Focus of Attention for Volumetric Data Inspection

Preview:

DESCRIPTION

Focus of Attention for Volumetric Data Inspection . Ivan Viola 1 , Miquel Feixas 2 , Mateu Sbert 2 , and Meister Eduard Gr öller 1. 1 Institute of Computer Graphics and Algorithms Vienna University of Technology. 2 Institute of Informatics and Applications University of Girona. Goal. - PowerPoint PPT Presentation

Citation preview

Focus of Attention for Volumetric Data Inspection

Ivan Viola1, Miquel Feixas2,Mateu Sbert2, and Meister Eduard Gröller1

1 Institute of Computer Graphics and Algorithms

Vienna University of Technology

2 Institute of Informatics and Applications

University of Girona

I. Viola, M. Feixas, M. Sbert, and M. E. Gröller 2

Goal

Input: known and classified volumetric dataHigh level request: show me feature XOutput: visually pleasing focusing at X

I. Viola, M. Feixas, M. Sbert, and M. E. Gröller 3

Focusing Considerations

Focus discrimination Characteristic viewpointSmart focusing approach

I. Viola, M. Feixas, M. Sbert, and M. E. Gröller 4

Visual Focus Discrimination

Levels of sparsenessDense for focus to visually pop-outSparse for context visually suppressed

Cut-aways to unveil internal features

vessels

intestinekidneys

I. Viola, M. Feixas, M. Sbert, and M. E. Gröller 5

Estimation of Characteristic Viewpoints

o2 o3o1

importance distribution

o1

o2

o3

object selection by user v1

v2

v3

o1

o2

o3

visibility estimationimage-space weight

p(v1)

p(vn)

p(o1|v1)

p(om|vn)

p(o1) p(om)

...

I(vi,O) = p(oj|vi) logΣj

m p(oj|vi)p(oj)

...

...

information-theoretic frameworkfor optimal viewpoint estimation

I. Viola, M. Feixas, M. Sbert, and M. E. Gröller 6

Guided Navigation

Focusing at feature XDiscrimination of X from contextChange to a characteristic viewpoint of X

Refocusing from feature X to feature YDe-emphasis of feature XEmphasis of feature YChange to general characteristic viewpointChange to characteristic viewpoint of Y

I. Viola, M. Feixas, M. Sbert, and M. E. Gröller 7

Refocusing

o1 o2

o3

vc

v1 v2

o1 o2

I. Viola, M. Feixas, M. Sbert, and M. E. Gröller 8

Refocusing

I. Viola, M. Feixas, M. Sbert, and M. E. Gröller 9

Conclusions

Often no need to have all degrees of freedomUsers need smart tools

One image is more than thousands wordsVisual story says more than thousand images

I. Viola, M. Feixas, M. Sbert, and M. E. Gröller 10

Proof

Any Questions?

Thank you for your attention!Any Questions?

Recommended