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Functional networks for B-spline surface reconstruction

机译:B样条曲面重建的功能网络

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Recently, a new extension of the standard neural networks, the so-called functional networks, has been described [E. Castillo, Functional networks, Neural Process. Lett. 7 (1998) 151-159]. This approach has been successfully applied to the reconstruction of a surface from a given set of 3D data points assumed to lie on unknown Bezier [A. Iglesias, A. Galvez, Applying functional networks to CAGD: the tensor-product surface problem, in: D. Plemenos (Ed.), Proceedings of the International Conference on Computer Graphics and Artificial Intelligence, 3IA'2000, 2000, pp. 105-115; A. Iglesias, A. Galvez, A new artificial intelligence paradigm for computer-aided geometric design, in: Artificial Intelligence and Symbolic Computation, J.A. Campbell, E. Roanes-Lozano (Eds.), Lectures Notes in Artificial Intelligence, Berlin, Heidelberg, Springer-Verlag, vol. 1930, 2001, pp. 200-213] and B-spline tensor-product surfaces [A. Iglesias, A. Galvez, Applying functional networks to fit data points from B-spline surfaces, in: H.H.S. Ip, N. Magnenat-Thalmann, R.W.H. Lau, T.S. Chua (Eds.), Proceedings of the Computer Graphics International, CGI'2001, IEEE Computer Society Press, Los Alamitos, CA, 2001, pp. 329-332]. In both cases the sets of data were fitted using Bezier surfaces. However, in general, the Bezier scheme is no longer used for practical applications. In this paper, the use of B-spline surfaces (by far the most common family of surfaces in surface modeling and industry) for the surface reconstruction problem is proposed instead. The performance of this method is discussed by means of several illustrative examples. A careful analysis of the errors makes it possible to determine the number of B-spline surface fitting control points that best fit the data points. This analysis also includes the use of two sets of data (the training and the testing data) to check for overfilling, which does not occur here. (C) 2004 Elsevier B.V. All rights reserved.
机译:最近,已经描述了标准神经网络的新扩展,即所谓的功能网络。卡斯蒂略,功能网络,神经过程。来吧7(1998)151-159]。该方法已成功地应用于从假设位于未知Bezier上的给定3D数据点集合重建表面的过程[A. Iglesias,A. Galvez,《将功能网络应用于CAGD:张量积表面问题》,载于:D. Plemenos(编),国际计算机图形学与人工智能会议论文集,3IA'2000,2000,第105页。 -115; A.Iglesias,A.Galvez,一种用于计算机辅助几何设计的新型人工智能范例,在:《人工智能与符号计算》(J.A.坎贝尔(E. Roanes-Lozano)(编),人工智能讲座,柏林,海德堡,施普林格出版社,第一卷。 1930年,2001年,第200-213页]和B样条张量积曲面[A. Iglesias,A.Galvez,应用功能网络以拟合B样条曲面的数据点,在:H.H.S.叶,(Np。N. Magnenat-Thalmann)刘天赐蔡(编),国际计算机图形学学报,CGI'2001,IEEE计算机协会出版社,加利福尼亚州洛斯阿拉米托斯,2001年,第329-332页]。在这两种情况下,都使用Bezier曲面拟合数据集。但是,一般而言,贝塞尔曲线不再用于实际应用。在本文中,提出了使用B样条曲面(到目前为止是曲面建模和工业中最常见的曲面族)来解决曲面重建问题。通过几个说明性示例讨论了此方法的性能。仔细分析误差可以确定最适合数据点的B样条曲面拟合控制点的数量。此分析还包括使用两套数据(培训和测试数据)来检查溢出,此处不会发生。 (C)2004 Elsevier B.V.保留所有权利。

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