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Hyperspectral image fusion by the similarity measure-based variational method

机译:基于相似度量的变分方法的高光谱图像融合

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摘要

Hyperspectral remote sensing is widely used in many fields suchas agriculture, military detection, mineral exploration, and so on. Hyperspectral data has very high spectral resolution, but much lower spatial resolution than the data obtained by other types of sensors. The low spatial resolution restrains its wide applications. On the contrary, we easily obtain images with high spatial resolution but insufficient spectral resolution (like panchromatic images). Naturally, people expect to obtain images that have high spatial and spectral resolution at the same time by the hyperspectral image fusion. In this paper, a similarity measure-based variational method is proposed to achieve the fusion process. The main idea is to transform the image fusion problem to an optimization problem based on the variational model. We first establish a fusion model that constrains the spatial and spectral information of the original data at the same time, then use the split bregman iteration to obtain the final fused data. Also, we analyze the convergence of the method. The experiments on the synthetic and real data show that the fusion method preserves the information of the original images efficiently, especially on the spectral information.
机译:高光谱遥感被广泛应用于农业,军事探测,矿物勘探等许多领域。高光谱数据具有很高的光谱分辨率,但空间分辨率却比其他类型的传感器获得的数据低。低的空间分辨率限制了其广泛的应用。相反,我们很容易获得具有高空间分辨率但光谱分辨率不足的图像(如全色图像)。人们自然希望通过高光谱图像融合获得具有高空间和光谱分辨率的图像。本文提出了一种基于相似度量的变分方法来实现融合过程。主要思想是基于变分模型将图像融合问题转换为优化问题。我们首先建立一个融合模型,该模型同时约束原始数据的空间和光谱信息,然后使用分裂的bregman迭代获得最终的融合数据。此外,我们分析了该方法的收敛性。对合成数据和真实数据的实验表明,融合方法有效地保留了原始图像的信息,尤其是在光谱信息上。

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