Abstract

The aim of medical image fusion technology is to synthesize multiple-image information to assist doctors in making scientific decisions. Existing studies have focused on preserving image details while avoiding halo artifacts and color distortions. This paper proposes a novel medical image fusion algorithm based on this research objective. First, the input image is decomposed into structure, texture, and local mean brightness layers using a hybrid three-layer decomposition model that can fully extract the features of the original images without the introduction of artifacts. Secondly, the nuclear norm of the patches, which are obtained using a sliding window, are calculated to construct the weight maps of the structure and texture layers. The weight map of the local mean brightness layer is constructed by calculating the local energy. Finally, remapping functions are applied to enhance each fusion layer, which reconstructs the final fusion image with the inverse operation of decomposition. Subjective and objective experiments confirm that the proposed algorithm has a distinct advantage compared with other state-of-the-art algorithms.

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