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首页> 外文期刊>International Journal of Image and Graphics >FREEFORM SURFACE RECONSTRUCTION FROM SCATTERED POINTS USING A DEFORMABLE SPHERICAL MAP
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FREEFORM SURFACE RECONSTRUCTION FROM SCATTERED POINTS USING A DEFORMABLE SPHERICAL MAP

机译:使用可变形的球形贴图从分散的点进行自由曲面重构

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摘要

Reconstruction of freeform surfaces from scattered coordinate data is a difficult problem encountered in many surface fitting and geometric modeling applications. Conventional tessellation and parametric surface fitting techniques are limited because they require prior knowledge about the connectivity between the sampled points. The method of surface reconstruction described in this paper exploits the learning capability of a self-organizing feature map (SOFM) to adaptively fit a deformable sphere to the unorganized 3D coordinate data. The learning algorithm automatically establishes the connectivity between the measured points by iteratively changing the topological relationships within the map. By incorporating additional constraints during the learning process it is possible to have the deformable map follow the shape of objects with surface holes and cavities. Several examples of freeform surfaces with varying levels of complexity are discussed in order to demonstrate the performance of the algorithm.
机译:根据分散的坐标数据重建自由曲面是许多曲面拟合和几何建模应用程序中遇到的难题。常规的镶嵌和参数化曲面拟合技术受到限制,因为它们需要有关采样点之间连通性的先验知识。本文描述的表面重建方法利用自组织特征图(SOFM)的学习能力,将可变形球体自适应地拟合到未组织的3D坐标数据中。学习算法通过迭代地更改地图内的拓扑关系来自动建立测量点之间的连通性。通过在学习过程中加入其他约束,可以使可变形贴图遵循带有表面孔和腔的对象的形状。讨论了具有不同复杂程度的自由曲面的几个示例,以证明算法的性能。

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