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Automated classification of single airborne particles from two-dimension, angle-resolved optical scattering (TAOS) patterns

机译:从二维角度分辨光学散射(TAOS)模式对单个机载颗粒进行自动分类

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Two-dimension, angle-resolved optical scattering (TAOS) is an experimental technique by which patterns of LASER light intensity scattered by single (micrometer or sub-micrometer sized) airborne particles are collected. In the past 10 years TAOS instrumentation has evolved from laboratory prototypes to field-deployable equipment; patterns are collected by the thousands during indoor or outdoor sampling in short times. Although comparison between experimental and computed scattering patterns has been carried out extensively, there is no satisfactory way to relate a given pattern to the particle it comes from. This paper reports about the ongoing development and implementation of a method which is aimed at classifying patterns, rather than identifying original particles. A machine learning algorithm includes the extraction of morphological features and their multivariate statistical analysis. A classifier is trained and validated in a supervised mode, by relying on patterns from known materials. Then the tuned classifier is applied to the recognition of patterns of unknown origin.
机译:二维角度分辨光学散射(TAOS)是一项实验技术,通过该技术,可以收集由单个(微米或亚微米大小)的机载颗粒散射的激光光强度模式。在过去的10年中,TAOS仪器已经从实验室原型发展为可现场部署的设备。在短时间内进行室内或室外采样时,成千上万种模式被收集。尽管已经广泛地进行了实验散射模式和计算散射模式之间的比较,但是还没有令人满意的方法将给定模式与它所来自的粒子关联起来。本文报告了一种正在开发和实施的方法,该方法旨在对模式进行分类,而不是识别原始粒子。机器学习算法包括形态特征的提取及其多元统计分析。依靠已知材料的模式,以监督模式对分类器进行训练和验证。然后,将经过调整的分类器应用于未知来源模式的识别。

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