MID Filter: An Orientation-Based Nonlinear Filter For Reducing Multiplicative Noise
In this study, an edge-preserving nonlinear filter is proposed to reduce multiplicative noise by using a filter structure based on mathematical morphology. This method is called the minimum index of dispersion (MID) filter. MID is an improved and extended version of MCV (minimum coefficient of varia...
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doaj-50175bdd95604566b67c03bf9209c7632020-11-25T01:31:31ZengMDPI AGElectronics2079-92922019-08-018993610.3390/electronics8090936electronics8090936MID Filter: An Orientation-Based Nonlinear Filter For Reducing Multiplicative NoiseIbrahim Furkan Ince0Omer Faruk Ince1Faruk Bulut2Department of Electronics Engineering, Kyungsung University, Busan 48434, KoreaCenter for Intelligent & Interactive Robotics, Korea Institute of Science and Technology, Seoul 02792, KoreaDepartment of Computer Engineering, Istanbul Rumeli University, Istanbul 34570, TurkeyIn this study, an edge-preserving nonlinear filter is proposed to reduce multiplicative noise by using a filter structure based on mathematical morphology. This method is called the minimum index of dispersion (MID) filter. MID is an improved and extended version of MCV (minimum coefficient of variation) and MLV (mean least variance) filters. Different from these filters, this paper proposes an extra-layer for the value-and-criterion function in which orientation information is employed in addition to the intensity information. Furthermore, the selection function is re-modeled by performing low-pass filtering (mean filtering) to reduce multiplicative noise. MID outputs are benchmarked with the outputs of MCV and MLV filters in terms of structural similarity index (SSIM), peak signal-to-noise ratio (PSNR), mean squared error (MSE), standard deviation, and contrast value metrics. Additionally, <i>F</i> Score, which is a hybrid metric that is the combination of all five of those metrics, is presented in order to evaluate all the filters. Experimental results and extensive benchmarking studies show that the proposed method achieves promising results better than conventional MCV and MLV filters in terms of robustness in both edge preservation and noise removal. Noise filter methods normally cannot give better results in noise removal and edge-preserving at the same time. However, this study proves a great contribution that MID filter produces better results in both noise cleaning and edge preservation.https://www.mdpi.com/2079-9292/8/9/936non-linear filtersMCV and MLV filtersde-noisingnoise removaledge preserving |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ibrahim Furkan Ince Omer Faruk Ince Faruk Bulut |
spellingShingle |
Ibrahim Furkan Ince Omer Faruk Ince Faruk Bulut MID Filter: An Orientation-Based Nonlinear Filter For Reducing Multiplicative Noise Electronics non-linear filters MCV and MLV filters de-noising noise removal edge preserving |
author_facet |
Ibrahim Furkan Ince Omer Faruk Ince Faruk Bulut |
author_sort |
Ibrahim Furkan Ince |
title |
MID Filter: An Orientation-Based Nonlinear Filter For Reducing Multiplicative Noise |
title_short |
MID Filter: An Orientation-Based Nonlinear Filter For Reducing Multiplicative Noise |
title_full |
MID Filter: An Orientation-Based Nonlinear Filter For Reducing Multiplicative Noise |
title_fullStr |
MID Filter: An Orientation-Based Nonlinear Filter For Reducing Multiplicative Noise |
title_full_unstemmed |
MID Filter: An Orientation-Based Nonlinear Filter For Reducing Multiplicative Noise |
title_sort |
mid filter: an orientation-based nonlinear filter for reducing multiplicative noise |
publisher |
MDPI AG |
series |
Electronics |
issn |
2079-9292 |
publishDate |
2019-08-01 |
description |
In this study, an edge-preserving nonlinear filter is proposed to reduce multiplicative noise by using a filter structure based on mathematical morphology. This method is called the minimum index of dispersion (MID) filter. MID is an improved and extended version of MCV (minimum coefficient of variation) and MLV (mean least variance) filters. Different from these filters, this paper proposes an extra-layer for the value-and-criterion function in which orientation information is employed in addition to the intensity information. Furthermore, the selection function is re-modeled by performing low-pass filtering (mean filtering) to reduce multiplicative noise. MID outputs are benchmarked with the outputs of MCV and MLV filters in terms of structural similarity index (SSIM), peak signal-to-noise ratio (PSNR), mean squared error (MSE), standard deviation, and contrast value metrics. Additionally, <i>F</i> Score, which is a hybrid metric that is the combination of all five of those metrics, is presented in order to evaluate all the filters. Experimental results and extensive benchmarking studies show that the proposed method achieves promising results better than conventional MCV and MLV filters in terms of robustness in both edge preservation and noise removal. Noise filter methods normally cannot give better results in noise removal and edge-preserving at the same time. However, this study proves a great contribution that MID filter produces better results in both noise cleaning and edge preservation. |
topic |
non-linear filters MCV and MLV filters de-noising noise removal edge preserving |
url |
https://www.mdpi.com/2079-9292/8/9/936 |
work_keys_str_mv |
AT ibrahimfurkanince midfilteranorientationbasednonlinearfilterforreducingmultiplicativenoise AT omerfarukince midfilteranorientationbasednonlinearfilterforreducingmultiplicativenoise AT farukbulut midfilteranorientationbasednonlinearfilterforreducingmultiplicativenoise |
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