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P2MAT-NET: Learning medial axis transform from sparse point clouds

机译:p2mat-net:学习内侧轴从稀疏点云变换

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摘要

The medial axis transform (MAT) of a 3D shape includes the set of centers and radii of the maximally inscribed spheres, and is a complete shape descriptor that can be used to reconstruct the original shape. It is a compact representation that jointly describes geometry, topology, and symmetry properties of a given shape. In this work, we present P2MAT-NET, a neural network which learns the pattern of sparse point clouds and transform them into spheres approximating MAT. The experimental results illustrate that P2MAT-NET demonstrates better performance than state-of-the-art methods in computing MAT from point clouds, in terms of MAT quality to approximate the 3D shapes. The computed MAT can be used as an intermediate descriptor for downstream applications such as 3D shape recognition from point clouds. Our results show that it can achieve competitive performance in recognition with state-of-the-art methods.
机译:3D形状的内侧轴变换(垫)包括最大铭刻球的一组中心和半径,并且是一种完整的形状描述符,可用于重建原始形状。它是一个紧凑的表示,其共同描述给定形状的几何形状,拓扑和对称性。在这项工作中,我们呈现P2MAT-Net,一个神经网络,该神经网络学习稀疏点云的模式,并将它们转变为近似垫的球体。实验结果说明P2MAT-NET在从点云中计算垫子的最先进的方法表明了更好的性能,就垫材质量来近似3D形状。计算的垫可以用作来自点云的3D形状识别的下游应用的中间描述符。我们的结果表明,它可以实现最先进的方法认可的竞争性能。

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