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A Novel Machine Vision System for the Inspection of Micro-Spray Nozzle

机译:一种用于微喷嘴检查的新型机器视觉系统

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摘要

In this study, we present an application of neural network and image processing techniques for detecting the defects of an internal micro-spray nozzle. The defect regions were segmented by Canny edge detection, a randomized algorithm for detecting circles and a circle inspection (CI) algorithm. The gray level co-occurrence matrix (GLCM) was further used to evaluate the texture features of the segmented region. These texture features (contrast, entropy, energy), color features (mean and variance of gray level) and geometric features (distance variance, mean diameter and diameter ratio) were used in the classification procedures. A back-propagation neural network classifier was employed to detect the defects of micro-spray nozzles. The methodology presented herein effectively works for detecting micro-spray nozzle defects to an accuracy of 90.71%.
机译:在这项研究中,我们提出了神经网络和图像处理技术在检测内部微喷喷嘴缺陷中的应用。缺陷区域通过Canny边缘检测,用于检测圆的随机算法和圆检查(CI)算法进行分割。灰度共生矩阵(GLCM)被进一步用于评估分割区域的纹理特征。在分类程序中使用了这些纹理特征(对比度,熵,能量),颜色特征(灰度的均值和方差)和几何特征(距离方差,平均直径和直径比)。使用反向传播神经网络分类器来检测微喷喷嘴的缺陷。本文介绍的方法可有效地检测微喷喷嘴缺陷,准确度达到90.71%。

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