Novel Wavelet Domain Based Adaptive Thresholding using Bat Algorithm for Image Compression

Authors

  • Chiru K

Keywords:

image compression; thresholding; discrete wavelet transform; bat algorithm; particle swarm optimization; firefly algorithm

Abstract

Image compression is one of the signi cant research areas in the arena of image processing owing to its enormous number of applications and its ability to reduce the storage prerequisite and communication bandwidth Thresholding is a kind of image compression in which computational time increases for multilevel thresholding and hence optimization techniques are applied The quality of reconstructed image is superior when discrete wavelet transform based thresholding is used as compared to when it is not applied Both particle swarm optimization and re y algorithm becomes unstable when the velocity of the particle becomes maximum and when there is no bright re y in the search space respectively To overcome the above mentioned drawbacks bat algorithm based thresholding in frequency domain is proposed Echolocation is the sort of sonar used by micro-bats The way they throng their prey overcoming the hurdles they come across pinpointing nestling gaps have become the main motivation research in arti cial intelligence With the feature of frequency tuning and having the bene t of automatic zooming bat algorithm produces superior PSNR values and quality in reconstructed image and also results in fast convergence rate as compared to state of art of optimization techniques

Downloads

How to Cite

Chiru K. (2024). Novel Wavelet Domain Based Adaptive Thresholding using Bat Algorithm for Image Compression. Global Journal of Computer Science and Technology, 23(F1), 7–15. Retrieved from https://computerresearch.org/index.php/computer/article/view/102361

Novel Wavelet Domain Based Adaptive Thresholding using Bat Algorithm for Image Compression

Published

2024-01-12