We have developed a novel hierarchical data structure for the efficient rep-resentation of sparse, time-varying volumetric data discretized on a 3D grid. Our “VDB”, so named because it is a Volumetric, Dynamic grid that shares several characteristics with B+trees, exploits spatial coherency of time-varying data to separately and compactly encode data values and grid topology. VDB models a virtually infinite 3D index space that allows for cache-coherent and fast data access into sparse volumes of high resolution. It imposes no topology restrictions on the sparsity of the volumetric data, and it supports fast (average O(1)) random access patterns when the data are inserted, retrieved, or deleted. This is in contrast to most existing sparse vo...
While k-d trees are known to be effective for spatial indexing of sparse 3-d volume data, full recon...
Abstract—Volumetric datasets with multiple variables on each voxel over multiple time steps are ofte...
International audienceThis paper describes a new scalable, reliable and consistent structure for imp...
In this study, we introduce new algorithms for efficient function representation (F-rep) based geome...
Journal ArticleIn order to interactively investigate large-scale 3D data sets, we propose an improve...
This thesis investigates a memory-efficient representation of highly detailed geometry in 3D voxel g...
Figure 1: Smoke flow past sphere with 135M active voxels, 1K×1K×2K maximum resolution. Adaptive grid...
These days sparse grids are of increasing interest in numerical simulations. Based upon hierarchical...
We introduce a parallel, distributed memory algorithm for volume rendering massive data sets. The al...
this paper is to present two major visualization algorithms working directly on the sparse grid repr...
Volume visualization with random data access poses significant challenges. While tiling techniques l...
In this thesis, we address the problem of large-scale data visualization from two aspects, dimension...
We present a scalable volume rendering technique that exploits lossy compression and low-cost commod...
Voxel-based data structures, algorithms, frameworks, and interfaces have been used in computer graph...
Abstract—Sparse volume data structures enable the efficient representation of large but sparse volum...
While k-d trees are known to be effective for spatial indexing of sparse 3-d volume data, full recon...
Abstract—Volumetric datasets with multiple variables on each voxel over multiple time steps are ofte...
International audienceThis paper describes a new scalable, reliable and consistent structure for imp...
In this study, we introduce new algorithms for efficient function representation (F-rep) based geome...
Journal ArticleIn order to interactively investigate large-scale 3D data sets, we propose an improve...
This thesis investigates a memory-efficient representation of highly detailed geometry in 3D voxel g...
Figure 1: Smoke flow past sphere with 135M active voxels, 1K×1K×2K maximum resolution. Adaptive grid...
These days sparse grids are of increasing interest in numerical simulations. Based upon hierarchical...
We introduce a parallel, distributed memory algorithm for volume rendering massive data sets. The al...
this paper is to present two major visualization algorithms working directly on the sparse grid repr...
Volume visualization with random data access poses significant challenges. While tiling techniques l...
In this thesis, we address the problem of large-scale data visualization from two aspects, dimension...
We present a scalable volume rendering technique that exploits lossy compression and low-cost commod...
Voxel-based data structures, algorithms, frameworks, and interfaces have been used in computer graph...
Abstract—Sparse volume data structures enable the efficient representation of large but sparse volum...
While k-d trees are known to be effective for spatial indexing of sparse 3-d volume data, full recon...
Abstract—Volumetric datasets with multiple variables on each voxel over multiple time steps are ofte...
International audienceThis paper describes a new scalable, reliable and consistent structure for imp...