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A memory insensitive technique for large model simplification

机译:大型模型简化的内存不敏感技术

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In this paper we propose three simple, but significant improvements to the OoCS (Out-of-Core Simplification) algorithm of Lind-strom [20] which increase the quality of approximations and extend the applicability of the algorithm to an even larger class of compute systems. The original OoCS algorithm has memory complexity that depends on the size of the output mesh, but no dependency on the size of the input mesh. That is, it can be used to simplify meshes of arbitrarily large size, but the complexity of the output mesh is limited by the amount of memory available. Our first contribution is a version of OoCS that removes the dependency of having enough memory to hold (even) the simplified mesh. With our new algorithm, the whole process is made essentially independent of the available memory on the host computer. Our new technique uses disk instead of main memory, but it is carefully designed to avoid costly random accesses. Our two other contributions improve the quality of the approximations generated by OoCS. We propose a scheme for preserving surface boundaries which does not use connectivity information, and a scheme for constraining the position of the "representative vertex" of a grid cell to an optimal position inside the cell.
机译:在本文中,我们提出了三种简单但显着的改进Lind-Strom [20],这增加了近似质量并将算法的适用性扩展到更大类别的计算系统。原始OOCS算法具有内存复杂度,其取决于输出网格的大小,但没有对输入网格的大小的依赖性。也就是说,它可以用于简化任意大尺寸的网格,但输出网格的复杂性受到可用的内存量的限制。我们的第一个贡献是OOC的版本,用于删除具有足够存储器的依赖性,以保持(甚至)简化的网格。通过我们的新算法,整个过程基本上独立于主机上的可用内存。我们的新技术使用磁盘而不是主内存,但仔细旨在避免昂贵的随机访问。我们的另外两项贡献提高了OOC生成的近似值的质量。我们提出了一种保护不使用连接信息的表面边界的方案,以及用于将网格单元的“代表顶点”的位置约束到电池内的最佳位置的方案。

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