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A model based two-stage classifier for airborne particles analyzed with Computer Controlled Scanning Electron Microscopy

机译:基于模型的两级分类器,用于用计算机控制扫描电子显微镜分析的空气颗粒

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摘要

Computer controlled scanning electron microscopy (CCSEM) is a widely-used method for single airborne particle analysis. It produces extensive chemical and morphological data sets, whose processing and interpretation can be very time consuming. We propose an automated two-stage particle classification procedure based on elemental compositions of individual particles. A rule based classifier is applied in the first stage to form the main classes consisting of particles containing the same elements. Only elements with concentrations above a threshold of 5 wt% are considered. In the second stage, data of each main class are isometrically log-ratio transformed and then clustered into subclasses, using a robust, model-based method. Single particles which are too far away from any more densely populated region are excluded during training, preventing these particles from distorting the definition of the sufficiently populated subclasses. The classifier was trained with over 55,000 single particles from 83 samples of manifold environments, resulting in 227 main classes and 465 subclasses in total. All these classes are checked manually by inspecting the ternary plot matrix of each main class. Regardless of the size of training data, some particles might belong to still undefined classes. Therefore, a classifier was chosen which can declare particles as unknown when they are too far away from all classes defined during training.
机译:计算机控制扫描电子显微镜(CCSEM)是一种广泛使用的单一空气粒子分析方法。它产生了广泛的化学和形态数据集,其处理和解释可能非常耗时。我们提出了一种基于单个颗粒的元素组成的自动化两级颗粒分类程序。基于规则的分类器应用于第一阶段,以形成由包含相同元素的粒子组成的主要类。仅考虑具有5wt%的阈值的浓度高于5wt%的元素。在第二阶段,每个主类的数据都是变换的等分比度比率,然后使用基于模型的方法将其群集到子类中。在训练期间排除了离任何更密集的区域太远的单个颗粒,防止这些颗粒扭曲了足够人口稠密的亚类的定义。分类器接受过83个歧管环境的55,000个单个颗粒培训,导致227个主要课程和465个子类总额。通过检查每个主类的三元图矩阵来手动检查所有这些类。无论培训数据的大小如何,某些粒子可能属于仍然未定义的类。因此,选择分类器,当它们远离训练期间定义的所有类时,可以将粒子声明为未知的粒子。

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