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Parallel processing of range data merging

机译:范围数据合并的并行处理

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This paper describes a volumetric view-merging algorithm that generates a consensus surface of an object from its range images. Our original method merges a set of range images into a volumetric implicit-surface representation, which is converted to a surface mesh by using a variant of the marching-cubes algorithm. We propose a method that increases the computation and memory efficiency for computing signed distances and the method of parallel computing on a PC cluster Since our method permits a reduction in the data amount allocated in memory, the closest point is searched efficiently; this allows us to increase the number of parallel traversals and to reduce the computation time. In this paper, we describe the following two algorithms which are complementary in terms of the efficiency of CPU and memory usage: distributed allocation of range data and parallel traversal of partial octrees. By adjusting them according to the system specifications, we can build the model efficiently by a PC cluster We have implemented this system and evaluated its performance.
机译:本文介绍了一种体积视图合并算法,该算法从对象的距离图像生成对象的共识表面。我们的原始方法将一组距离图像合并到一个体积隐式表面表示中,该图像通过使用Marching-Cubes算法的变体转换为表面网格。我们提出了一种提高计算符号距离的计算和存储效率的方法,以及一种在PC群集上并行计算的方法。这使我们可以增加并行遍历的数量并减少计算时间。在本文中,我们描述以下两种算法,它们在CPU和内存使用效率方面是互补的:范围数据的分布式分配和部分八叉树的并行遍历。通过根据系统规范对其进行调整,我们可以通过PC集群高效地构建模型。我们已经实现了该系统并评估了其性能。

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