首页> 外文期刊>IJIDeM: International Journal on Interactive Design and Manufacturing >Geodesic-based manifold learning for parameterization of triangular meshes
【24h】

Geodesic-based manifold learning for parameterization of triangular meshes

机译:基于大地测量的流形学习用于三角网格的参数化

获取原文
获取原文并翻译 | 示例
           

摘要

Reverse Engineering (RE) requires representing with free forms (NURBS, Spline, Bezier) a real surface S_0 which has been point-sampled. To serve this purpose, we have implemented an algorithm that minimizes the accumulated distance between the free form and the (noisy) point sample. We use a dual-distance calculation point to/from surfaces, which discourages the forming of outliers and artifacts. This algorithm seeks a minimum in a function f that represents the fitting error, by using as tuning variable the control polyhedron for the free form. The topology (rows, columns) and geometry of the control polyhedron are determined by alternative geodesic-based dimensionality reduction methods: (a) graph-approximated geodesics (Isomap), or (b) PL orthogonal geodesic grids. We assume the existence of a triangular mesh of the point sample (a reasonable expectation in current RE). A bijective composition mapping S_0 {is contained in} R~3 ←→ R~2 allows to estimate a size of the control polyhedrons favorable to uniform-speed parameterizations. Our results show that orthogonal geodesic grids is a direct and intuitive parameterization method, which requires more exploration for irregular triangle meshes. Isomap gives a usable initial parameterization whenever the graph approximation of geodesics on S_0 be faithful. These initial guesses, in turn, produce efficient free form optimization processes with minimal errors. Future work is required in further exploiting the usual triangular mesh underlying the point sample for (a) enhancing the segmentation of the point set into faces, and (b) using a more accurate approximation of the geodesic distances within S_0, which would benefit its dimensionality reduction.
机译:逆向工程(RE)要求以自由形式(NURBS,样条曲线,贝塞尔曲线)表示已被点采样的真实表面S_0。为了达到这个目的,我们实现了一种算法,该算法使自由形式和(有噪声的)点样本之间的累积距离最小化。我们使用往返于表面的双距离计算点,这会阻止离群值和伪影的形成。该算法通过将自由形式的控制多面体用作调整变量,在表示拟合误差的函数f中寻找最小值。控制多面体的拓扑结构(行,列)和几何形状是通过其他基于测地线的降维方法确定的:(a)图近似测地线(Isomap),或(b)PL正交测地线网格。我们假设存在点样本的三角形网格(当前RE中的合理预期)。在R〜3←→R〜2中包含双射成分映射S_0允许估计有利于匀速参数化的控制多面体的尺寸。我们的结果表明,正交测地网格是一种直接直观的参数化方法,需要对不规则三角形网格进行更多探索。只要S_0上测地线的图形逼近真实值,Isomap就会提供可用的初始参数化。反过来,这些最初的猜测将产生有效的自由形式优化过程,并且错误最少。需要进一步的工作来进一步利用点样本下面的常规三角形网格,以便(a)增强点集在面中的分割,以及(b)使用S_0内测地距离的更精确近似值,这将有利于其维数减少。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号