Affiliation:
1. University of Strasbourg France
2. University of Cologne Germany
3. Bilkent University Ankara Turkey
4. University of Reims Champagne‐Ardenne France
5. NVIDIA
Abstract
AbstractVolume data these days is usually massive in terms of its topology, multiple fields, or temporal component. With the gap between compute and memory performance widening, the memory subsystem becomes the primary bottleneck for scientific volume visualization. Simple, structured, regular representations are often infeasible because the buses and interconnects involved need to accommodate the data required for interactive rendering. In this state‐of‐the‐art report, we review works focusing on large‐scale volume rendering beyond those typical structured and regular grid representations. We focus primarily on hierarchical and adaptive mesh refinement representations, unstructured meshes, and compressed representations that gained recent popularity. We review works that approach this kind of data using strategies such as out‐of‐core rendering, massive parallelism, and other strategies to cope with the sheer size of the ever‐increasing volume of data produced by today's supercomputers and acquisition devices. We emphasize the data management side of large‐scale volume rendering systems and also include a review of tools that support the various volume data types discussed.
Funder
Deutsche Forschungsgemeinschaft
Agence Nationale de la Recherche
Subject
Computer Graphics and Computer-Aided Design
Reference138 articles.
1. Advanced Micro Devices Inc.:Vulkan® ray tracing extension support in our latest AMD Radeon™ Adrenalin driver 20.11.3 2023. Available athttps://gpuopen.com/vulkan‐ray‐tracing‐extensions/ Accessed: 6 February 2023. 4
2. AMReXTeam:AMReX Adaptive Mesh Refinement Framework.https://amrex‐codes.github.io/amrex/ 2018. Accessed: 7 February 2023. 2
3. AmstutzJ.:VisRTX 2019. Available athttps://github.com/NVIDIA/VisRTX Accessed: 7 February2023. 2 17 18
4. Local adaptive mesh refinement for shock hydrodynamics
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