Abstract

Medical image fusion is an important technique to address the limited depth of the optical lens for a completely informative focused image. It can well improve the accuracy of diagnosis and assessment of medical problems. However, the difficulty of many traditional fusion methods in preserving all the significant features of the source images compromises the clinical accuracy of medical problems. Thus, we propose a novel medical image fusion method with a low-level feature to deal with the problem. We decompose the source images into base layers and detail layers with local binary pattern operators for obtaining low-level features. The low-level features of the base and detail layers are applied to construct weight maps by using saliency detection. The weight map optimized by fast guided filtering guides the fusion of base and detail layers to maintain the spatial consistency between the source images and their corresponding layers. The recombination of the fused base and detail layers constructs the final fused image. The experimental results demonstrated that the proposed method achieved a state-of-the-art performance for multifocus images.

Highlights

  • The depth-of-field limitations may potentially limit the complete and accurate understanding of the medical problem of the human body, organs, and cells and even the performance of medical diagnostics and analysis [1,2,3]

  • Some commonly used testing image sets are used to assess the performance of the proposed method

  • This study presented a novel medical image fusion method based on the low-level feature

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Summary

Introduction

The depth-of-field limitations may potentially limit the complete and accurate understanding of the medical problem of the human body, organs, and cells and even the performance of medical diagnostics and analysis [1,2,3]. Medical image fusion has become a relevant research field due to its efficiency and wide applications in medical analysis. The growing appeal of high-performance medical diagnostic devices prompts the development of low-cost computing and imaging techniques. There are many medical image fusion methods proposed to address the problems mentioned above. These methods include two categories: spatial domain methods and transform domain methods [5]

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