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Weighted fuzzy clustering for (fuzzy) constraints in multivariate image analysis–alternating least square of hyperspectral images

机译:多元图像分析中(模糊)约束的加权模糊聚类–交替最小二乘高光谱图像

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Author Summary: In order to investigate hyperspectral images, many techniques such as multivariate image analysis (MIA) or multivariate curve resolution–alternating least squares (MCR–ALS) can be applied. When focusing on the use of MCR–ALS, constraints are of the utmost importance for a correct resolution of the data into its individual contributions. In this article, a fuzzy clustering pattern recognition method (fuzzy C-means) is applied on experimental data in order to improve the results obtained within the MCR–ALS analysis. The big advantage of a fuzzy clustering technique over a hard clustering technique, such as k-means, is that the algorithm determines the probability of a pixel to be assigned to a component, indicating that a pixel can be part of multiple clusters (or components). This is, of course, an important property for dealing with data in which a lot of overlap between the components in the spatial direction occurs. This article deals briefly with the implementation of the constraint into the MCR–ALS algorithm and then shows the application of the constraint on an oil-in-water emulsion obtained by Raman spectroscopy, in which the different components can be decomposed in a clearer way and the interface between the oil and water bubbles becomes more visible.
机译:作者摘要:为了研究高光谱图像,可以应用多种技术,例如多元图像分析(MIA)或多元曲线分辨率交替最小二乘(MCR– ALS)。在着重使用MCR– ALS时,约束对于将数据正确解析为单个贡献至关重要。本文将模糊聚类模式识别方法(模糊C均值)应用于实验数据,以改善在MCR– ALS分析中获得的结果。模糊聚类技术相对于硬聚类技术(例如k均值)的最大优势在于,该算法确定将像素分配给组件的概率,这表明像素可以是多个聚类(或组件)的一部分)。当然,这是用于处理数据的重要属性,在这些数据中,在空间方向上的各个分量之间会出现很多重叠。本文简要介绍了约束条件在MCR– ALS算法中的实现,然后说明了约束条件在拉曼光谱法获得的水包油乳液中的应用,其中不同组分可以更清晰地分解。这样,油和水气泡之间的界面就变得更加明显。

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