Paper

An Efficient Fusion Approach for Multispectral and Panchromatic Medical Imaging


Authors:
Fangnian Lang; Guiqun Cao; Changtao He
Abstract
The fusion of multimodal brain images for a given clinical application is importance. Generally speaking, a PET image indicates brain function and has low spatial resolution, while an MRI image shows brain tissue anatomy and contains no functional information. Hence, a perfect fused image should contain both functional information and spatial characteristics with no spatial and color distortions. The intensity-hue-saturation (IHS) transform and retina-inspired model (RIM) fusion technique can preserve more spatial feature and more spectral information content, respectively. Moreover, principal component analysis (PCA) algorithm can extract main feature to minimize redundancy. The proposed algorithm integrates their advantages to improve fused image quality. The experiment demonstrates that the proposed algorithm outperforms conventional fusion methods such as PCA, Brovey, RIM, discrete wavelet transform (DWT) in light of visual effect and quantitative evaluation.
Keywords
SF; PCA; RIM Model; IHS Transformation; Image Fusion
StartPage
30
EndPage
36
Doi
10.5963/BER0201004
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