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Research Seminar - May 14, 1999
Seminar Announcement
| Title: |
Image Denoising
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| Speaker: |
Peter Kovesi |
| |
Computer Science |
| Date: |
Friday 14th May, 1999 |
| Time: |
3pm |
| Venue: |
Seminar Room 1.24 |
Abstract
Denoising of images is typically done with the following process: The
image is transformed into some domain where the noise component is
more easily identified, a thresholding operation is then applied to
remove the noise, and finally the transformation is inverted to
reconstruct a (hopefully) noise-free image. In recent years the
wavelet transform has become popular for the denoising of images.
However, a number of questions arise:
- Which of the many wavelets that exist should one use?
- What form of thresholding should be used?
- How should the threshold be set? and
- How are features in the image affected by the thresholding operation?
In this talk I will explore these issues and argue for the use of
complex valued log-Gabor wavelets, rather than the more usual
orthogonal or bi-orthogonal wavelets. Thresholding of wavelet
responses in the complex domain allows one to ensure that phase
information in the image is not corrupted. I will also show how
appropriate threshold values can be determined from the statistics of
the wavelet responses to the image.
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