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Analysis-synthesis dictionary pair learning and patch saliency measure for image fusion

机译:图像融合分析综合字典对学习和补丁显着性度量

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In image fusion, Sparse Representation (SR)-based method has received extensive attention because of its excellent performance. In such method, the quality of over-complete dictionary and the fusion rules of SR coefficients are the most important factors that affect the final fusion quality. However, the traditional dictionary learning methods are usually designed based on Synthesis Sparse Representation (SSR), and this strategy ignores the complementary between SSR and Analysis Sparse Representation (ASR). To construct two dictionaries with powerful representation capability and discriminative capability, we integrate the complementary representation mechanisms of analysis and synthesis SR into our dictionary learning and image decomposition. Then we develop a novel dictionary learning and image decomposition algorithm for image fusion. Moreover, the traditional SR-based fusion method often adopts the simple principle of maximum absolute value in the fusion of SR coefficients, which leads to a fused result with poor visual quality. To this end, we propose to fuse the coding coefficients of the major structure and edge detail components according to the saliency measure of the corresponding patches. Experimental results show that the proposed method can better preserve the image information and improve the image contrast. (C) 2019 Elsevier B.V. All rights reserved.
机译:在图像融合中,基于稀疏表示(SR)的方法因其出色的性能而受到广泛关注。在这种方法中,过完备字典的质量和SR系数的融合规则是影响最终融合质量的最重要因素。但是,传统的字典学习方法通​​常是基于综合稀疏表示(SSR)设计的,该策略忽略了SSR与分析稀疏表示(ASR)之间的互补。为了构建具有强大表示能力和区分能力的两个字典,我们将分析和合成SR的互补表示机制集成到了字典学习和图像分解中。然后我们开发了一种新颖的字典学习和图像分解算法进行图像融合。此外,传统的基于SR的融合方法在SR系数的融合中通常采用最大绝对值的简单原理,导致融合效果不佳。为此,我们建议根据相应补丁的显着性度量融合主要结构和边缘细节分量的编码系数。实验结果表明,该方法可以更好地保存图像信息,提高图像对比度。 (C)2019 Elsevier B.V.保留所有权利。

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