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首页> 外文期刊>Neural processing letters >Performance of Genetic Algorithm and Levenberg Marquardt Method on Multi-Mother Wavelet Neural Network Training for 3D Huge Meshes Deformation: A Comparative Study
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Performance of Genetic Algorithm and Levenberg Marquardt Method on Multi-Mother Wavelet Neural Network Training for 3D Huge Meshes Deformation: A Comparative Study

机译:遗传算法的性能和Levenberg Marquardt方法对3D巨大网格的多母小波神经网络训练变形:比较研究

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摘要

We propose, in this paper, a novel technique for large Laplacian boundary deformations using estimated rotations. The introduced method is used in the domain of Region of Interest (ROI) to align features of mesh based on Multi Mother Wavelet Neural Network (MMWNN) structure found in several mother wavelet families. The wavelet network allows the alignment of the characteristic points of the original mesh towards the target mesh. The key component of our correspondence scheme is a deformation energy that penalizes geometric distortion, encourages structure preservation and simultaneously allows mesh topology changes. To ensure the design of wavelet neural network architecture, an optimization algorithm should be applied to estimate and optimize the network parameters. Therefore, we compare our approach of 3d mesh deformation using MMWNN architecture based on genetic algorithm and our approach relying on Levenberg-Marquardt Method. We also discuss the existing comparison metrics for static and deformed triangle meshes employing the two mentioned approaches. Besides, we enumerate their strengths, weaknesses and relative performance.
机译:本文提出了一种使用估计旋转的大型拉普拉斯边界变形的新技术。介绍的方法用于感兴趣区域(ROI)区域以基于多母小波家族中发现的基于多母小波神经网络(MMWNN)结构的网格的特征。小波网络允许原始网格的特征点对准朝向目标网格对齐。我们的通信方案的关键组成部分是惩罚几何失真的变形能量,鼓励结构保存并同时允许网格拓扑变化。为确保小波神经网络架构的设计,应应用优化算法来估计和优化网络参数。因此,我们使用基于遗传算法的MMWNN架构和依赖于Levenberg-Marquardt方法的MMWNN架构的3D网格变形方法。我们还讨论采用两种方法的静态和变形三角网格的现有比较度量。此外,我们枚举了他们的优势,劣势和相对的表现。

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