Morphology-based visible-infrared image fusion framework for smart city

Guanqiu Qi, Zhiqin Zhu, Yinong Chen, Jinchuan Wang, Qiong Zhang, Fancheng Zeng
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引用次数: 6

Abstract

Sparse representation-based approaches are often applied to image fusion. Owing to the difficulties of obtaining a complete and non-redundant dictionary, this paper proposes a hierarchical image fusion framework that applies layer-by-layer deep learning techniques to explore the detailed information of images and extract key information of images for dictionary learning. According to morphological similarities, this paper clusters source image patches into smooth, stochastic, and dominant orientation patch group. High-frequency and low-frequency components of three clustered image-patch groups are fused by max-L1 and L2-norm based weighted average fusion rule respectively. The fused low-frequency and high-frequency components are combined to obtain the final fusion results. The comparison experimentations confirm the feasibility and effectiveness of the proposed image fusion solution.
基于形态学的智慧城市可见-红外图像融合框架
基于稀疏表示的方法常用于图像融合。针对获取完整且无冗余字典的困难,本文提出了一种分层图像融合框架,该框架采用逐层深度学习技术挖掘图像的详细信息,提取图像的关键信息进行字典学习。根据形态学相似性,将源图像斑块聚类为光滑、随机和优势方向斑块组。分别采用基于max-L1和l2范数的加权平均融合规则对聚类图像斑块组的高频和低频分量进行融合。将融合后的低频和高频分量组合在一起,得到最终的融合结果。对比实验验证了所提图像融合方案的可行性和有效性。
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