Fusion of Hyperspectral and Multispectral Images Based on a Centralized Non-local Sparsity Model of Abundance Maps

Tecnura Pub Date : 2020-10-01 DOI:10.14483/22487638.16904
Edwin Vargas, Kevin Arias, Fernando Rojas, H. Arguello
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引用次数: 0

Abstract

Objective: Hyperspectral (HS) imaging systems are commonly used in a diverse range of applications that involve detection and classification tasks. However, the low spatial resolution of hyperspectral images may limit the performance of the involved tasks in such applications. In the last years, fusing the information of an HS image with high spatial resolution multispectral (MS) or panchromatic (PAN) images has been widely studied to enhance the spatial resolution. Image fusion has been formulated as an inverse problem whose solution is an HS image which assumed to be sparse in an analytic or learned dictionary. This work proposes a non-local centralized sparse representation model on a set of learned dictionaries in order to regularize the conventional fusion problem.Methodology: The dictionaries are learned from the estimated abundance data taking advantage of the depth correlation between abundance maps and the non-local self- similarity over the spatial domain. Then, conditionally on these dictionaries, the fusion problem is solved by an alternating iterative numerical algorithm.Results: Experimental results with real data show that the proposed method outperforms the state-of-the-art methods under different quantitative assessments.Conclusions: In this work, we propose a hyperspectral and multispectral image fusion method based on a non-local centralized sparse representation on abundance maps. This model allows us to include the non-local redundancy of abundance maps in the fusion problem using spectral unmixing and improve the performance of the sparsity-based fusion approaches.
基于丰度图集中非局部稀疏度模型的高光谱和多光谱图像融合
目的:高光谱成像系统通常用于各种应用,包括检测和分类任务。然而,高光谱图像的低空间分辨率可能会限制此类应用中所涉及任务的性能。在过去的几年里,将HS图像的信息与高空间分辨率的多光谱(MS)或全色(PAN)图像融合以提高空间分辨率已经被广泛研究。图像融合已被公式化为一个逆问题,其解是假设在分析或学习字典中稀疏的HS图像。为了正则化传统的融合问题,本文在一组学习词典上提出了一个非局部集中式稀疏表示模型。方法:字典是从估计的丰度数据中学习的,利用了丰度图之间的深度相关性和空间域上的非局部自相似性。然后,在这些字典的条件下,通过交替迭代数值算法来解决融合问题。结果:实际数据的实验结果表明,在不同的定量评估下,该方法优于现有的方法。结论:在这项工作中,我们提出了一种基于丰度图上非局部集中稀疏表示的高光谱和多光谱图像融合方法。该模型使我们能够在使用频谱分解的融合问题中包括丰度图的非局部冗余,并提高基于稀疏性的融合方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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29
审稿时长
40 weeks
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