Abstract

Multimodal Medical fusion imaging is a significant aspect of image-guided medical diagnosis. A new improved non-sub sampled shearlet transform (NSST) based Multimodal Medical Fusion imaging System based on Gray Wolf Optimization (GWO) and Image Enhancement with NLM Algorithmic computer guided medical procedures. This paper proposes an efficient medical fusion imaging system that is evolved from the concept of Non-Sub sampled Shearlet Transform and the Gray Wolf Optimization algorithm. The initial procedure in this system includes histogram matching among one image and the other to facilitate common dynamic range for both images. Decomposition of multimodal medical images is done by NSST to be fused into their coefficients. Optimum decomposition level is scaled by EGOA with optimal gain parameters. Furthermore, denoising with enhancement procedure is performed to enhance its visual quality. If the images are corrupted by noise, the these traditional fusion methods performance is greatly hampered. Therefore, this is essential to create a fusion approach that can maintain accurate information even while distorting the images.

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