Article ID: | iaor2002269 |
Country: | Netherlands |
Volume: | 40 |
Issue: | 3 |
Start Page Number: | 215 |
End Page Number: | 227 |
Publication Date: | Jul 2001 |
Journal: | Computers & Industrial Engineering |
Authors: | Lai Xinmin, Lin Zhongqin, Huang Tian, Zeng Ziping |
Keywords: | artificial intelligence |
Reverse engineering can quickly create a CAD model of a new product, in which the sensor, sampling planning and surface reconstruction are three crucial elements. In this paper, a reverse engineering system involving a new vision sensor, an improved sampling planning module and a fine surface reconstruction module is developed. A characteristic of the proposed sensor is strong linearity between output and input, obtained by the structure optimization when a simple lens replaces the aspheric lens. Back propagation neural network error compensation heightens accuracy. To increase efficiency of digitization, an improved sampling planning approach is proposed; it is based on surface curvature and tangent line slope of a measured point. In surface reconstruction, a new adaptive extracting approach based on curvature of surface reconstructs the non-uniform rational B-spline surface for the scattered data. The accompanying reverse engineering experiment proves the proposed system to be reliable and efficient.