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Neural network approach for modification and fitting of digitized data in reverse engineering

机译:逆向工程中数字化数据修改和拟合的神经网络方法

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Reverse engineering in the manufacturing field is a process in which the digitized data are obtained from an existing object model or a part of it, and then the CAD model is reconstructed. This paper presents an RBF neural network approach to modify and fit the digitized data. The centers for the RBF are selected by using' the orthogonal least squares learning algorithm. A mathematically known surface is used for generating a number of samples for training the networks. The trained networks then generated a number of new points which were compared with the calculating points from the equations. Moreover, a series of practice digitizing curves are used to test the approach. The results showed that this approach is effective in modifying and fitting digitized data and generating data points to reconstruct the surface model.
机译:制造领域的逆向工程是从现有的对象模型或对象模型的一部分获取数字化数据,然后重建CAD模型的过程。本文提出了一种RBF神经网络方法来修改和拟合数字化数据。通过使用正交最小二乘学习算法来选择RBF的中心。数学上已知的表面用于生成用于训练网络的多个样本。然后,受过训练的网络会生成许多新点,并将这些新点与方程中的计算点进行比较。此外,一系列的实践数字化曲线用于测试该方法。结果表明,该方法可有效地修改和拟合数字化数据并生成数据点以重建表面模型。

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