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Automated discrimination between digs and dust particles on optical surfaces with dark-field scattering microscopy

机译:利用暗场散射显微镜自动识别光学表面上的凹陷和灰尘颗粒

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摘要

To make the surface defects evaluation system (SDES) of fine flat optics more effective and reliable, the point-like defects on the surface are divided into two categories: digs and dust particles. Since only the digs are the real damages that should be sent for further investigation, the false signals associated with dust particles should be distinguished and removed. Dark-field scattering microscopy and pattern recognition methodology are combined to classify digs and dust particles. The SDES is employed for dark-field image acquisition of optical samples. Gray scale, texture, and morphology analyses are then conducted on each image to extract raw feature data, which are compressed with the principal component analysis. Based on the compressed feature data, the support vector machine is used to construct the classification model. The success discrimination rates are 96.56% for the training set and 93.90% for the prediction set. The classification results are presented to show the potential of this method to be used for practical digs and dust particles discrimination on the actual optical samples.
机译:为了使精细平面光学器件的表面缺陷评估系统(SDES)更加有效和可靠,将表面上的点状缺陷分为两类:挖屑和灰尘颗粒。由于只有挖掘物才是应发送给进一步调查的实际损害,因此应区分并消除与灰尘颗粒相关的错误信号。暗场散射显微镜和模式识别方法相结合,以分类挖掘和尘埃颗粒。 SDES用于光学样本的暗场图像采集。然后对每幅图像进行灰度,纹理和形态分析,以提取原始特征数据,并用主成分分析将其压缩。基于压缩的特征数据,使用支持向量机构建分类模型。训练集的成功判别率为96.56%,预测集的成功判别率为93.90%。给出分类结果以显示该方法在实际光学样品上进行实际挖掘和灰尘颗粒识别中的潜力。

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