An Efficient Random Valued Impulse Noise Suppression Technique Using Artificial Neural Network and Non-Local Mean Filter

Author:

Jena Bibekananda1,Patel Punyaban2,Sinha G.R.3

Affiliation:

1. Anil Neerukonda Institute of Technology & Sciences, Visakhapatnam, India

2. Malla Reddy Institute of Technology, Secunderabad, India

3. CMR Technical Campus, Secunderabad, India

Abstract

A new technique for suppression of Random valued impulse noise from the contaminated digital image using Back Propagation Neural Network is proposed in this paper. The algorithms consist of two stages i.e. Detection of Impulse noise and Filtering of identified noisy pixels. To classify between noisy and non-noisy element present in the image a feed-forward neural network has been trained with well-known back propagation algorithm in the first stage. To make the detection method more accurate, Emphasis has been given on selection of proper input and generation of training patterns. The corrupted pixels are undergoing non-local mean filtering employed in the second stage. The effectiveness of the proposed technique is evaluated using well known standard digital images at different level of impulse noise. Experiments show that the method proposed here has excellent impulse noise suppression capability.

Publisher

IGI Global

Reference35 articles.

1. A new efficient approach for the removal of impulse noise from highly corrupted images

2. Akkoul, S., Ledee, R., Leconge, R., & Harba, R. (2009). A new detector for switching median filter. In Proceedings of the 6th International Symposium on Image and Signal Processing and Analysis.

3. Chanda, B., & Majumder, D. Dutta. (2002). Digital Image Processing and Analysis (1st ed.). Prentice-Hall of India.

4. Particle swarm optimization trained neural network for structural failure prediction of multistoried RC buildings.;S.Chatterjee;Neural Computing & Applications,2016

5. Chen, T., & Wu, H.R. (2001). Adaptive impulse detection using center-weighted median filters. IEEE Signal Processing Letters, 8(1).

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