Efficient DWT-based fusion techniques using genetic algorithm for optimal parameter estimation
S. Kavitha, K. K. Thyagharajan

TL;DR
This paper introduces an improved image fusion method combining DWT/UDWT with a modified genetic algorithm for optimal parameter estimation, enhancing image quality and contrast in multi-modality brain images.
Contribution
It presents a scalable, efficient fusion system using a modified GA at feature level, reducing complexity and identifying key source images.
Findings
Enhanced image contrast and information retention
Reduced computational complexity in parameter estimation
Effective fusion across various image sizes
Abstract
Image fusion plays a vital role in medical imaging. Image fusion aims to integrate complementary as well as redundant information from multiple modalities into a single fused image without distortion or loss of information. In this research work, discrete wavelet transform (DWT)and undecimated discrete wavelet transform (UDWT)-based fusion techniques using genetic algorithm (GA)foroptimalparameter(weight)estimationinthefusionprocessareimplemented and analyzed with multi-modality brain images. The lack of shift variance while performing image fusion using DWT is addressed using UDWT. The proposed fusion model uses an efficient, modified GA in DWT and UDWT for optimal parameter estimation, to improve the image quality and contrast. The complexity of the basic GA (pixel level) has been reduced in the modified GA (feature level), by limiting the search space. It is observed from our…
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Taxonomy
MethodsGenetic Algorithms
