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Inference of surfaces, 3D curves, and junctions from sparse, noisy, 3D data

机译:根据稀疏,嘈杂的3D数据推断曲面,3D曲线和交点

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We address the problem of obtaining dense surface information from a sparse set of 3D data in the presence of spurious noise samples. The input can be in the form of points, or points with an associated tangent or normal, allowing both position and direction to be corrupted by noise. Most approaches treat the problem as an interpolation problem, which is solved by fitting a surface such as a membrane or thin plate to minimize some function. We argue that these physical constraints are not sufficient, and propose to impose additional perceptual constraints such as good continuity and "cosurfacity". These constraints allow us to not only infer surfaces, but also to detect surface orientation discontinuities, as well as junctions, all at the same time. The approach imposes no restriction on genus, number of discontinuities, number of objects, and is noniterative. The result is in the form of three dense saliency maps for surfaces, intersections between surfaces (i.e., 3D curves), and 3D junctions, respectively. These saliency maps are then used to guide a "marching" process to generate a description (e.g., a triangulated mesh) making information about surfaces, space curves, and 3D junctions explicit. The traditional marching process needs to be refined as the polarity of the surface orientation is not necessarily locally consistent. These three maps are currently not integrated, and this is the topic of our ongoing research. We present results on a variety of computer-generated and real data, having varying curvature, of different genus, and multiple objects.
机译:我们解决了在存在杂散噪声样本的情况下从稀疏的3D数据集中获取密集的表面信息的问题。输入可以是点的形式,也可以是具有相关切线或法线的点的形式,从而允许位置和方向都被噪声破坏。大多数方法将问题视为插值问题,可通过安装诸如薄膜或薄板之类的表面以最小化某些功能来解决。我们认为这些物理约束是不够的,并建议施加其他感知约束,例如良好的连续性和“共同性”。这些约束条件使我们不仅可以推断表面,还可以同时检测表面方向的不连续性和接合处。该方法对属,不连续数,对象数没有任何限制,并且是非迭代的。结果是以三个密集的显着性贴图的形式,分别是表面,表面之间的相交点(即3D曲线)和3D结点。然后,将这些显着性图用于指导“行进”过程以生成描述(例如,三角剖分的网格),以使有关表面,空间曲线和3D结点的信息明确。传统的行进过程需要改进,因为表面方向的极性不一定局部一致。这三个地图目前尚未集成,这是我们正在进行的研究的主题。我们介绍了各种计算机生成的真实数据的结果,这些数据具有不同的曲率,不同的属和多个对象。

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