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ONR MURI Presentation Computer Vision Research

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UCB: Jitendra Malik, Paul Debevec et al. The Capture Problem. Urban geometry. Appearance data ... How can we import 3D scene data quickly and automatically? ... – PowerPoint PPT presentation

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Title: ONR MURI Presentation Computer Vision Research


1
ONR / MURI PresentationComputer Vision Research
  • MIT Seth Teller et al.
  • UCB Jitendra Malik, Paul Debevec et al.

2
The Capture Problem
  • Urban geometry
  • Appearance data
  • Reillumination info

Develop effectivesensors, automatedand
semi-automatedsoftware tools for rapid
environment capture
How can we import 3D scene data quickly and
automatically? Starting point for
visualization, design, simulation, teaching.
3
Toward Automated Site Modeling
  • Synergistic MIT/UCB efforts

3) Geometry, reflectance estimated
combinatorially, and with robust statistics
1) Many geo-located images acquired
2) Images are spatially indexed
4
Scientific Issues
  • Capture urban exteriors (built structure
    foliage)
  • Acquire images near-ground, inside scene
  • Generate accurate camera pose estimates
  • Reduce/eliminate load on human in the loop
  • Develop (semi)-automated optimization schemes

5
Challenges (Research/Engineering/Systems)
  • Robust instrumentation for absolute geolocation
  • Effective optimization schemes for pose,
    structure
  • Sparse/dense correspondence algorithms
  • Incremental/multiresolution reconstruction
  • Scaleability in of images, output features
  • Estimation of surface appearance (texture, BRDF)
  • System assessment (speed, error, cost)

6
Technical Approach
  • MIT
  • Geo-located camera (earth coordinates)
  • Acquire thousands of digital images
  • Structure, texture estimated automatically
  • UCB
  • Paul ...
  • Synergies/Complementarities
  • Appearance estimation (BRDFs, sky models)
  • Cost, throughput, error assessments

7
Preliminary results
MIT
Prototype sensor 4,000 images 1
CPU-day Textured CAD model
UCB
8
Next steps / success
Capture MIT Campus (200 structures) from 1 Tb
of ground, 1 Tb of aerial imagery
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