Physically-Motivated Learning of Shape, Material and Lighting in Complex Scenes

Physically-Motivated Learning of Shape, Material and Lighting in Complex Scenes

Andreas Geiger via YouTube Direct link

Intro

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1 of 40

Intro

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Classroom Contents

Physically-Motivated Learning of Shape, Material and Lighting in Complex Scenes

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  1. 1 Intro
  2. 2 Image Formation is a Complex Process
  3. 3 Component Problems of Inverse Rendering
  4. 4 Ambiguities of Inverse Rendering
  5. 5 Approaches to Inverse Rendering
  6. 6 A Canonical Challenge in Inverse Rendering
  7. 7 Outline
  8. 8 Image Formation: Rendering Equation
  9. 9 Background: BRDF
  10. 10 Background: Lighting
  11. 11 Large-Scale Dataset of Complex Materials
  12. 12 Physically-Based Rendering Layer
  13. 13 An Example
  14. 14 Comparison with Other Methods
  15. 15 Generalization to Real Data
  16. 16 Single Image Inverse Rendering
  17. 17 Physically Motivated Network: Rendering Layer
  18. 18 Synthetic Experiment: Global Illumination
  19. 19 Physically Motivated Network: Cascade Structure
  20. 20 Example: Cascade Structure
  21. 21 Example: Shape and Material Estimation
  22. 22 Example: View Synthesis
  23. 23 High-Quality, Photorealistic Augmented Reality
  24. 24 Key New Challenge: Spatially-Varying Lighting
  25. 25 Lighting Estimation Methods
  26. 26 Inverse Rendering in Indoor Scenes: Challenges
  27. 27 Ground Truth for Inverse Rendering Is Non-Trivial
  28. 28 Comparisons of Rendered Images
  29. 29 Compact and Effective Physical Lighting Representation
  30. 30 Spatially Varying Lighting Estimation: Representation
  31. 31 Physically-Motivated Network for Indoor Scenes
  32. 32 Spatially Varying Lighting Estimation: Results
  33. 33 Inverse Rendering in Real Indoor Scenes
  34. 34 Inverse Rendering: Quantitative Results
  35. 35 Object Insertion with Single Unconstrained Image
  36. 36 Object Insertion: User Studies
  37. 37 Material Editing with Single Unconstrained Image
  38. 38 Lightweight Acquisition with a Mobile Phone Camera
  39. 39 Physically-Motivated Deep Network
  40. 40 Conclusions

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