2012
DOI: 10.1111/j.1467-8659.2012.03099.x
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Visualization of 4D Blood‐Flow Fields by Spatiotemporal Hierarchical Clustering

Abstract: Advancements in the acquisition and modeling of flow fields result in unsteady volumetric flow fields of unprecedented quality. An important example is found in the analysis of unsteady blood-flow data. Preclinical research strives for a better understanding of correlations between the hemodynamics and the progression of cardiovascular diseases. Modern-day computer models and MRI acquisition provide time-resolved volumetric blood-flow velocity fields. Unfortunately, these fields often remain unexplored, as hig… Show more

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Cited by 34 publications
(13 citation statements)
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“…Salzbrunn et al [22] added the class of partition-based techniques, which decompose a flow field based on vector values, integral curve properties or topological features. Blood flow clustering based on vector values has been presented in the context of cardiac blood flow [23]. However, we follow the arguments in [10] and advocate the use of integral curves since they represent continuous flow patterns traced over the domain instead of a very local vectorial flow information.…”
Section: Related Work On Partition-based Flow Visualizationmentioning
confidence: 99%
“…Salzbrunn et al [22] added the class of partition-based techniques, which decompose a flow field based on vector values, integral curve properties or topological features. Blood flow clustering based on vector values has been presented in the context of cardiac blood flow [23]. However, we follow the arguments in [10] and advocate the use of integral curves since they represent continuous flow patterns traced over the domain instead of a very local vectorial flow information.…”
Section: Related Work On Partition-based Flow Visualizationmentioning
confidence: 99%
“…Others employ local vectors [47] or aneurysm wall properties [14,18,30]. As argued in [50], we favor integral curves over local flow information since they represent continuous flow patterns traced over the entire domain.…”
Section: Partition-based Visualization Of Blood Flowmentioning
confidence: 99%
“…The depth perception is enhanced through local shadows and distance-dependent desaturation. Van Pelt et al [VPJtHRV12] coupled these techniques with a comic style rendering of the back faces [vPBB*10] for an investigation of the flow in the great heart vessels. Saalfeld et al [SSPOJ16] employed a physically based transparency shading that combines energy conservation with view-dependent transparency to increase visual realism and subsequently support depth perception.…”
Section: Near Contextmentioning
confidence: 99%