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Confidence Distance Matrix for outlier identification: A new method to improve the characterizations of surfaces measured by confocal microscopy

机译:异常值识别的置信距离矩阵:一种改善共聚焦显微镜测量的表面特征的新方法

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This paper proposes a statistical method for outlier identification for surface measurement data obtained by confocal microscopy. The implemented statistical method is Confidence Distance Matrix (CDM) which were widely used in statistics and many engineering areas, such as signal processing, sensor data fusion, information problems, etc. However, no investigations on identifying outliers in measured surface data using CDM have been found. This paper introduces and simplifies the mathematical model of CDM method. Algorithms for identifying random outliers using Monte Carlo method for uncertainty evaluation and for identifying outliers in a unique measured surface are developed and validated. For validation of the algorithms, a synthetic data SG_3-3 provided by National Institute of Standards and Technology and a data of artificial stochastic surface generated by our own algorithms are implemented. The difference of Sq of the data with outliers is 2.3342% and after deletion of outliers is 0.0037% with reference to the certified value. A type Cl spacing standard with dust dropped is measured and processed using CDM. The difference of Sa decreases from 29.65% to 3.52% after processing outliers with reference to the certified value Ra. A steel plate is measured and processed. Surface slopes and curvatures of the data in the two validations and two experiments are compared. All those parameters, the surface reconstructions, histogram of heights, and QQ plot of the measured surface data versus the data after deletion of outliers indicate our proposed method working well. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文提出了通过共聚焦显微镜获得的表面测量数据的异常识别统计方法。实施的统计方法是置信率矩阵(CDM)广泛用于统计和许多工程领域,例如信号处理,传感器数据融合,信息问题等,但没有对使用CDM的测量表面数据中的异常值的调查被发现。本文介绍了CDM方法的数学模型。使用Monte Carlo方法识别随机异常值的算法,用于不确定评估,并开发用于识别独特测量表面中的异常值。为了验证算法,实现了国家标准和技术研究所提供的合成数据以及由我们自己的算法产生的人工随机表面的数据。具有异常值的数据的SQ的平均差异为2.3342%,并且在删除异常值后,参考认证值是0.0037%。使用CDM测量和处理具有灰尘的CL间距标准。在处理异常值后,SA的差异从29.65%到3.52%,参考认证值RA处理异常。测量并加工钢板。比较了两种验证中数据的表面斜率和数据的曲率和两个实验。在删除异常值之后,所有这些参数,高度,高度直方图和测量表面数据的QQ图表明我们所提出的方法运行良好。 (c)2019年elestvier有限公司保留所有权利。

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