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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Automatic recognition system of welding seam type based on SVM method
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Automatic recognition system of welding seam type based on SVM method

机译:基于SVM方法的焊缝型自动识别系统

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摘要

In this paper, an automatic recognition system of welding seam type based on support vector machine (SVM) method is presented. The hardware of the proposed system consists of an industry robot with six degrees of freedom, a vision sensor, and a computer. The system has two parts including input feature vector computation and model building. In the input feature vector computation part, the depth values of a series of points of the welding joint are taken as feature vector, which are determined by four steps including main line extraction of the laser stripe, normalization of the laser stripe, selection of the left and right edge points of the welding joint, and normalization of feature vectors. In the model building part, SVM-based modeling method is used to achieve welding seam type recognition. At first, RBF kernel function is employed for classification of welding seam types. Then, the parameters of RBF are determined by a grid search method using cross-validation. After the optimal parameters of RBF being determined, the SVM model is built, and it could be used to predict welding seam type. Finally, a series of welding seam type recognition experiments are implemented. Experimental results show that the proposed system can achieve welding seam type recognition accurately and the computation cost can be reduced compared with previous methods.
机译:本文提出了一种基于支撑载体机(SVM)方法的焊缝型自动识别系统。所提出的系统的硬件由具有六个自由度,视觉传感器和计算机的行业机器人组成。该系统有两部分,包括输入特征向量计算和模型建筑物。在输入特征向量的计算部分中,焊接接头的一系列点的深度值被视为特征向量,该特征向量是由包括激光条纹的主线提取的四个步骤确定,激光条纹的归一化,选择焊接接头的左边缘和右边缘点,以及特征向量的标准化。在模型建筑部分中,基于SVM的建模方法来实现焊缝类型识别。首先,RBF内核功能用于焊缝类型的分类。然后,RBF的参数由使用交叉验证的网格搜索方法确定。在确定RBF的最佳参数之后,构建了SVM模型,可用于预测焊缝类型。最后,实施了一系列焊缝型识别实验。实验结果表明,该建议的系统可以准确地实现焊缝型识别,与先前的方法相比,可以减少计算成本。

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