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Filtration Filtration methods for binary images

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Presentation on theme: "Filtration Filtration methods for binary images"— Presentation transcript:

1 Filtration Filtration methods for binary images
Filtration methods for color images

2 Binary image filtration
Morphological filters Statistical filters

3 Color image filtration
Statistical Color distance based

4 Morphological filters
Based on basic morphological operations: Erode & Dilate Erosion: Dilation: X – an image A – Structural element

5 Structural element Usual SE’s are: cross block Also could be any form

6 Dilate – increasing operator
cross block

7 Erode – reducing operator
cross block

8 Open filter Sequential applying Erosion Dilation

9 Open example: cross block

10 Close filter Sequential applying Dilation Erosion

11 Close example cross block

12 Sequential filters Open-close filter Close-open filter

13 Rank operator A – structural element of n cells
boolean function of n variables where binary image

14 Rank operator , where boolean function of n variables
Which have value of 1 if at least k variables equals to 1, and 0 otherwise where is a complimentary part of A

15 Median filter for binary images
, where n is odd, and cross block

16 Statistical filters Based on probability statistics of filtered pixel within a local neighborhood Better pixel “prediction” with extended templates

17 Statistical filters First phase – determining statistical context of the image Second phase – flipping pixels with low probability values, assuming they as noise.

18 Morphological vs. Statistical
Statistical – 2 pass filters. With big templates huge memory consumption. Statistical filters adapt to the image.

19 Statistics example 1 Nb = 104 Nw = 152 P(b|c) = 2.87% Threshold = 5%
Pixel will be changed to white

20 10% threshold Contexts in total: 16, Pixels removed: 377 of 40000

21 Context tree filtering
Fixed template Huge memory consumption , where k is the size of template Not all context are used

22 Color image filtration

23 Statistical filters Fixed template Enormous memory consumption
, where k is the size of template, and n is amount of colors Not all context are used

24 Context tree filtration

25 End of day 1 Questions?


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