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Machine learning approach for automated visual inspection of machine components

机译:机器学习方法,用于自动视觉检查机器组件

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摘要

Visual inspection on the surface of components is a main application of machine vision. Visual inspection finds its application in identifying defects such as scratches, cracks bubbles and measurement of cutting tool wear and welding quality. Machine learning approach to machine vision helps in automating the design process of machine vision systems. This approach involves image acquisition, preprocessing, feature extraction and classification. Study shows a library of features, and classifiers are available to classify the data. However, only the best combination of them can yield the highest classification accuracy. In this study, images with different known conditions were acquired, preprocessed, and histogram features were extracted. The classification accuracies of C4.5 classifier algorithm and Naive Bayes algorithm were compared, and results are reported. The study shows that C4.5 algorithm performs better.
机译:组件表面的视觉检查是机器视觉的主要应用。目视检查可将其应用于识别缺陷,例如划痕,裂纹,测量切削工具的磨损和焊接质量。机器视觉的机器学习方法有助于使机器视觉系统的设计过程自动化。这种方法涉及图像采集,预处理,特征提取和分类。研究显示了功能库,分类器可用于对数据进行分类。但是,只有它们的最佳组合才能产生最高的分类精度。在这项研究中,获取具有不同已知条件的图像,对其进行预处理,并提取直方图特征。比较了C4.5分类器算法和朴素贝叶斯算法的分类精度,并报告了结果。研究表明,C4.5算法性能更好。

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