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Embedded vision equipment of industrial robot for inline detection of product errors by clustering-classification algorithms

机译:工业机器人嵌入式视觉设备,用于通过聚类分类算法内联检测产品误差

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The article deals with the design of embedded vision equipment of industrial robots for inline diagnosis of product error during manipulation process. The vision equipment can be attached to the end effector of robots or manipulators, and it provides an image snapshot of part surface before grasp, searches for error during manipulation, and separates products with error from the next operation of manufacturing. The new approach is a methodology based on machine teaching for the automated identification, localization, and diagnosis of systematic errors in products of high-volume production. To achieve this, we used two main data mining algorithms: clustering for accumulation of similar errors and classification methods for the prediction of any new error to proposed class. The presented methodology consists of three separate processing levels: image acquisition for fail parameterization, data clustering for categorizing errors to separate classes, and new pattern prediction with a proposed class model. We choose main representatives of clustering algorithms, for example, K-mean from quantization of vectors, fast library for approximate nearest neighbor from hierarchical clustering, and density-based spatial clustering of applications with noise fromalgorithmbased on the density of the data. Formachine learning, we selected six major algorithms of classification: support vector machines, normal Bayesian classifier, K-nearest neighbor, gradient boosted trees, random trees, and neural networks. The selected algorithms were compared for speed and reliability and tested on two platforms: desktop-based computer system and embedded system based on System on Chip (SoC) with vision equipment.
机译:本文涉及工业机器人嵌入式视觉设备的设计,用于在操纵过程中内联诊断产品误差。视觉设备可以连接到机器人或操纵器的末端执行器,并且它在掌握之前提供了部分表面的图像快照,在操作期间搜索错误,并将产品与制造的下一次操作中的错误分开。新方法是一种基于机器教学的方法,用于自动识别,本地化和诊断高批量生产的系统误差。为此,我们使用了两个主要的数据挖掘算法:群集以累积类似错误和分类方法,以预测建议类的任何新错误。呈现的方法包括三个单独的处理级别:用于失败参数化的图像获取,用于将错误分类到单独的类别的数据群集,以及具有所提出的类模型的新模式预测。我们选择聚类算法的主要代表,例如,从量化的k均值,从分层聚类的近似邻近的近似邻居的快速库,以及基于密度的空间聚类,其应用噪声基于数据的密度。 Fincachine学习,我们选择了六个主要的分类算法:支持向量机,普通贝叶斯分类器,K最近邻居,渐变提升树木,随机树和神经网络。将所选算法进行比较,以便在两个平台上进行速度和可靠性,并在两个平台上进行测试:基于桌面的计算机系统和基于芯片(SOC)的嵌入式系统,具有视觉设备。

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