Sonar Image Fusion based on SR-NNKSVD Denoiseing and Interpolation Methods

International Journal of Computer Trends and Technology (IJCTT)          
© 2016 by IJCTT Journal
Volume-37 Number-2
Year of Publication : 2016
Authors : Capt. Dr. S SanthoshBaboo, H.Sivagami


Capt. Dr. S SanthoshBaboo, H.Sivagami "Sonar Image Fusion based on SR-NNKSVD Denoiseing and Interpolation Methods". International Journal of Computer Trends and Technology (IJCTT) V37(2):60-66, July 2016. ISSN:2231-2803. Published by Seventh Sense Research Group.

Abstract -
Interpolation of pix as a rule utilized in picture processes and fusion techniques which includes more than a few processing duties corresponding to compression, restoration, denoising, enhancement. Reconstruction fine of any image interpolation algorithm is determined by its capability to adapt altering pixel constitution across picture. On this paper, proposed a denoising algorithm (DCT, DT_CWT, and KSVD) and interpolation strategies similar to SR-NN_KSVD, NARM and comparisons of these approaches utilizing fusion of sonar photograph. Via this methods have many artifacts in low decision picture similar to blurring, ringing may also be eliminated. The experimental outcome exhibit that the proposed algorithm of SR_NN_KSVD is quite simply reduce the noise and bigger than that of lots of the existing algorithm such as DCT, DT_DWT, KSVD, NARM.

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