Available online at www.sciencedirect.com
IERI Procedia 00 (2012) 000–000
2012 International Conference on Mechatronic Systems and Materials
Neural Network with Median Filter for Image Noise Reduction
Abdolreza Dehghani Tafti
a,*
, Ehsan Mirsadeghi
b
a,b
Islamic Azad University, Karaj Branch, Karaj, Iran
Abstract
According to recent advances in Digital devices, the problem of image noise reduction becomes more significant than ago.
Median filter (MF), as an efficient solution for this problem, has been widely applied in practice. In this paper, to improve
the quality of filtered image, using a Neural Network (NN) is proposed. A NN, which is trained in a real time manner, can
be estimated the noise density of moving window/mask in MF and changes its size adaptively. By using the NN as a
supervisor for MF, better performance can be achieved. Simulation results are obtained to show the ability of the proposed
combination in image noise reduction.
© 2012 The Authors. Published by Elsevier B.V.
Selection and peer review under responsibility of Information Engineering Research Institute
Keywrds: Image processing, noise reduction, Median filter, neural network.
1. Introduction
One of the major research fields in image processing is noise reduction [1]. The acquisition or transmission
of digital images through sensors or communication channels is often interfered by impulse noise. Impulse
noise randomly and sparsely corrupts pixels to two intensity levels, high or low, when compared with its
neighboring pixels. Typically, salt-and-pepper noise, which is a special case of impulse noise, is considered in
this situation [2-5]. In many applications such as military, medical and media, noise reduction plays a
significant role. So, many filters/techniques have been proposed by different authors for image noise
reduction. In addition, noise reduction in image processing not only is used to improve image
* Corresponding author. Tel.:+98-937-780-7177.
E-mail address: dehghani@kiau.ac.ir.