Multi modal medical image fusion using multi level decomposition with EMGW oriented multi fusion architecture
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Abstract
Fusion technology offers more sophisticated details and comprehensive
newlineinformation in the field of medical, surveillances, remote sensing and etc.
newlineMedical Image Fusion plays a vital role in clinical era which integrates the
newlinemulti modal images into a single fused image. These fused images offer more
newlineinformation for diagnosing diseases. Decomposition and Fusion are the two
newlineimportant functions done in every medical fusion technique. Each
newlinedecomposition technique and fusion algorithms are having its own features
newlineand drawbacks. In this proposed work, three level of decomposition and three
newlinefusion techniques are proposed and obtained target image by combining the
newlinefeatures of every decomposing and fusion techniques. The first level
newlinedecomposition is done based on the variety of parameters issues by using
newlineETV (Enhanced Total Variation) concept. For the small and middle level sub
newlinebands, edge details of images are retrieved by using the relationship between
newlinethe sub bands and native edge energy is used to form the fusion weight for the
newlinecase of large level sub bands. The second level decomposition, Guided-Image
newlinefilter is used to decompose the multi modal input images into detailed and
newlinesmoothed images with various scales. Next, salient features are retrieved from
newlinethose decomposed images using SR (Spectral Residual) and GBVS (Graph
newlineBased Visual Saliency). In the third level decomposition, the source images
newlineare decomposed into low rank and sparse modules followed by obtaining the
newlinecoefficient representations using its corresponding dictionaries. After image
newlinepre-processing called image decomposition is done, the multi fusion concept
newlineis proposed. For this multi fusion, EMGW (Enhanced Total Variation model,
newlineNon-Iterative Multi Exposure and Grey Wolf) optimized fusion architecture is
newlineproposed.
newline