Visualizing multivalued data from 2D incompressible flows using concepts from painting
VIS '99 Proceedings of the conference on Visualization '99: celebrating ten years
Octreemizer: a hierarchical approach for interactive roaming through very large volumes
VISSYM '02 Proceedings of the symposium on Data Visualisation 2002
A scientific visualization synthesizer
VIS '91 Proceedings of the 2nd conference on Visualization '91
Volumetric illustration: designing 3D models with internal textures
ACM SIGGRAPH 2004 Papers
Horizon picking in 3D seismic data volumes
Machine Vision and Applications
Generating Sub-Resolution Detail in Images and Volumes Using Constrained Texture Synthesis
VIS '04 Proceedings of the conference on Visualization '04
Volume illustration using wang cubes
ACM Transactions on Graphics (TOG)
Solid texture synthesis from 2D exemplars
ACM SIGGRAPH 2007 papers
A Decade of Increased Oil Recovery in Virtual Reality
IEEE Computer Graphics and Applications
Illustrative visualization: new technology or useless tautology?
ACM SIGGRAPH Computer Graphics
The Seismic Analyzer: Interpreting and Illustrating 2D Seismic Data
IEEE Transactions on Visualization and Computer Graphics
Visualizing multiple fields on the same surface
IEEE Computer Graphics and Applications
Sketch modeling of seismic horizons from uncertainty
Proceedings of the International Symposium on Sketch-Based Interfaces and Modeling
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We present novel techniques for knowledge-assisted annotation and computer-assisted interpretation of seismic data for oil and gas exploration. We describe the existing procedure for oil and gas search which consists of manually extracting information from seismic data and then aggregating it into knowledge in a detail-oriented bottom-up approach. We then point out the weaknesses of this approach and propose how to improve on it by introducing a holistic computer-assisted top-down approach intended as a preparation step enabling a quicker, more focused and accurate bottom-up interpretation. The top-down approach also enables early representations of hypotheses and knowledge using domain-specific textures for annotating the data. Finally we discuss how these annotations can be extended to 3D for volumetric annotations.