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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Mesh optimization for surface approximation using an efficient coarse-to-fine evolutionary algorithm
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Mesh optimization for surface approximation using an efficient coarse-to-fine evolutionary algorithm

机译:使用有效的从粗到精的进化算法对表面近似进行网格优化

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摘要

The investigated mesh optimization problem C(N, n) for surface approximation, which is NP-hard, is to minimize the global error between a digital surface and its approximating mesh surface by efficiently locating a limited number n of grid points which are a subset of the original N sample points. This paper proposes an efficient coarse-to-fine evolutionary algorithm (CTFEA) with a novel orthogonal array crossovet (OAX) for solving the mesh optimization problem. OAX adaptively divides the meshes of parents into a number of parts using a tuning parameter for applying a coarse-to-fine technique. Meshes of children are formed from an intelligent combination of the good parts from their parents rather than the conventional random combination. The better one of two parts in two parents is chosen by evaluating the contribution of the individual parts to the fitness function based on orthogonal experimental design. The coarse-to-fine technique of CTFEA can advantageously solve large mesh optimization problems. Furthermore, CTFEA using an additional inheritance technique can further efficiently locate the grid points in the mesh surface. It is shown empirically that CTFEA outperforms the existing evolutionary algorithm in terms of both approximation quality and convergence speed, especially in solving large mesh optimization problems. (C) 2002 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 24]
机译:用于表面逼近的研究网格优化问题C(N,n)是NP难的,它是通过有效地定位有限数量的n个子网格点来最小化数字表面及其近似网格表面之间的全局误差原始N个采样点中的一个。本文提出了一种有效的从粗到细进化算法(CTFEA),并采用了一种新颖的正交阵列交叉视点(OAX)来解决网格优化问题。 OAX使用调整参数将粗加工到精加工技术自适应地将父网格划分为多个部分。儿童的网格是由父母的好部分的智能组合而不是传统的随机组合形成的。通过基于正交实验设计评估各个部分对适应度函数的贡献,可以选择两个亲本中两个部分中较好的一个。 CTFEA的从粗到细技术可以有利地解决大型网格优化问题。此外,使用其他继承技术的CTFEA可以进一步有效地定位网格表面中的网格点。实验证明,CTFEA在逼近质量和收敛速度方面都优于现有的进化算法,特别是在解决大型网格优化问题上。 (C)2002模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:24]

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