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Model-free classification of X-ray scattering signals applied to image segmentation

机译:无模型分类X射线散射信号应用于图像分割

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摘要

In most cases, the analysis of small-angle and wide-angle X-ray scattering (SAXS and WAXS, respectively) requires a theoretical model to describe the sample's scattering, complicating the interpretation of the scattering resulting from complex heterogeneous samples. This is the reason why, in general, the analysis of a large number of scattering patterns, such as are generated by timeresolved and scanning methods, remains challenging. Here, a model-free classification method to separate SAXS/WAXS signals on the basis of their inflection points is introduced and demonstrated. This article focuses on the segmentation of scanning SAXS/WAXS maps for which each pixel corresponds to an azimuthally integrated scattering curve. In such a way, the sample composition distribution can be segmented through signal classification without applying a model or previous sample knowledge. Dimensionality reduction and clustering algorithms are employed to classify SAXS/WAXS signals according to their similarity. The number of clusters, i.e. the main sample regions detected by SAXS/WAXS signal similarity, is automatically estimated. From each cluster, a main representative SAXS/WAXS signal is extracted to uncover the spatial distribution of the mixtures of phases that form the sample. As examples of applications, a mudrock sample and two breast tissue lesions are segmented.
机译:在大多数情况下,小角度和广角X射线散射(分别)分析小角度和广角和蜡,分别)需要理论模型来描述样品的散射,使其对复杂的异质样品引起的散射的解释复杂化。这就是为什么通常,通过Timeresolved和扫描方法产生大量散射模式的分析仍然具有挑战性。这里,引入并证明了一种自由模型分类方法,以基于其拐点分离SAX /蜡信号。本文重点介绍扫描萨克斯/蜡映射的分割,每个像素对应于方位角集成的散射曲线。以这种方式,可以通过信号分类进行样品组成分布而不应用模型或先前的示例知识。使用维度减少和聚类算法以根据其相似性对SAXS / WAXS信号进行分类。自动估计群集数,即通过SAXS /蜡信号相似检测的主要样本区域。从每个簇中,提取主要代表性萨克斯/蜡信号以发现形成样品的相的混合物的空间分布。作为应用的实例,将夹带样品和两个乳房组织病变进行分段。

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