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8-1 Chapter 8: Image Restoration Image enhancement: Overlook degradation processes, deal with images intuitively Image restoration: Known degradation processes;

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Presentation on theme: "8-1 Chapter 8: Image Restoration Image enhancement: Overlook degradation processes, deal with images intuitively Image restoration: Known degradation processes;"— Presentation transcript:

1 8-1 Chapter 8: Image Restoration Image enhancement: Overlook degradation processes, deal with images intuitively Image restoration: Known degradation processes; model the processes and reconstruct images based on the inverse model ○ Degradations e.g., noise, error, distortion, blurring

2 8-2 ◎ Degradation Model g(x,y): degraded image, f(x,y): image, h(x,y): degradation process n(x,y): additive noise From the convolution theorem, Difficulties: (a) unknown N(u,v), (b) small H(u,v)

3 8-3 ◎ Noise (originating from image acquisition, digitization, or transmission) ○ White noise: the noise whose Fourier spectrum is constant ○ Periodic noise: Noisy image Original image ○ Additive noise: Each pixel is added a value (noise) chosen from a probability distribution

4 8-4 。 Salt-and-pepper (impulse) noise Let x : noise value (a, b can be + or -) e.g.,

5 8-5 。 Uniform noise: (a, b can be + or -)

6 8-6

7 8-7 。 Gaussian noise:

8 8-8 。 Rayleigh noise:

9 8-9 。 Erlang (gamma) noise:

10 8-10 。 Exponential noise:

11 8-11 ◎ Estimation of noise parameters Steps: 1. Choose a uniform image region 2. Compute histogram 3. Compute mean and variance 4. Determine the probability distribution from the shape of 5. Estimate the parameters of the probability distribution using

12 8-12 Examples: (a) Uniform noise: Given

13 8-13 (b) Rayleigh noise: Given

14 8-14 ○ Multiplicative noise: Each pixel is multiplied with a value (noise) chosen from a probability distribution e.g., Speckle noise

15 8-15 ◎ Noise removal ○ Salt-and-pepper noise – high frequency image component Low-pass filter median filter

16 8-16 。 Mean filter – tend to blur image (i) Arithmetic mean: 4 × 3 5 × 5

17 8-17 (ii) Geometric mean: (iii) Harmonic mean: (iv) Contraharmonic mean:

18 8-18 3 × 3 median filter 3 × 3 (twice) 5 × 5

19 8-19 。 Adaptive filter -- change characteristics according to the pixels under the window

20 8-20 3×3 5×5 7×7 9×9

21 8-21 Assume Gaussian noise n(x,y) is uncorrelated and has zero mean ○ Gaussian noise 。 Image averaging:

22 8-22 Example:

23 8-23 Band reject filter Notch filter ○ Periodic noise

24 8-24 In general case, Fourier spectrum noise Corresponding spatial noise

25 8-25 ○ Inverse filtering

26 8-26 Low-pass Filtering: Constrained Division d = 40 60 80 100 

27 8-27 ○ Wiener filtering -- Considers both degradation process and noise Idea: (Parametric Wiener filter)

28 8-28 When r = 1, If noise is zero,, ( Wiener filter) (Inverse filter) If noise is white noise, is constant

29 8-29 Input image k = 0.001 k = 0.0001 k = 0.00001

30 8-30 Image f(x,y) undergoes planar motion : the components of motion T: the duration of exposure Fourier transform, ○ Motion debluring

31 8-31

32 8-32 Suppose uniform linear motion: Note H vanishes at u = n / a (n: an integer) Restore image by the inverse or Wiener filter


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