Blind non-linear spectral unmixing with spatial coherence for hyper and multispectral images

IF 3.7 3区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS
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引用次数: 0

Abstract

Multi and hyperspectral images have become invaluable sources of information, revolutionizing various fields such as remote sensing, environmental monitoring, agriculture and medicine. In this expansive domain, the multi-linear mixing model (MMM) is a versatile tool to analyze spatial and spectral domains by effectively bridging the gap between linear and non-linear interactions of light and matter. This paper introduces an upgraded methodology that integrates the versatility of MMM in non-linear spectral unmixing, while leveraging spatial coherence (SC) enhancement through total variation theory to mitigate noise effects in the abundance maps. Referred to as non-linear extended blind end-member and abundance extraction with SC (NEBEAE-SC), the proposed methodology relies on constrained quadratic optimization, cyclic coordinate descent algorithm, and the split Bregman formulation. The validation of NEBEAE-SC involved rigorous testing on various hyperspectral datasets, including a synthetic image, remote sensing scenarios, and two biomedical applications. Specifically, our biomedical applications are focused on classification tasks, the first addressing hyperspectral images of in-vivo brain tissue, and the second involving multispectral images of ex-vivo human placenta. Our results demonstrate an improvement in the abundance estimation by NEBEAE-SC compared to similar algorithms in the state-of-the-art by offering a robust tool for non-linear spectral unmixing in diverse application domains.

利用空间相干性对超光谱和多光谱图像进行非线性盲目光谱非混合处理
多光谱和高光谱图像已成为宝贵的信息来源,给遥感、环境监测、农业和医学等各个领域带来了革命性的变化。在这一广阔的领域,多线性混合模型(MMM)是分析空间和光谱领域的多功能工具,它有效地弥合了光与物质的线性和非线性相互作用之间的差距。本文介绍了一种升级方法,该方法将多线性混合模型的多功能性整合到非线性光谱解混合中,同时通过全变异理论利用空间相干性(SC)增强来减轻丰度图中的噪声效应。所提出的方法依赖于受限二次优化、循环坐标下降算法和分裂布雷格曼公式,被称为带 SC 的非线性扩展盲端元和丰度提取(NEBEAE-SC)。NEBEAE-SC 的验证涉及对各种高光谱数据集的严格测试,包括合成图像、遥感场景和两个生物医学应用。具体来说,我们的生物医学应用侧重于分类任务,第一个任务涉及体内脑组织的高光谱图像,第二个任务涉及体外人体胎盘的多光谱图像。我们的研究结果表明,与最先进的类似算法相比,NEBEAE-SC 在丰度估计方面有所改进,为不同应用领域的非线性光谱非混合提供了一个强大的工具。
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来源期刊
CiteScore
7.30
自引率
14.60%
发文量
586
审稿时长
6.9 months
期刊介绍: The Journal of The Franklin Institute has an established reputation for publishing high-quality papers in the field of engineering and applied mathematics. Its current focus is on control systems, complex networks and dynamic systems, signal processing and communications and their applications. All submitted papers are peer-reviewed. The Journal will publish original research papers and research review papers of substance. Papers and special focus issues are judged upon possible lasting value, which has been and continues to be the strength of the Journal of The Franklin Institute.
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