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Automatic segmentation of digitized data for reverse engineering applicationsAutomatic segmentation of digitized data for reverse engineering applications

机译:针对逆向工程应用自动分割数字化数据自动逆向工程应用自动分割数字化数据

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Reverse engineering is the process of developing a Computer Aided Design (CAD) model and a manufacturing database for an existing part. This process is used in CAD modeling of part prototypes, in designing molds, and in automated inspection of parts with complex surfaces. The work reported in this paper is on the automatic segmentation of 3-Dimensional (3-D) digitized data captured by a laser scanner or a Coordinate Measuring Machine (CMM) for reverse engineering applications. Automatic surface segmentation of digitized data is achieved using a combination of region and edge based approaches. It is assumed that the part surface contains planar as well as curved surfaces that are embedded in a base surface. The part surface should be visible to a single scanning probe (21/2D object). Neural network algorithms are developed for surface segmentation and edge detection. A back propagation network is used to segment part surfaces into surface primitives which are homogenous in their intrinsic differential geometric properties. The method is based on the computation of Gaussian and mean curvatures of the surface. They are obtained by locally approximating the object surface using quadratic polynomials. The Gaussian and mean curvatures are used as input to the neural network which outputs an initial region-based segmentation in the form of a curvature sign map. An edge based segmentation is also performed using the partial derivatives of depth values. Here, the output of the Laplacian operator and the unit surface normal are computed and used as input to a Self-Organized Mapping (SOM) network. This network is used to find the edge points on the digitized data. The combination of the region based and the edge based approaches, segment the data into primitive surface regions. The uniqueness of our approach is in automatic calculation of the threshold level for segmentation, and on the adaptability of the method to various noise levels in the digitized data. The developed algorithms and sample results are described in the paper.
机译:逆向工程是为现有零件开发计算机辅助设计(CAD)模型和制造数据库的过程。该过程用于零件原型的CAD建模,模具设计以及具有复杂表面的零件的自动检查。本文中报道的工作是针对通过逆向工程应用的激光扫描仪或坐标测量机(CMM)捕获的3维(3-D)数字化数据的自动分割。使用基于区域和边缘的方法相结合,可以实现数字化数据的自动表面分割。假定零件表面包含嵌入底面的平面和曲面。单个扫描探针(21 / 2D物体)应能看到零件表面。开发了用于表面分割和边缘检测的神经网络算法。反向传播网络用于将零件表面分割为在其固有的微分几何特性上相同的表面图元。该方法基于表面的高斯和平均曲率的计算。它们是通过使用二次多项式局部逼近对象表面而获得的。高斯和平均曲率被用作神经网络的输入,该神经网络以曲率符号图的形式输出基于初始区域的分割。还使用深度值的偏导数来执行基于边缘的分割。在这里,拉普拉斯算子的输出和单位表面法线被计算并用作自组织映射(SOM)网络的输入。该网络用于在数字化数据上查找边缘点。基于区域的方法和基于边缘的方法的组合将数据分割为原始表面区域。我们方法的独特性在于自动计算分割阈值水平,以及该方法对数字化数据中各种噪声水平的适应性。本文介绍了已开发的算法和示例结果。

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