices and Multivariate Location using one-Dimensional and Multidimensional Estimators.
Journal ArticleDOI

Least Median of Squares Regression

TL;DR: In this paper, the median of the squared residuals is used to resist the effect of nearly 50% of contamination in the data in the special case of simple least square regression, which corresponds to finding the narrowest strip covering half of the observations.
Book

Digital Filters

TL;DR: In this chapter,sequency as a generalized frequency is introduced, and the frequency is used as a parameter to distinguish individual functions that belong to sets of nonsinusoidal functions.
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