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Small Parts Classification with Flexible Machine Vision and a Hybrid Classifier

机译:具有柔性机器视觉和混合分类器的小零件分类

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A Flexible Machine Vision (FMV) Inspection System has been developed that requires minimal retuning in hardware and software as applications are changed up. The flexibility of the system was evaluated by applying it to an inspection problem with three different types of small parts: plastic gears, plastic connectors and metallic coins, with minimal retuning when moving from one application to the others. The system was required to differentiate between 4 different known styles of each part plus one unknown style, for a total of 5 classes. In previous work, a hybrid Support Vector Machine (SVM) classifier was developed for the connector application. When applied to the coin application, the hybrid SVM could not achieve the target performance of 95% accuracy. A new hybrid that method that combines SVM and an Artificial Neural Network (ANN) or ANN-SVM classifier was subsequently developed to overcome this problem and the results are presented in this paper. The image library used in this study is available at http://my.me.queensu.ca/People/Surgenor/Laboratory/Database.html.
机译:已经开发了一种柔性机器视觉(FMV)检查系统,该系统在更改应用程序时几乎不需要对硬件和软件进行调整。通过将系统应用于三种不同类型的小零件(塑料齿轮,塑料连接器和金属硬币)的检查问题,评估了系统的灵活性,当从一种应用程序迁移到另一种应用程序时,重新调整的可能性很小。需要该系统区分每个零件的4种不同的已知样式和一种未知的样式,总共5个类。在以前的工作中,针对连接器应用程序开发了混合支持向量机(SVM)分类器。当应用于硬币应用程序时,混合SVM无法达到95%精度的目标性能。随后开发了一种将SVM与人工神经网络(ANN)或ANN-SVM分类器相结合的新混合方法,以克服此问题,并在本文中给出了结果。本研究中使用的图像库可从http://my.me.queensu.ca/People/Surgenor/Laboratory/Database.html获得。

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