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An Effective Approach for Suppressing High Density Noise in Image by Robust Estimator


Affiliations
1 Department of Electronics & Communication Engineering, NIT, Rourkela, India
2 VESIT, Mumbai, India
3 SIT, Lonavala, India
     

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In this paper a novel method for effectively denoising the extremely corrupted image by fixed value impulse noise using robust estimation based filter is proposed. The proposed algorithm classifies the pixels of localized window in to "corrupted" or "uncorrupted" and removes only corrupted pixels by robust estimation or by left modified neighbor. It is shown that the proposed filter effectively removes the impulse noise while preserving the good image quality. The visual and quantitative results proves that the performance of proposed filter in the preservation of edges and details is better even at noise level as high as 95%.

Keywords

Robust Estimation, High Density Impulse Noise, Nonlinear Filter.
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  • An Effective Approach for Suppressing High Density Noise in Image by Robust Estimator

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Authors

R. K. Kulkarni
Department of Electronics & Communication Engineering, NIT, Rourkela, India
S. Meher
Department of Electronics & Communication Engineering, NIT, Rourkela, India
J. M. Nair
VESIT, Mumbai, India
D. K. Singh
SIT, Lonavala, India

Abstract


In this paper a novel method for effectively denoising the extremely corrupted image by fixed value impulse noise using robust estimation based filter is proposed. The proposed algorithm classifies the pixels of localized window in to "corrupted" or "uncorrupted" and removes only corrupted pixels by robust estimation or by left modified neighbor. It is shown that the proposed filter effectively removes the impulse noise while preserving the good image quality. The visual and quantitative results proves that the performance of proposed filter in the preservation of edges and details is better even at noise level as high as 95%.

Keywords


Robust Estimation, High Density Impulse Noise, Nonlinear Filter.