1 / 24

Noise and Filtering

Basis beeldverwerking (8D040) d r. Andrea Fuster dr . Anna Vilanova Prof.dr . Marcel Breeuwer. Noise and Filtering. Contents. Noise Mean Filters Order-statistic filters Median Alpha-trimmed. Gaussian Noise.

marlo
Télécharger la présentation

Noise and Filtering

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Basis beeldverwerking (8D040) dr. Andrea Fusterdr. Anna VilanovaProf.dr. Marcel Breeuwer Noise and Filtering

  2. Contents • Noise • Mean Filters • Order-statistic filters • Median • Alpha-trimmed

  3. Gaussian Noise Gaussian noise follows a Gaussian distributionAverage =Standard deviation = Good approximation of noise that occurs in practical cases.

  4. Additive Gaussian Noise Example

  5. Impulse Noise Model Bipolar impulse noise follows the following distributionIf or is zero, we have unipolar impulse noiseIf both are nonzero, and almost equal, this is also called salt-and-pepper noise

  6. Impulse Noise • Impulses • can be positive and negative • are often very large • can go out of the range of the image • appear as black and white dots, saturated peaks

  7. Impulse Noise Example

  8. Contents • Noise • Mean Filters • Order-statistic filters • Median • Alpha-trimmed

  9. Mean Filters Blurring used to smooth images by e.g. convolution with smoothing kernel Can be used to suppress noise

  10. Arithmetic Mean Filter Arithmetic mean filter replaces the current pixel with a uniform weighted average of the neighbourhood

  11. Geometric Mean Filter Like arithmetic mean filter, but loses less detail

  12. Harmonic Mean Filter Works well for Gaussian noise Works well for salt noise, but fails for pepper noise

  13. Contraharmonic Mean Filter Is very effective in eliminating Salt-and-Pepper noiseQ is the order of the filter

  14. Contraharmonic Mean Filter If Q=0, this is the arithmetic mean filter If Q=-1, this is the harmonic mean filter If Q<0, salt noise is eliminated If Q>0, pepper noise is eliminated For examples, see book page 324-325

  15. Contents • Noise • Mean Filters • Order-statistic filters • Median • Alpha-trimmed

  16. Order-statistic filters median min max Result is based on ordering pixel values in the neighbourhood Examples: median, max, min filters

  17. Contents • Noise • Mean Filters • Order-statistic filters • Median • Alpha-trimmed

  18. Median Filter Replaces value of a pixel by the median of its neighbourhood

  19. Median filter Median filtering 9x9 Median filtering 3x3 Mean filtering 9x9 Mean filtering 3x3 Can be used to reduce random noise Less blurring than linear smoothing filter Very effective for impulse noise (salt-and-pepper noise)

  20. Max and min filters • Max filter: • Take maximum of ordered pixel values • Find brightest points of an image (so: filters pepper noise) • Min filter: • Take minimum of ordered pixel values • Find darkest points of an image (filters salt noise)

  21. Max filtered Midpoint filtered Original Salt-and-Pepper noise 3rd quartile filtered 1st quartile filtered Median filtered Min filtered

  22. Contents • Noise • Mean Filters • Order-statistic filters • Median • Alpha-trimmed

  23. Alpha-trimmed mean filter Delete d/2 lowest and d/2 highest values of from neighbourhood remains d=0 arithmetic mean filter d=mn-1 median filter

  24. Alpha-trimmed image (5x5, d=6) Image with S&P noise and Gaussian noise Median filtered image (5x5) Alpha-trimmed mean filter works good for combination of S&P noise and Gaussian noise

More Related