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Context-aware saliency

Context-aware saliency. Stas Goferman Lihi Zelnik -Manor Ayellet Tal. What is saliency?. …. Please describe this picture. Picture description. Man in a flower field In the fields Spring blossom. Please describe this picture. Picture description. Olympic weight lifter

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Context-aware saliency

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  1. Context-aware saliency StasGoferman LihiZelnik-Manor Ayellet Tal

  2. What is saliency?

  3. Please describe this picture

  4. Picture description Man in a flower field In the fields Spring blossom

  5. Please describe this picture

  6. Picture description Olympic weight lifter Olympic victory Olympic achievement

  7. Segmentation • Man in a flower field • In the fields • Spring blossom • Olympic weight lifter • Olympic victory • Olympic achievement

  8. Context-aware salient regions • Man in a flower field • In the fields • Spring blossom • Olympic weight lifter • Olympic victory • Olympic achievement

  9. Principles of saliency Following perceptual properties

  10. Principle 1 • Local low-level factors • Contrast • Color

  11. Walther & Koch – local filtering [Walther and Koch, Neural Networks 2006]

  12. Principle 1 Walther & Koch, 2006 • Local low-level factors • Contrast • Color

  13. Principle 2 • Global considerations • Maintain unique features

  14. Hou & Zhang “spectral residual” [Hou & Zhang CVPR 2007]

  15. Principle 2 Hou & Zhang, 2007 • Global considerations • Maintain unique features

  16. Principles 1 + 2 Local & global

  17. Liu et al – learning saliency Input Multi-scale contrast Center surround Color Final [Liu et al, CVPR 2007]

  18. Principles 1 + 2 Liu et al, 2007 Local & global

  19. Principle 3 • Visual organization (Gestalt) • Few centers of gravity [Koffka] • Position is important!!

  20. Principle 4 Low-level With face detection [Judd et al, ICCV 2009] • High-level • Faces • Objects • People • …

  21. Incorporating the 4 Principles Our result

  22. Global Hou & Zhang, 2007 Local Walther & Koch, 2006 Local + global Liu et al, 2007 Our result

  23. The “how” The steps of our algorithm

  24. Local-global saliency Not salient salient Principles 1-2: Unique appearance  salient

  25. Computing uniqueness Principles 1-2: Unique appearance  salient

  26. Appearance uniqueness Euclidean distance between colors of patches at pi & pj Principles 1-2: Unique appearance  salient

  27. Appearance uniqueness high salient Principles 1-2: Unique appearance  salient

  28. Positional information Similar patches both near and far Not salient Principle 3: Position is important!

  29. Positional information Similar patches near Salient Principle 3: Position is important!

  30. Positional information Normalized Euclidean distance between positions of pi & pj Principle 3: Position is important!

  31. Single scale uniqueness High salient Distance between a pair of patches:

  32. Single scale uniqueness High for K most similar salient Distance between a pair of patches:

  33. Single scale saliency K most similar patches at scale r

  34. Single scale saliency

  35. Multiple scales Scale 1 Scale 4 • Salient at: • Multiple scales  foreground • Few scales  background

  36. Including immediate context Context • Principle 3: • Few centers of gravity

  37. Visual organization Focus points Distance map Final result X

  38. Algorithm summary X Single-scale saliency Multiple scales Final saliency

  39. Results

  40. Non-interesting background Our result Walther & Koch, 2006 Hou & Zhang, 2007

  41. Non-interesting background Our result Walther & Koch, 2006 Hou & Zhang, 2007

  42. Object + immediate surrounding Our result Walther & Koch, 2006 Hou & Zhang, 2007

  43. Object + immediate surrounding Our result Walther & Koch, 2006 Hou & Zhang, 2007

  44. Complex scenes Our result Walther & Koch, 2006 Hou & Zhang, 2007

  45. Complex scenes Our result Walther & Koch, 2006 Hou & Zhang, 2007

  46. Quantitative evaluation Database of Hou & Zhang

  47. Judd et al. database Our + center Judd Our

  48. Judd et al. database Our + center Judd Our

  49. Boiman & Irani[IJCV’07]

  50. Boiman & Irani[IJCV’07] Input Boiman & Irani Our result

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