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A Geometric Dictionary Learning Based Approach for Fluorescence Spectroscopy Image Fusion

机译:基于几何字典学习的荧光光谱图像融合方法

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In recent years, sparse representation approaches have been integrated into multi-focus image fusion methods. The fused images of sparse-representation-based image fusion methods show great performance. Constructing an informative dictionary is a key step for sparsity-based image fusion method. In order to ensure sufficient number of useful bases for sparse representation in the process of informative dictionary construction, image patches from all source images are classified into different groups based on geometric similarities. The key information of each image-patch group is extracted by principle component analysis (PCA) to build dictionary. According to the constructed dictionary, image patches are converted to sparse coefficients by simultaneous orthogonal matching pursuit (SOMP) algorithm for representing the source multi-focus images. At last the sparse coefficients are fused by Max-L1 fusion rule and inverted to fused image. Due to the limitation of microscope, the fluorescence image cannot be fully focused. The proposed multi-focus image fusion solution is applied to fluorescence imaging area for generating all-in-focus images. The comparison experimentation results confirm the feasibility and effectiveness of the proposed multi-focus image fusion solution.
机译:近年来,稀疏表示方法已集成到多焦点图像融合方法中。基于稀疏表示的图像融合方法的融合图像表现出很好的性能。构建信息字典是基于稀疏性的图像融合方法的关键步骤。为了确保在信息字典构建过程中有足够数量的稀疏表示有用库,来自所有源图像的图像块均基于几何相似性被分为不同的组。通过主成分分析(PCA)提取每个图像补丁组的关键信息,以建立字典。根据构造的字典,通过同时正交匹配追踪(SOMP)算法将图像块转换为稀疏系数,以表示源多焦点图像。最后,将稀疏系数通过Max-L1融合规则融合,然后反转为融合图像。由于显微镜的限制,荧光图像无法完全聚焦。提出的多焦点图像融合解决方案应用于荧光成像领域,以产生全焦点图像。对比实验结果证实了所提出的多焦点图像融合解决方案的可行性和有效性。

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