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Scalable Point Cloud-based Reconstruction with Local Implicit Functions

机译:基于点云的可扩展点云函数重建

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Surface reconstruction from point clouds has been a well-studied research topic with applications in computer vision and computer graphics. Recently, several learning based methods were proposed for 3D shape representation through implicit functions which among others can be used for point cloud-based reconstruction. Although delivering compelling results for synthetic object datasets of overseeable size, they fail to represent larger scenes accurately, presumably due to the use of only one global latent code for encoding an entire scene or object. We propose to encode only parts of objects with features attached to unstructured point clouds. To this end we use a hierarchical feature map in 3D space, extracted from the input point clouds, with which local latent shape encodings can be queried at arbitrary positions. We use a permutohedral lattice to process the hierarchical feature maps sparsely and efficiently. This enables accurate and detailed point cloud-based reconstructions for large amounts of points in a time-efficient manner, showing good generalization capabilities across different datasets. Experiments on synthetic and real world datasets demonstrate the reconstruction capability of our method and compare favorably to state-of-the-art methods.
机译:点云的表面重建是一个研究的研究主题,具有计算机视觉和计算机图形的应用。最近,通过隐式功能提出了几种基于学习的方法,其中包括基于点云的重建。虽然为Overseable大小的综合对象数据集提供了令人信服的结果,但它们无法准确地代表较大的场景,可能是由于仅使用用于编码整个场景或对象的一个​​全局潜在代码。我们建议仅通过附加到非结构化点云的功能编码对象的部分。为此,我们使用3D空间中的分层特征映射,从输入点云中提取,可以在任意位置查询本地潜在的形状编码。我们使用PermutoheDral格子稀疏,有效地处理分层特征图。这使得能够以较效的方式为大量点进行准确且详细的基于点云的重建,在不同数据集中显示出良好的泛化能力。合成和现实世界数据集的实验证明了我们方法的重建能力,并对最先进的方法进行了比较。

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