Contour forests: Fast multi-threaded augmented contour trees

Charles Gueunet, P. Fortin, J. Jomier
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引用次数: 41

Abstract

This paper presents a new algorithm for the fast, shared memory multi-threaded computation of contour trees on tetrahedral meshes. In contrast to previous multi-threaded algorithms, our technique computes the augmented contour tree. Such an augmentation is required to enable the full extent of contour tree based applications, including for instance data segmentation. Our approach relies on a range-driven domain partitioning. We show how to exploit such a partitioning to rapidly compute contour forests. We also show how such forests can be efficiently turned into the output contour tree. We report performance numbers that compare our approach to a reference sequential implementation for the computation of augmented contour trees. These experiments demonstrate the run-time efficiency of our approach. We demonstrate the utility of our approach with several data segmentation tasks. We also provide a lightweight VTK-based C++ implementation of our approach for reproduction purposes.
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轮廓森林:快速多线程增强轮廓树
提出了一种快速、共享内存的四面体网格轮廓树多线程计算算法。与以前的多线程算法相比,我们的技术计算增强轮廓树。这样的增强是实现基于轮廓树的应用的全部范围所必需的,包括例如数据分割。我们的方法依赖于范围驱动的域划分。我们展示了如何利用这种划分来快速计算轮廓森林。我们还展示了如何将这样的森林有效地转化为输出轮廓树。我们报告了将我们的方法与用于增强轮廓树计算的参考顺序实现进行比较的性能数字。这些实验证明了我们的方法在运行时的效率。我们通过几个数据分割任务演示了我们的方法的实用性。我们还为我们的方法提供了一个轻量级的基于vtc的c++实现,用于复制目的。
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Statistical projections for multi-dimensional visual data exploration Contour forests: Fast multi-threaded augmented contour trees Parallel peak pruning for scalable SMP contour tree computation Formal evaluation strategies for feature tracking In situ generated probability distribution functions for interactive post hoc visualization and analysis
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