Image Restoration in Non-Linear Filtering Domain using MDB approach
- URL: http://arxiv.org/abs/2204.09296v1
- Date: Wed, 20 Apr 2022 08:23:52 GMT
- Title: Image Restoration in Non-Linear Filtering Domain using MDB approach
- Authors: S. K. Satpathy, S. Panda, K. K. Nagwanshi, and C. Ardil
- Abstract summary: The aim of image enhancement is to reconstruct the true image from the corrupted image.
Image degradation can be due to the addition of different types of noise in the original image.
Impulse noise generates pixels with gray value not consistent with their local neighbourhood.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper proposes a new technique based on a non-linear Minmax Detector
Based (MDB) filter for image restoration. The aim of image enhancement is to
reconstruct the true image from the corrupted image. The process of image
acquisition frequently leads to degradation and the quality of the digitized
image becomes inferior to the original image. Image degradation can be due to
the addition of different types of noise in the original image. Image noise can
be modelled of many types and impulse noise is one of them. Impulse noise
generates pixels with gray value not consistent with their local neighbourhood.
It appears as a sprinkle of both light and dark or only light spots in the
image. Filtering is a technique for enhancing the image. Linear filter is the
filtering in which the value of an output pixel is a linear combination of
neighborhood values, which can produce blur in the image. Thus a variety of
smoothing techniques have been developed that are non linear. Median filter is
the one of the most popular non-linear filter. When considering a small
neighborhood it is highly efficient but for large window and in case of high
noise it gives rise to more blurring to image. The Centre Weighted Mean (CWM)
filter has got a better average performance over the median filter. However the
original pixel corrupted and noise reduction is substantial under high noise
condition. Hence this technique has also blurring affect on the image. To
illustrate the superiority of the proposed approach, the proposed new scheme
has been simulated along with the standard ones and various restored
performance measures have been compared.
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