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Vincent DeVito
Computer Systems Lab
2009-2010
The goal of my project is to take an image
input, artificially blur it using a known blur
kernel, then using deconvolution to deblur and
restore the image, then run a last step to reduce
the noise of the image. The goal is to have the
input and output images be identical with a
blurry intermediate image. The final step is
then to estimate the blur kernel of an image
with an unknown blur kernel.
Running goal for image processors and photo
editors
Many methods of deconvolution exist
Many utilize the Fourier Transform
Current progress focused on blur kernel
estimation
Better kernel more accurate, clear output image
The group of Lu Yuan, et al. designed project
with blurry/noisy image pairs
Blurry image intensity + noisy image sharpness +
deconvolution = sharp, deblurred output image
The group of Rob Fergus, et al. designed
project to estimate blur kernel from naturally
blurred image
A few inputs + kernel estimation algorithm +
deconvolution = deblurred output image with few
artifacts
Photography
Improve image quality
Restore image
From Fergus, et al.
Machine Vision
Requires input images to be of good clarity
Blur could ruin techniques such as edge detection
Intermediate step
Extremely useful for convolution and
deconvolution
Convert image to frequency domain
Utilize the formula eθi = cosθ + isinθ
Usually display the magnitude, since DFT produces
complex number (a + bi). Magnitude = (a2 + b2)1/2
Scale to 0-255 range
O(n2)
Separate sums
1D DFT in one direction (vertical/horizontal), then
in the other
O(nlog2n)
Inverse Fourier Transform converts back to
spatial domain
Also possible to separate
Need full complex number from DFT or FFT
Original Picture
Magnitude Only
Phase Only
Successful FFT and IFFT program
Successful convolution program
Takes any image (square image of size 128x128 or
smaller for best runtime) and blurs it using any
given blur kernel
Start to image deconvolution using a given
kernel
Inconsistent and somewhat noisy
Fix deconvolution algorithm
Inconsistent and produces large, clustered values
Need a new transform or more research into kernel
types
Noise reduction
Research into deconvolution based on kernel
type