A Unit Plane Edge on-off Slope Algorithm Based Fast LTVR Res-toration Analysis

Authors

  • K. Praveen Kumar

  • C. Venkata Narasimhulu

  • K. Satya Prasad

How to Cite

Praveen Kumar, K., Venkata Narasimhulu, C., & Satya Prasad, K. (2018). A Unit Plane Edge on-off Slope Algorithm Based Fast LTVR Res-toration Analysis. International Journal of Engineering and Technology, 7(4.20), 27-30. https://doi.org/10.14419/ijet.v7i4.20.22116

Received date: November 28, 2018

Accepted date: November 28, 2018

Published date: November 28, 2018

DOI:

https://doi.org/10.14419/ijet.v7i4.20.22116

Keywords:

Image denoising, filter, ON-OFF, edge, restoration

Abstract

This research paper presents a Fast LTVR (Localized Total Variation Regularized) method for restoring the degraded images by white noise, while preserving the image edge details in a constructed unit plane edge model through a Unit Plane Edge ON-OFF Slope algorithm. The noisy image contains two details; one with high noise and the other with edge fined details. The edge fine details are restored using ON-OFF Slope algorithm. The denoised image and the edge fine details are used to reconstruct the final restored image. A Unit Plane Edge restoration method is proposed in this research work to estimate the edge-mapping with the fine details. Simulation results of proposed work shows an effective image restoration algorithm comparatively with different filter based restoration methods.  

 

 

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How to Cite

Praveen Kumar, K., Venkata Narasimhulu, C., & Satya Prasad, K. (2018). A Unit Plane Edge on-off Slope Algorithm Based Fast LTVR Res-toration Analysis. International Journal of Engineering and Technology, 7(4.20), 27-30. https://doi.org/10.14419/ijet.v7i4.20.22116

Received date: November 28, 2018

Accepted date: November 28, 2018

Published date: November 28, 2018