论文标题
来自大的嘈杂点云的薄叶表面的隐性重建
Implicit reconstructions of thin leaf surfaces from large, noisy point clouds
论文作者
论文摘要
薄表面,例如植物的叶子,对隐式表面重建技术构成了重大挑战,通常假设封闭的,可定向的表面。我们表明,通过大约将表面的点云插值(用外面点增强),并限制对插值的评估到点云周围的紧密域,我们只需要一个可定向的表面来进行重建即可。我们使用多键式平滑样条符合近似插值剂与嘈杂的数据,并使用类似Octree的统一方法的分区来选择子域。此方法使我们能够在O(n)操作中插值N点数据集。我们提出了用手持装置扫描的辣椒和番茄植物点云的结果。这项工作的重要结果是,生成足够光滑的叶片表面,可用于液滴扩散模拟。
Thin surfaces, such as the leaves of a plant, pose a significant challenge for implicit surface reconstruction techniques, which typically assume a closed, orientable surface. We show that by approximately interpolating a point cloud of the surface (augmented with off-surface points) and restricting the evaluation of the interpolant to a tight domain around the point cloud, we need only require an orientable surface for the reconstruction. We use polyharmonic smoothing splines to fit approximate interpolants to noisy data, and a partition of unity method with an octree-like strategy for choosing subdomains. This method enables us to interpolate an N-point dataset in O(N) operations. We present results for point clouds of capsicum and tomato plants, scanned with a handheld device. An important outcome of the work is that sufficiently smooth leaf surfaces are generated that are amenable for droplet spreading simulations.