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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Parameterization of point-cloud freeform surfaces using adaptive sequential learning RBFnetworks
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Parameterization of point-cloud freeform surfaces using adaptive sequential learning RBFnetworks

机译:使用自适应顺序学习RBF网络对点云自由曲面进行参数化

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摘要

We propose a self-organizing Radial Basis Function (RBF) neural network method for parameterization of freeform surfaces from larger, noisy and unoriented point clouds. In particular, an adaptive sequential learning algorithm is presented for network construction from a single instance of point set. The adaptive learning allows neurons to be dynamically inserted and fully adjusted (e.g. their locations, widths and weights), according to mapping residuals and data point novelty associated to underlying geometry. Pseudo-neurons, exhibiting very limited contributions, can be removed through a pruning procedure. Additionally, a neighborhood extended Kalman filter (NEKF) was developed to significantly accelerate parameterization. Experimental results show that this adaptive learning enables effective capture of global low-frequency variations while preserving sharp local details, ultimately leading to accurate and compact parameterization, as characterized by a small number of neurons. Parameterization using the proposed RBF network provides simple, low cost and low storage solutions to many problems such as surface construction, re-sampling, hole filling, multiple level-of-detail meshing and data compression from unstructured and incomplete range data. Performance results are also presented for comparison.
机译:我们提出了一种自组织径向基函数(RBF)神经网络方法,用于对来自较大的,嘈杂的和未定向的点云的自由曲面进行参数化。特别地,提出了一种自适应顺序学习算法,用于从单个点集实例进行网络构建。自适应学习允许根据映射残差和与基础几何相关的数据点新颖性,动态插入神经元并对其进行完全调整(例如它们的位置,宽度和权重)。表现出非常有限的伪神经元可以通过修剪程序去除。此外,开发了邻域扩展卡尔曼滤波器(NEKF)以显着加速参数设置。实验结果表明,这种自适应学习方法能够有效捕获全局低频变化,同时保留清晰的局部细节,最终导致精确且紧凑的参数化(以神经元数量少为特征)。使用提出的RBF网络进行参数化可为许多问题提供简单,低成本和低存储的解决方案,例如表面构造,重新采样,孔填充,多个细节层次的网格划分以及来自非结构化和不完整范围数据的数据压缩。还提供了性能结果以供比较。

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