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USING SUPPORT VECTOR REGRESSION IN THE STUDY OF PRODUCT FORM IMAGES

机译:在产品形式图像研究中使用支持向量回归

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In this paper, Support Veetor Regression (SVR) training models using three different kernels: polynomial, Radial Basis Function (RBF), and mixed kernels, are constructed to demonstrate the training performance of unarranged data obtained from 32 virtual 3-D computer models. The 32 samples used as input data for training the three SVR models are represented by the coordination value sets of points extracted from 3-D models built by the 3-D software according to the shapes of 32 actual hairdryer products. To train the SVR model, an adjective (streamline) is used to evaluate all the 32 samples by 37 subjects. Then the scores of all the subjects are averaged to be the target values of the training models.In addition, a technique called k-fold cross-validation (C-V) is used to find the optimal parameter combination foroptimizing the SVR models. The performance of the SVR using these three kernels to estimate the product image values is determined by the values of the Root Mean Square Error (RMSE). The results show that the optimal SVR model using the polynomial kernel performed belter than the one using the RBF kernel. However, it is important to note that the mixed kernel had the best performance of the three. It is also shown in this study that the single RBF has a local characteristic and cannot process the broadly distributed data well. It can, however, be used to improve the power of the SVR by combining with the polynomial kernel.
机译:在本文中,构建了使用三种不同的内核:多项式,径向基函数(RBF)和混合内核的Support Veetor回归(SVR)训练模型,以演示从32个虚拟3-D计算机模型获得的未安排数据的训练性能。根据32种实际吹风机产品的形状,从3-D软件构建的3-D模型中提取的点的协调值集表示了用于训练三个SVR模型的输入数据的32个样本。为了训练SVR模型,使用形容词(流线)来评估37位受试者的所有32个样本。然后,将所有主题的分数平均为训练模型的目标值。 另外,一种称为k折交叉验证(C-V)的技术可用于找到以下参数的最佳参数组合: 优化SVR模型。使用这三个内核估算产品图像值的SVR的性能由均方根误差(RMSE)的值确定。结果表明,使用多项式内核的最优SVR模型比使用RBF内核的最优SVR模型更安全。但是,重要的是要注意,混合内核在这三个内核中具有最佳性能。在这项研究中还表明,单个RBF具有局部特征,不能很好地处理广泛分布的数据。但是,它可以与多项式内核结合使用,以提高SVR的功能。

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