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Exampled-based Super resolution Presenter: Yu-Wei Fan.

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Presentation on theme: "Exampled-based Super resolution Presenter: Yu-Wei Fan."— Presentation transcript:

1 Exampled-based Super resolution Presenter: Yu-Wei Fan

2 Outline Introduction Training set generation Super-resolution algorithms – Idea – Markov Network – One-pass algorithm Results

3 Outline Introduction Training set generation Super-resolution algorithms – Idea – Markov Network – One-pass algorithm Results

4 Introduction Why do we need high resolution image? Usually, we cannot get high resolution image easy.

5 Introduction Aim: High Resolution Image – 1.Reduce the pixel size the amount of light available also decrease generates shot noise – 2.Increase the chip size increase capacitance difficult to speed up a charge transfer rate – 3.Signal processing techniques Low cost

6 Introduction General Super Resolution – Need multi frames information Exampled-based Super resolution –Need only one frame

7 Outline Introduction Training set generation Super-resolution algorithms – Idea – Markov Network – One-pass algorithm Results

8 Training set generation Store the high-resolution patch corresponding to every possible low-resolution image patch. Typically, these patches are 5 × 5 or 7 × 7 pixels.

9 Outline Introduction Training set generation Super-resolution algorithms – Idea – Markov Network – One-pass algorithm Results

10 Idea Unfortunately, that approach doesn’t work!

11 Markov Network

12 MAP Estimator:

13 Markov Network Example:

14 Markov Network Belief Propagation Where is from the previous iteration. The initial are 1. Typically, three or four iterations of the algorithm are sufficient.

15 One-pass algorithm How do we select a good patch pair? Two constraint: – frequency constraint – spatial constraint

16 One-pass algorithm

17 Outline Introduction Training set generation Super-resolution algorithms – Idea – Markov Network – One-pass algorithm Results

18

19

20 α=0

21 Results α=0.5

22 Results α=5


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