4.6 Article

Medical image fusion method based on saliency measurement improvement and local structure similarity correction

Journal

BIOMEDICAL SIGNAL PROCESSING AND CONTROL
Volume 89, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.bspc.2023.105699

Keywords

Image fusion; Nonsubsampled shearlet transform; Multi-level decomposition latent low-rank; representation; Saliency measurement; Pulse coupled neural network

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Medical image fusion is an important tool in medical diagnosis. This paper proposes a medical image fusion method based on saliency measurement improvement and local structural similarity correction. The method decomposes the source images using multi-level decomposition and nonsubsampled shearlet transformation, and then improves the saliency measurement of the base layer fusion rule using the source image mask. Furthermore, a correction method based on structural similarity index measure is used to deal with information distortion. Experimental results show that the proposed method has excellent subjective visual effects and outperforms other state-of-the-art methods in objective indexes.
Medical image fusion is an important tool in medical diagnosis, because the quality of the fused image is closely related to the diagnosis result. However, the approaches of highlighting details through the acquisition of high-contrast lead to information distortion in the fused image and then increase the misdiagnosis rate. In order to solve the problem, a medical image fusion method based on saliency measurement improvement and local structural similarity correction is proposed in this paper. First, multi-level decomposition latent low rank representation (MDLatLRR) combined with nonsubsampled shearlet transformation (NSST) is presented to decompose source images to obtain high SNR base layers and multi-scale detail layers. Then, the saliency measurement improvement with the source image mask filtering is advanced for base layer fusion rule. Specially, after the base layer is refined by the source image mask for the salient area extraction, the salient area is refreshed by its mean gray to calculate the fusion coefficient. Finally, a correction method based on structural similarity index measure (SSIM) is put forward to deal with the information distortion in the initial fused image, in which the correction weight is acquired through the weighted structural similarity between the initial fused image and the source ones. Experiments show that our method has excellent subjective visual effects, and outperforms the other states-of-the-art methods in objective indexes.

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