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首页> 外文期刊>Journal of Mechanical Engineering >Surface Defect Detection on Optical Devices Based on Microscopic Dark-Field Scattering Imaging
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Surface Defect Detection on Optical Devices Based on Microscopic Dark-Field Scattering Imaging

机译:基于微观暗场散射成像的光学器件表面缺陷检测

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摘要

Methods of surface defect detection on optical devices are proposed in this paper. First, a series of microscopic dark-field scattering images were collected with a line-scan camera. Translation transformation between overlaps of adjacent microscopic dark-field scattering images resulted from the line-scan camera's imaging feature. An image mosaic algorithm based on scale invariance feature transform (SIFT) is proposed to stitch dark-field images collected by the line-scan camera. SIFT feature matching point-pairs were extracted from regions of interest in the adjacent microscopic dark-field scattering images. The best set of SIFT feature matching point-pairs was obtained via a parallel clustering algorithm: The transformation matrix of the two images was calculated by the best matching point-pair set, and then image stitching was completed through transformation matrix. Secondly, a sample threshold segmentation method was used to segment dark-field images that were previously stitched together because the image background was very dark. Finally, four different supervised learning classifiers are used to classify the defect represented by a six-dimensional feature vector by shape (point or line), and the performance of linear discriminant function (LDF) classifier is demonstrated to be the best. The experimental results showed that defects on optical devices could be detected efficiently by the proposed methods.
机译:提出了光学器件表面缺陷的检测方法。首先,用线扫描相机收集一系列显微暗场散射图像。线扫描相机的成像功能导致相邻的微观暗场散射图像重叠部分之间的平移转换。提出了一种基于尺度不变特征变换(SIFT)的图像拼接算法,对线扫描相机采集的暗场图像进行拼接。从相邻的显微暗场散射图像中的感兴趣区域中提取了SIFT特征匹配点对。通过并行聚类算法得到SIFT特征匹配点对的最佳集合:用最佳匹配点对集合计算两幅图像的变换矩阵,然后通过变换矩阵完成图像拼接。其次,样本阈值分割方法用于分割先前缝合在一起的暗场图像,因为图像背景非常暗。最后,使用四个不同的监督学习分类器按形状(点或线)对六维特征向量表示的缺陷进行分类,并证明线性判别函数(LDF)分类器的性能最佳。实验结果表明,该方法可以有效地检测光学器件上的缺陷。

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