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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Parallel and Scalable Heat Methods for Geodesic Distance Computation
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Parallel and Scalable Heat Methods for Geodesic Distance Computation

机译:测地距离计算的平行和可伸缩热方法

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In this paper, we propose a parallel and scalable approach for geodesic distance computation on triangle meshes. Our key observation is that the recovery of geodesic distance with the heat method [1] can be reformulated as optimization of its gradients subject to integrability, which can be solved using an efficient first-order method that requires no linear system solving and converges quickly. Afterward, the geodesic distance is efficiently recovered by parallel integration of the optimized gradients in breadth-first order. Moreover, we employ a similar breadth-first strategy to derive a parallel Gauss-Seidel solver for the diffusion step in the heat method. To further lower the memory consumption from gradient optimization on faces, we also propose a formulation that optimizes the projected gradients on edges, which reduces the memory footprint by about 50 percent. Our approach is trivially parallelizable, with a low memory footprint that grows linearly with respect to the model size. This makes it particularly suitable for handling large models. Experimental results show that it can efficiently compute geodesic distance on meshes with more than 200 million vertices on a desktop PC with 128 GB RAM, outperforming the original heat method and other state-of-the-art geodesic distance solvers.
机译:在本文中,我们提出了一种平行和可扩展的三角形网格距离计算方法。我们的关键观察是,与热法[1]的测量距离的恢复可以重新重新重新重整,因为它的梯度优化,其可以使用可用性的有效的一阶方法来解决,该方法不需要线性系统求解并快速收敛。之后,通过以宽度第一顺序平行集成优化梯度的平行积分有效地回收测地距离。此外,我们采用类似的宽度第一策略来得出用于在热法中的扩散步骤的平行高斯-Seidel求解器。为了进一步降低脸上的梯度优化的内存消耗,我们还提出了一种优化边缘上投影梯度的制定,这将内存占用量降低了大约50%。我们的方法是琐碎的,具有低的内存占地面积,其相对于模型大小线性地增长。这使得它特别适合处理大型型号。实验结果表明,它可以有效地计算在具有128 GB RAM的台式PC上有超过2亿顶点的网格上的测量距离,优于原始热法和其他最先进的测地距离求解器。

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