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Radiometric Self Calibration
Tomoo Mitsunaga Shree K. Nayar Hashimoto Signal Processing Lab. Dept. of Computer Science Sony Corporation Columbia University CVPR Conference Ft. Collins, Colorado June 1999
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Usual imaging systems have :
Problem Statement How well does the image represent the real world? Image M1 (High exposure) Image M2 (Low exposure) Limited dynamic range Usual imaging systems have : Non-linear response June/1999 CVPR99
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Scene Radiance and Image Irradiance
L E Radiance Irradiance Image irradiance : Ideal camera response : Aperture area Exposure : June/1999 CVPR99
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Scene Radiance and Measured Brightness
Video Image Formation Image Exposure Camera Electronics Digitization CCD Scaled radiance I Measured brightness M Scene radiance L linear Photo Image Formation Image Exposure Film Development Film Scanning f (M) : The radiometric response function June/1999 CVPR99
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Calibration with Reference Objects
The scene must be controlled The reflectance of the objects must be known The illumination must be controlled June/1999 CVPR99
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Calibration without Reference Objects
Differently exposed images from an arbitrary scene Recover the response function from the images Calibrate the images with the response function Response function Input Images High dynamic range radiance image June/1999 CVPR99
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Previous Works Mann and Picard (95) : Debevec and Malik (97) :
Take two images with known exposure ratio R Restrictive model for f : Find parameters a, b, g by regression Debevec and Malik (97) : General model for f : only smoothness constraint Take several (say, 10) high quality images At precisely measured exposures (shutter speed) June/1999 CVPR99
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Obtaining Exposure Information
We have only rough estimates Mechanical error Reading error (ex. F-stop number) June/1999 CVPR99
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Radiometric Self-Calibration
Works with roughly estimated exposures Inputs : Differently exposed images Rough estimates of exposure values ex. F-stop reading Outputs : Estimated response function Corrected exposure values June/1999 CVPR99
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A Flexible Parametric Model
video posi nega High order polynomial model : f (M) Parameters to be recovered : Coefficients cn Order N M f(M) of some popular imaging products June/1999 CVPR99
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Response Function and Exposure Ratio
Images: q = 1,2,….Q , Pixels: p = 1, 2, …..P Exposure ratio: Using polynomial model : Objective function : Thus, we obtain ... June/1999 CVPR99
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An Iterative Scheme for Optimization
Rough estimates Rq,q+1(0) Rq,q+1(i) Optimize for f Optimize for Rq,q+1 f (i) Optimized f and Rq,q+1 June/1999 CVPR99
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Evaluation : Noisy Synthetic Images
f (M) M Solid : Computed response function Dots : Actual response function June/1999 CVPR99
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Evaluation : Noisy Synthetic Images (cont’d)
Percentage Error in Computed Response Function Trial Number Maximum Error : % June/1999 CVPR99
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Computing a High Dynamic Range Image
Calibrating by the response function Normalizing by corrected exposure values Averaging with SNR-based weighting June/1999 CVPR99
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Results : Low Library (video)
Captured images I Calibration chart M Computed response function June/1999 CVPR99
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Results : Low Library (video)
Captured images Computed radiance image June/1999 CVPR99
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Results : Adobe Room (photograph)
Captured images I M Computed response function Computed radiance image June/1999 CVPR99
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Results : Taos Clay Oven (photograph)
Captured images I M Computed response function Computed radiance image June/1999 CVPR99
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A Practical Radiometric Self-calibration Method
Conclusions A Practical Radiometric Self-calibration Method Works with Arbitrary still scene Rough estimates of exposure Recovers Response function of the imaging system High dynamic range image of the scene Software and Demo June/1999 CVPR99
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Obtaining Quality Measurements
Automatic noise reducing pre-processing For random noise within a pixel Temporal averaging For object movement and risky object edges* Selecting pixels from spatially static area For vignetting Preferring the center part of the image * Object edges are sensitive to noise June/1999 CVPR99
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