4/99Super-Resolution2 Super-resolution 4/99Super-Resolution3 Out Line.

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Presentation transcript:

4/99Super-Resolution2 Super-resolution

4/99Super-Resolution3 Out Line

4/99Super-Resolution4 Simulate Creation Process of Target Images  Creation of Y k images

4/99Super-Resolution5 Simulate Creation Process of Target Images (Cont.) 

4/99Super-Resolution6 Simulate Creation Process of Target Images (Cont.)

4/99Super-Resolution7 Creation of Y k Images from Source Image

4/99Super-Resolution8 The Super-resolution Problem as Quadratic Problem

4/99Super-Resolution9 Steepest-Descent Algorithm

4/99Super-Resolution10 Restoration Results of Steepest-Descent Algorithm

4/99Super-Resolution11 Enhanced Steepest-Descent Algorithm 

4/99Super-Resolution12 Enhanced Steepest-Descent Algorithm (Cont.) 

4/99Super-Resolution13 Enhanced Steepest-Descent Algorithm (Cont.) 

4/99Super-Resolution14 Enhanced Steepest-Descent Algorithm (Cont.)

4/99Super-Resolution15 The Normalized SD algorithm

4/99Super-Resolution16 Restoration Results of NSD Algorithm

4/99Super-Resolution17 Conjugate Gradient Algorithm 

4/99Super-Resolution18 Conjugate Gradient Algorithm (Cont.)

4/99Super-Resolution19 Comparison of CG vs. NSD 

4/99Super-Resolution20 Comparison of CG vs. NSD (Cont.) 

4/99Super-Resolution21 Comparison of CG vs. NSD (Cont.)

4/99Super-Resolution22 Regularization

4/99Super-Resolution23 Regular Regularization

4/99Super-Resolution24 Regularization Results for Various Values of

4/99Super-Resolution25 Comparison Between CG and NSD Including Regularization

4/99Super-Resolution26 Adaptive Regularization

4/99Super-Resolution27 W Matrix 

4/99Super-Resolution28 W Matrix (Cont.)

4/99Super-Resolution29 Motion Estimation

4/99Super-Resolution30 Motion Estimation Implementation as Iterative Algorithm

4/99Super-Resolution31 Input Images

4/99Super-Resolution32 Final Results 

4/99Super-Resolution33 Final Results (Cont.) 

4/99Super-Resolution34 Final Results (Cont.)

4/99Super-Resolution35 Aliasing Effect The Original ImageSampled ImageThe Restored Image The Original Image Sampled ImageThe Restored Image 

4/99Super-Resolution36 Aliasing Effect (Cont.) The Original ImageSampled Image The Restored Image

4/99Super-Resolution37 Summing