Shape-based Transfer Functions for Volume Visualization
We present a novel classification technique for volume visualization that takes the shape of volumetric features into account. The presented technique enables the user to distinguish features based on their 3D shape and to assign individual optical properties to these. Based on a rough pre-segmentat...
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University of Münster, Germany
2010
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ndltd-UPSALLA1-oai-DiVA.org-liu-930392013-06-05T05:37:43ZShape-based Transfer Functions for Volume VisualizationengPraßni, Jörg-StefanRopinski, TimoMensmann, JörgHinrichs, KlausUniversity of Münster, GermanyUniversity of Münster, GermanyUniversity of Münster, GermanyUniversity of Münster, GermanyIEEE2010We present a novel classification technique for volume visualization that takes the shape of volumetric features into account. The presented technique enables the user to distinguish features based on their 3D shape and to assign individual optical properties to these. Based on a rough pre-segmentation that can be done by windowing, we exploit the curve-skeleton of each volumetric structure in order to derive a shape descriptor similar to those used in current shape recognition algorithms. The shape descriptor distinguishes three main shape classes: longitudinal, surface-like, and blobby shapes. In contrast to previous approaches, the classification is not performed on a per-voxel level but assigns a uniform shape descriptor to each feature and therefore allows a more intuitive user interface for the assignment of optical properties. By using the proposed technique, it becomes for instance possible to distinguish blobby heart structures filled with contrast agents from potentially occluding vessels and rib bones. After introducing the basic concepts, we show how the presented technique performs on real world data, and we discuss current limitations. Conference paperinfo:eu-repo/semantics/conferenceObjecttexthttp://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-93039urn:isbn:e-978-1-4244-6686-3urn:isbn:978-1-4244-6685-6doi:10.1109/PACIFICVIS.2010.5429624Pacific Visualization Symposium (PacificVis), 2010 IEEE, p. 9-16application/pdfinfo:eu-repo/semantics/openAccess |
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English |
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Others
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NDLTD |
description |
We present a novel classification technique for volume visualization that takes the shape of volumetric features into account. The presented technique enables the user to distinguish features based on their 3D shape and to assign individual optical properties to these. Based on a rough pre-segmentation that can be done by windowing, we exploit the curve-skeleton of each volumetric structure in order to derive a shape descriptor similar to those used in current shape recognition algorithms. The shape descriptor distinguishes three main shape classes: longitudinal, surface-like, and blobby shapes. In contrast to previous approaches, the classification is not performed on a per-voxel level but assigns a uniform shape descriptor to each feature and therefore allows a more intuitive user interface for the assignment of optical properties. By using the proposed technique, it becomes for instance possible to distinguish blobby heart structures filled with contrast agents from potentially occluding vessels and rib bones. After introducing the basic concepts, we show how the presented technique performs on real world data, and we discuss current limitations. |
author |
Praßni, Jörg-Stefan Ropinski, Timo Mensmann, Jörg Hinrichs, Klaus |
spellingShingle |
Praßni, Jörg-Stefan Ropinski, Timo Mensmann, Jörg Hinrichs, Klaus Shape-based Transfer Functions for Volume Visualization |
author_facet |
Praßni, Jörg-Stefan Ropinski, Timo Mensmann, Jörg Hinrichs, Klaus |
author_sort |
Praßni, Jörg-Stefan |
title |
Shape-based Transfer Functions for Volume Visualization |
title_short |
Shape-based Transfer Functions for Volume Visualization |
title_full |
Shape-based Transfer Functions for Volume Visualization |
title_fullStr |
Shape-based Transfer Functions for Volume Visualization |
title_full_unstemmed |
Shape-based Transfer Functions for Volume Visualization |
title_sort |
shape-based transfer functions for volume visualization |
publisher |
University of Münster, Germany |
publishDate |
2010 |
url |
http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-93039 http://nbn-resolving.de/urn:isbn:e-978-1-4244-6686-3 http://nbn-resolving.de/urn:isbn:978-1-4244-6685-6 |
work_keys_str_mv |
AT praßnijorgstefan shapebasedtransferfunctionsforvolumevisualization AT ropinskitimo shapebasedtransferfunctionsforvolumevisualization AT mensmannjorg shapebasedtransferfunctionsforvolumevisualization AT hinrichsklaus shapebasedtransferfunctionsforvolumevisualization |
_version_ |
1716588662685171712 |