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Edge-Preserving Image Smoothing Constraint in Multivariate Curve Resolution–Alternating Least Squares (MCR-ALS) of Hyperspectral Data

机译:高光谱数据的多变量曲线分辨率 - 交替最小二乘(MCR-ALS)中的边缘保留图像平滑约束

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This article explores smoothing with edge-preserving properties as a spatial constraint for the resolution of hyperspectral images with multivariate curve resolution–alternating least squares (MCR-ALS). For each constrained component image (distribution map), irrelevant spatial details and noise are smoothed applying an L_(1)- or L_(0)-norm penalized least squares regression, highlighting in this way big changes in intensity of adjacent pixels. The feasibility of the constraint is demonstrated on three different case studies, in which the objects under investigation are spatially clearly defined, but have significant spectral overlap. This spectral overlap is detrimental for obtaining a good resolution and additional spatial information should be provided. The final results show that the spatial constraint enables better image (map) abstraction, artifact removal, and better interpretation of the results obtained, compared to a classical MCR-ALS analysis of hyperspectral images.
机译:本文探讨了边缘保留属性的平滑,作为具有多变量曲线分辨率交替最小二乘(MCR-ALS)的高光谱图像的空间约束。 对于每个约束的分量图像(分发图),不相关的空间细节和噪声被平滑地应用L_(1) - 或L_(0) - 损坏的最小二乘回归,以这种方式突出显示相邻像素的强度大的变化。 在三种不同的案例研究中证明了约束的可行性,其中正在清楚地清楚地定义正在进行的对象,但具有显着的光谱重叠。 这种光谱重叠是有害的,用于获得良好的分辨率,并且应该提供附加的空间信息。 与高光谱图像的经典MCR-ALS分析相比,最终结果表明,空间约束使得能够更好的图像(地图)抽象,伪像去除以及获得所获得的结果的更好地解释。

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