Abstract
AbstractMultimodal medical image is an effective method to solve a series of clinical problems, such as clinical diagnosis and postoperative treatment. In this study, a medical image fusion method based on convolutional sparse representation (CSR) and mutual information correlation is proposed. In this method, the source image is decomposed into one high-frequency and one low-frequency sub-band by non-subsampled shearlet transform. For the high-frequency sub-band, CSR is used for high-frequency coefficient fusion. For the low-frequency sub-band, different fusion strategies are used for different regions by mutual information correlation analysis. Analysis of two kinds of medical image fusion problems, namely, CT–MRI and MRI–SPECT, reveals that the performance of this method is robust in terms of five common objective metrics. Compared with the other six advanced medical image fusion methods, the experimental results show that the proposed method achieves better results in subjective vision and objective evaluation metrics.
Funder
Natural Science Foundation of Hunan Province
Scientific Research Foundation of Hunan Provincial Education Department
Publisher
Springer Science and Business Media LLC
Subject
Computational Mathematics,Engineering (miscellaneous),Information Systems,Artificial Intelligence
Reference43 articles.
1. Ganasala P, Kumar V (2016) Feature-motivated simplified adaptive PCNN-based medical image fusion algorithm in NSST domain. J Digit Imaging 29:73–85
2. Qi G, Wang J, Zhang Q, Zeng F, Zhu Z (2017) An integrated dictionary learning entropy-based medical image fusion framework. FutureInternet 9(4):61
3. Petrovic V, Xydeas C (2004) Gradient-based multiresolution image fusion. IEEE Trans Image Process 13:228–237
4. Sundar K, Jahnavi M, Lakshmisaritha K (2017) Multi-sensor image fusion based on empirical wavelet transform. In: 2017 international conference on electrical, electronics, communication, computer, and optimization techniques (ICEECCOT). IEEE, pp 93–97
5. Liu Y, Liu S, Wang Z (2015) Multi-focus image fusion with dense SIFT. Inf Fusion 23:139–155
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