To search, Click below search items.

 

All Published Papers Search Service

Title

Image Compression using Windowing Firefly Algorithm by Renyi 2-d Histogram based on Multilevel Thresholding

Author

V. Manohar, G. Laxminarayana, T. Satya Savithri

Citation

Vol. 19  No. 3  pp. 1-10

Abstract

Image compression is a significant process in image transmissions at high data rates over a communication channel. The main objective of the image compression is to extract meaningful clusters from a given image. A meaningful cluster is possible with perfect threshold values, which are optimized by assuming Renyi entropy as an objective function. Due to the equal distribution of energy over the entire 1-D histogram, it is computationally complex. In order to improve the visual quality of a reconstructed image, a 2-D histogram based multilevel thresholding is proposed to maximize the Renyi entropy using Windowing Firefly Algorithm (WFA). Thus procured results are compared with other optimization techniques and these are incorporated. It is the first time, incorporating a Weighted Peak Signal to Noise Ratio (WPSNR) and the Visual PSNR (VPSNR) in the proposed method, because of the failure in measuring the visual quality of Peak Signal to Noise Ratio (PSNR). Experimental results are examined on a standard set of images, which are observed precisely and efficiently in the multilevel thresholding problem.

Keywords

Windowing Firefly Algorithm, Image Compression, 2-D histogram, thresholding, Renyi entropy.

URL

http://paper.ijcsns.org/07_book/201903/20190301.pdf