This paper presents an original application of fuzzy logic to restoration of images affected by white noise, possibly nonstationary and/or signal dependent. Space-varying linear MMSE estimation is state as a problem of matching pursuits, in which the estimator is obtained as an expansion in series of a finite number of prototype estimators, fitting the spatial features of the different statistical classes encountered, e.g., edges and textures. Such estimators are calculated in a fuzzy fashion through an automatic training procedure. The space-varying coefficients of the expansion are stated as degrees of fuzzy membership of a pixel to each of the estimators. Besides the fact that neither "a priori" knowledge on the noise model is required nor a particular signal model is assumed, a performance comparison high-lights the advantages of the proposed approach. Results on simulated noisy versions of Lenna show a steady SNR improvement of almost 3 dB over Kuan's LLMMSE filtering and over 2 dB over wavelet thresholding, irrespective of noise model and intensity.

Blind image estimation through fuzzy matching pursuits / Aiazzi, B; Baronti, S.; Alparone, L.. - STAMPA. - 1:(2001), pp. 241-244. (Intervento presentato al convegno IEEE International Conference on Image Processing (ICIP) 2001 tenutosi a Thessaloniki, GRC nel 2001).

Blind image estimation through fuzzy matching pursuits

ALPARONE, LUCIANO
2001

Abstract

This paper presents an original application of fuzzy logic to restoration of images affected by white noise, possibly nonstationary and/or signal dependent. Space-varying linear MMSE estimation is state as a problem of matching pursuits, in which the estimator is obtained as an expansion in series of a finite number of prototype estimators, fitting the spatial features of the different statistical classes encountered, e.g., edges and textures. Such estimators are calculated in a fuzzy fashion through an automatic training procedure. The space-varying coefficients of the expansion are stated as degrees of fuzzy membership of a pixel to each of the estimators. Besides the fact that neither "a priori" knowledge on the noise model is required nor a particular signal model is assumed, a performance comparison high-lights the advantages of the proposed approach. Results on simulated noisy versions of Lenna show a steady SNR improvement of almost 3 dB over Kuan's LLMMSE filtering and over 2 dB over wavelet thresholding, irrespective of noise model and intensity.
2001
IEEE International Conference on Image Processing
IEEE International Conference on Image Processing (ICIP) 2001
Thessaloniki, GRC
2001
Aiazzi, B; Baronti, S.; Alparone, L.
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1075144
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