Interactive Multiscale Tensor Reconstruction for Multiresolution Volume Visualization

  • Authors:
  • Susanne K. Suter;Jose A. Iglesias Guitian;Fabio Marton;Marco Agus;Andreas Elsener;Christoph P. E. Zollikofer;M. Gopi;Enrico Gobbetti;Renato Pajarola

  • Affiliations:
  • University of Zurich, Switzerland;CRS4, Italy;CRS4, Italy;CRS4, Italy;University of Zurich, Switzerland;University of Zurich, Switzerland;University of California, Irvine, USA;CRS4, Italy;University of Zurich, Switzerland

  • Venue:
  • IEEE Transactions on Visualization and Computer Graphics
  • Year:
  • 2011

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Abstract

Large scale and structurally complex volume datasets from high-resolution 3D imaging devices or computational simulations pose a number of technical challenges for interactive visual analysis. In this paper, we present the first integration of a multiscale volume representation based on tensor approximation within a GPU-accelerated out-of-core multiresolution rendering framework. Specific contributions include (a) a hierarchical brick-tensor decomposition approach for pre-processing large volume data, (b) a GPU accelerated tensor reconstruction implementation exploiting CUDA capabilities, and (c) an effective tensor-specific quantization strategy for reducing data transfer bandwidth and out-of-core memory footprint. Our multiscale representation allows for the extraction, analysis and display of structural features at variable spatial scales, while adaptive level-of-detail rendering methods make it possible to interactively explore large datasets within a constrained memory footprint. The quality and performance of our prototype system is evaluated on large structurally complex datasets, including gigabyte-sized micro-tomographic volumes.