This paper explores the use of multi-dimensional trees to provide spatial and temporal efficiencies in imaging large data sets. Each node of the tree contains a model of the data in terms of a fixed number of basis functions, a measure of the error in that model, and a measure of the importance of the data in the region covered by the node. A divide-and-conquer algorithm permits efficient computation of these quantities at all nodes of the tree. The flexible design permits various sets of basis functions, error criteria, and importance criteria to be implemented easily. Selective traversal of the tree provides images in acceptable time, by drawing nodes that cover a large volume as single objects when the approximation error and/or importan...
We introduce a parallel, distributed memory algorithm for volume rendering massive data sets. The al...
International audienceProgressive mesh compression techniques have reached very high compression rat...
The authors present an application-driven approach to compressing large-scale time-varying volume da...
This paper explores the use of multi-dimensional trees to provide spatial and temporal eÆciencies in...
Trees can be realistically rendered in synthetic environments by creating volumetric representations...
When working with volume data such as CT or MRI scans of the human body, it is often challenging to ...
We present a new parallel multiresolution volume rendering algorithm for visualizing large data sets...
This thesis is concerned with improvements to algorithms for volume rendering; a technique that pro...
With advances in imaging and communication systems, there is increased use of multi-dimensional imag...
There is a need to visualize multi-billion voxel data sets. Hardware accelerated rendering currently...
International audienceWith the continuous growth of sensor performances , image analysis and process...
Visualization of time-varying volumetric data sets, which may be obtained from numerical simulations...
Image representation plays an important role in image processing applications, which usually. contai...
For types of data visualization where the cost of producing images is high, and the relationship bet...
We present a new parallel multiresolution volume rendering algorithm for visual-izing large data set...
We introduce a parallel, distributed memory algorithm for volume rendering massive data sets. The al...
International audienceProgressive mesh compression techniques have reached very high compression rat...
The authors present an application-driven approach to compressing large-scale time-varying volume da...
This paper explores the use of multi-dimensional trees to provide spatial and temporal eÆciencies in...
Trees can be realistically rendered in synthetic environments by creating volumetric representations...
When working with volume data such as CT or MRI scans of the human body, it is often challenging to ...
We present a new parallel multiresolution volume rendering algorithm for visualizing large data sets...
This thesis is concerned with improvements to algorithms for volume rendering; a technique that pro...
With advances in imaging and communication systems, there is increased use of multi-dimensional imag...
There is a need to visualize multi-billion voxel data sets. Hardware accelerated rendering currently...
International audienceWith the continuous growth of sensor performances , image analysis and process...
Visualization of time-varying volumetric data sets, which may be obtained from numerical simulations...
Image representation plays an important role in image processing applications, which usually. contai...
For types of data visualization where the cost of producing images is high, and the relationship bet...
We present a new parallel multiresolution volume rendering algorithm for visual-izing large data set...
We introduce a parallel, distributed memory algorithm for volume rendering massive data sets. The al...
International audienceProgressive mesh compression techniques have reached very high compression rat...
The authors present an application-driven approach to compressing large-scale time-varying volume da...