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Image fusion based on guided filter and online robust dictionary learning

机译:图像融合基于引导滤波器和在线鲁棒字典学习

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摘要

It has been confirmed that sparse representation (SR) is successfully applied in many fields, including multimodal image fusion. A novel SR-based image fusion framework is proposed in this paper, which exhibits state-ofthe-art performance in not only fusion effects but also computationally efficient. For SR-based image fusion methods, the critical factor is the over-complete dictionary, which makes the input image sparse. A jointly clustered patch online dictionary learning (JCPORDL) method is proposed to construct a lightweight but practical dictionary and also has an advantage in processing large-scale and dynamic data. The clustering of the joint patches helps reduce the amount of training data for the proposed online robust dictionary learning (ORDL) algorithm. Besides, considering the edge-preserving, the guided filter is embedded in the proposed framework. It has right near edge behaviors and will not add much computing burden. In order to verify how the proposed framework superiority, several conventional image fusion methods were used as a comparison. The experiment results indicate that the proposed framework has better effects and more timesaving than SR-based methods with other dictionary learning strategies. Besides, it also has superior performance than mainstream Multi-Scale Transform (MST) based algorithms and Multi-Scale Transform-Sparse Representation (MST-SR) combined algorithms.
机译:已经证实,稀疏表示(SR)成功应用于许多字段,包括多模式图像融合。本文提出了一种新型的基于SR的图像融合框架,其在融合效应中表现出最先进的性能,而且还具有计算效率。对于基于SR的图像融合方法,关键因素是完整的字典,其使输入图像稀疏。提出了一个共同聚类的补丁在线词典学习(JCPORDL)方法来构建轻量级但实际的字典,并且在处理大规模和动态数据方面也具有优势。联合补丁的聚类有助于减少所提出的在线稳健性字典学习(ORDL)算法的培训数据量。此外,考虑到边缘保留,引导滤波器嵌入所提出的框架中。它在边缘行为附近,不会增加多少计算负担。为了验证所提出的框架优势,几种传统图像融合方法用作比较。实验结果表明,所提出的框架具有更好的效果和比基于SR的方法更好的效果和更频繁的方法。此外,它还具有比主流多尺度变换(MST)的算法和多尺度变换稀疏表示(MST-SR)组合算法的优越性。

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