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Removing motion blur from a single image
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Sources of blur Object motion
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Sources of blur Object motion Translation of camera
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Sources of blur Object motion Translation of camera Rotation of camera
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Sources of blur Object motion Translation of camera Rotation of camera
Defocus Internal camera distortions
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Point Spread Function (PSF)
Assume: Point light source PSF =
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Convolution model motivation
B = K L + N Convolution model motivation Assume: No image plane rotation No object motion during the exposure No significant parallax (depth variation) Camera motion is Pure Translation!!! Violation of assumption:
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Convolution model motivation
B = K L + N Convolution model motivation Assume: No image plane rotation No object motion during the exposure No significant parallax (depth variation) Camera motion is Pure Translation!!! Experimental validation: 8 subjects handholding DSLR with 1 sec exposure Close-up of dots
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Convolution Model + Notations Generation rule: B = K L + N
L: original image K: the blur kernel (PSF) N: sensor noise (white) B: input blurred image + Generation rule: B = K L + N
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How can the image be recovered?
Assumptions: Known kernel (PSF) Constant kernel for the whole image No noise Goal: Recover L s.t.: B = K L Fourier Convolution Theorem!
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De-blur using Convolution Theorem
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Example: PSF Blurred Image Recovered
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Noisy case: Example: Deconvolution is unstable
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Regularization is required
1D example: FT of original signal Original signal Reconstructed FT of the signal Convolved signals w/w noise FT of convolved signals Regularization is required
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Regularizing by window
Window size: 51 151 191
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