Image-based Exploration of Large-Scale Pathline Fields
While real-time applications are nowadays routinely used in visualizing large nu- merical simulations and volumes, handling these large-scale datasets requires high-end graphics clusters or supercomputers to process and visualize them. However, not all users have access to powerful clusters. Therefo...
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ndltd-kaust.edu.sa-oai-repository.kaust.edu.sa-10754-3210002020-12-08T05:08:58Z Image-based Exploration of Large-Scale Pathline Fields Nagoor, Omniah H. Hadwiger, Markus Computer, Electrical and Mathematical Sciences and Engineering (CEMSE) Division Hadwiger, Markus Heidrich, Wolfgang Moshkov, Mikhail image-based per-pixel linked list pathlines fields explorable images deferred shading early-ray termination While real-time applications are nowadays routinely used in visualizing large nu- merical simulations and volumes, handling these large-scale datasets requires high-end graphics clusters or supercomputers to process and visualize them. However, not all users have access to powerful clusters. Therefore, it is challenging to come up with a visualization approach that provides insight to large-scale datasets on a single com- puter. Explorable images (EI) is one of the methods that allows users to handle large data on a single workstation. Although it is a view-dependent method, it combines both exploration and modification of visual aspects without re-accessing the original huge data. In this thesis, we propose a novel image-based method that applies the concept of EI in visualizing large flow-field pathlines data. The goal of our work is to provide an optimized image-based method, which scales well with the dataset size. Our approach is based on constructing a per-pixel linked list data structure in which each pixel contains a list of pathlines segments. With this view-dependent method it is possible to filter, color-code and explore large-scale flow data in real-time. In addition, optimization techniques such as early-ray termination and deferred shading are applied, which further improves the performance and scalability of our approach. 2014-06-11T22:07:47Z 2014-06-11T22:07:47Z 2014-05-27 Thesis 10.25781/KAUST-J05A1 http://hdl.handle.net/10754/321000 en |
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image-based per-pixel linked list pathlines fields explorable images deferred shading early-ray termination |
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image-based per-pixel linked list pathlines fields explorable images deferred shading early-ray termination Nagoor, Omniah H. Image-based Exploration of Large-Scale Pathline Fields |
description |
While real-time applications are nowadays routinely used in visualizing large nu- merical simulations and volumes, handling these large-scale datasets requires high-end graphics clusters or supercomputers to process and visualize them. However, not all users have access to powerful clusters. Therefore, it is challenging to come up with a visualization approach that provides insight to large-scale datasets on a single com- puter. Explorable images (EI) is one of the methods that allows users to handle large data on a single workstation. Although it is a view-dependent method, it combines both exploration and modification of visual aspects without re-accessing the original huge data. In this thesis, we propose a novel image-based method that applies the concept of EI in visualizing large flow-field pathlines data. The goal of our work is to provide an optimized image-based method, which scales well with the dataset size. Our approach is based on constructing a per-pixel linked list data structure in which each pixel contains a list of pathlines segments. With this view-dependent method it is possible to filter, color-code and explore large-scale flow data in real-time. In addition, optimization techniques such as early-ray termination and deferred shading are applied, which further improves the performance and scalability of our approach. |
author2 |
Hadwiger, Markus |
author_facet |
Hadwiger, Markus Nagoor, Omniah H. |
author |
Nagoor, Omniah H. |
author_sort |
Nagoor, Omniah H. |
title |
Image-based Exploration of Large-Scale Pathline Fields |
title_short |
Image-based Exploration of Large-Scale Pathline Fields |
title_full |
Image-based Exploration of Large-Scale Pathline Fields |
title_fullStr |
Image-based Exploration of Large-Scale Pathline Fields |
title_full_unstemmed |
Image-based Exploration of Large-Scale Pathline Fields |
title_sort |
image-based exploration of large-scale pathline fields |
publishDate |
2014 |
url |
http://hdl.handle.net/10754/321000 |
work_keys_str_mv |
AT nagooromniahh imagebasedexplorationoflargescalepathlinefields |
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1719368482669199360 |