Download presentation
Presentation is loading. Please wait.
1
Applied Perception in Graphics Erik Reinhard University of Central Florida reinhard@cs.ucf.edu
2
Computer Graphics Produce computer generated imagery that cannot be distinguished from real scenesProduce computer generated imagery that cannot be distinguished from real scenes Do this in real-timeDo this in real-time
3
Trends in Computer Graphics Greater realismGreater realism –Scene complexity –Lighting simulations Faster renderingFaster rendering –Faster hardware –Better algorithms Together: still too slow and unrealisticTogether: still too slow and unrealistic
4
Algorithm design Largely opportunisticLargely opportunistic Computer graphics is a maturing fieldComputer graphics is a maturing field Hence, a more directed approach is neededHence, a more directed approach is needed
5
Long Term Strategy Understand the differences between natural and computer generated scenesUnderstand the differences between natural and computer generated scenes Understand the Human Visual System and how it perceives imagesUnderstand the Human Visual System and how it perceives images Apply this knowledge to motivate graphics algorithmsApply this knowledge to motivate graphics algorithms
6
This Presentation (1) Reinhard et. al., “Color Transfer between Images”, IEEE CG&A, Sept. 2001.
7
This Presentation(2) Reinhard et. al., “Photographic Tone Reproduction for Digital Images, SIGGRAPH 2002.
8
Introduction The Human Visual System is evolved to look at natural images NaturalRandom
9
Human Visual System
10
Retina
11
Color Processing Rod and Cone pigments
12
Color Processing Cone output is logarithmic Color opponent space
13
Image Statistics Ruderman’s work on color statistics:Ruderman’s work on color statistics: –Principal Components Analysis (PCA) on colors of natural image ensembles –Axes have meaning: color opponents (luminance, red-green and yellow-blue)
14
Color Processing Summary Human Visual System expects images with natural characteristics (not just color)Human Visual System expects images with natural characteristics (not just color) Color opponent space has decorrelated axes (but in practice close to independent)Color opponent space has decorrelated axes (but in practice close to independent) Color space is logarithmic (compact and symmetric data representation)Color space is logarithmic (compact and symmetric data representation) Independent processing along each axis should be possible ApplicationIndependent processing along each axis should be possible Application
15
L Color Space Convert RGB triplets to LMS cone space Convert RGB triplets to LMS cone space Take logarithm Take logarithm Rotate axes Rotate axes
16
Color Transfer Make one image look like anotherMake one image look like another For both images:For both images: –Transfer to new color space –Compute mean and standard deviation along each color axis Shift and scale the target image to have the same statistics as the source imageShift and scale the target image to have the same statistics as the source image
17
Why not use RGB space? Input imagesOutput images RGB L
18
Color Transfer Example
21
Color Processing Summary Changing the statistics along each axis independently allows one image to resemble a second imageChanging the statistics along each axis independently allows one image to resemble a second image If the composition of the images is very unequal, an approach using small swatches may be used successfullyIf the composition of the images is very unequal, an approach using small swatches may be used successfully
22
Tone Reproduction
24
Global vs. Local GlobalGlobal –Scale each pixel according to a fixed curve –Key issue: shape of curve LocalLocal –Scale each pixel by a curve that is modulated by a local average –Key issue: size of local neighborhood
25
Global Operators TumblinWard Ferwerda
26
Global Operators TumblinWard Ferwerda
27
Local Operator Pattanaik
28
Spatial Processing Circularly symmetric receptive fieldsCircularly symmetric receptive fields Centre-surround mechanismsCentre-surround mechanisms –Laplacian of Gaussian –Difference of Gaussians –Blommaert Scale space modelScale space model
29
Scale Space (Histogram Equalized Images)
30
Tone Reproduction Idea Modify existing global operator to be a local operator, e.g. Greg Ward’sModify existing global operator to be a local operator, e.g. Greg Ward’s Use spatial processing to determine a local adaptation level for each pixelUse spatial processing to determine a local adaptation level for each pixel
31
Blommaert Brightness Model Gaussian filter Center/surround Neural response Brightness
32
Brightness
33
Scale Selection Alternatives Mean value Thresholded How large should a local neighborhood be?
34
Mean Value
35
Thresholded
36
Tone-mapping Local adaptation Greg Ward’s tone- mapping with local adaptation
37
Results Good results, but something odd about scale selection:Good results, but something odd about scale selection: For most pixels, a large scale was selectedFor most pixels, a large scale was selected Implication: a simpler algorithm should be possibleImplication: a simpler algorithm should be possible
38
Simplify Algorithm Greg Ward’s tone- mapping with local adaptation Simplify Fix overall lightness of image
39
Global Operator Results WardOur method
40
Global Operator Results WardOur method
41
Global Local Global operator Local operator
42
Local Operator Results Global Local
43
Local Operator Results GlobalLocalPattanaik
44
Summary Knowledge of the Human Visual System can help solve engineering problemsKnowledge of the Human Visual System can help solve engineering problems Color and spatial processing investigatedColor and spatial processing investigated Direct applications shownDirect applications shown
45
Future Work This presentation
46
Acknowledgments Thanks to my collaborators: Peter Shirley, Jim Ferwerda, Mike Stark, Mikhael Ashikhmin, Bruce Gooch, Tom TrosciankoThanks to my collaborators: Peter Shirley, Jim Ferwerda, Mike Stark, Mikhael Ashikhmin, Bruce Gooch, Tom Troscianko This work sponsored by NSF grants 97- 96136, 97-31859, 98-18344, 99-78099 and by the DOE AVTC/VIEWSThis work sponsored by NSF grants 97- 96136, 97-31859, 98-18344, 99-78099 and by the DOE AVTC/VIEWS
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.