Presentation is loading. Please wait.

Presentation is loading. Please wait.

Image Processing and Reconstructions Tools

Similar presentations


Presentation on theme: "Image Processing and Reconstructions Tools"— Presentation transcript:

1 Image Processing and Reconstructions Tools
Ramesh Raskar Mitsubishi Electric Research Labs Cambridge, MA

2 Image Tools Gradient domain operations, Graph cuts,
Tone mapping, fusion and matting Graph cuts, Segmentation and mosaicing Bilateral and Trilateral filters, Denoising, image enhancement

3 Intensity Gradient in 1D
105 105 1 1 I(x) G(x) Gradient at x, G(x) = I(x+1)- I(x) Forward Difference

4 Reconstruction from Gradients
Intensity 105 105 ? ? 1 1 G(x) I(x) For n intensity values, about n gradients

5 Reconstruction from Gradients
Intensity 105 105 ? 1 1 G(x) I(x) 1D Integration I(x) = I(x-1) + G(x) Cumulative sum

6 Intensity Gradient in 2D
Gradient at x,y as Forward Differences Gx(x,y) = I(x+1 , y)- I(x,y) Gy(x,y) = I(x , y+1)- I(x,y) G(x,y) = (Gx , Gy) Grad X Grad Y

7 Intensity Gradient Vectors in Images

8 Image Intensity Gradients in 2D
Sanity Check: Recovering Original Image Grad X 2D Integration Solve Poisson Equation, 2D linear system Grad Y

9 Intensity Gradient Manipulation
A Common Pipeline Grad X New Grad X 2D Integration Gradient Processing Grad Y New Grad Y Modify Gradients

10 Graph and Images Credits: Jianbo Shi

11 Agrawala et al, Digital Photomontage, Siggraph 2004

12

13 Source images Brush strokes Computed labeling Composite

14 Segmentation = Graph partition
Wij i j Wij V: graph node E: edges connection nodes Wij: Edge weight Image pixel Link to neighboring pixels Pixel similarity

15 Minimum Cost Cuts in a graph
Cut: Set of edges whose removal makes a graph disconnected Si,j : Similarity between pixel i and pixel j Cost of a cut, A A

16 Graph Cuts for Segmentation and Mosaicing
Cut ~ String on a height field Brush strokes Computed labeling

17 Bilateral Filtering Input [Ben Weiss, Siggraph 2006]
Gaussian Smoothing Log(Intensity) Bilateral Smoothing [Ben Weiss, Siggraph 2006]

18 Start with Gaussian filtering
Here, input is a step function + noise output input

19 Start with Gaussian filtering
Spatial Gaussian f output input

20 Start with Gaussian filtering
Output is blurred output input

21 Gaussian filter as weighted average
Weight of x depends on distance to x output input

22 The problem of edges Here, “pollutes” our estimate J(x)
It is too different output input

23 Principle of Bilateral filtering
[Tomasi and Manduchi 1998] Penalty g on the intensity difference output input

24 Bilateral filtering Spatial Gaussian f output input
[Tomasi and Manduchi 1998] Spatial Gaussian f output input

25 Bilateral filtering Spatial Gaussian f
[Tomasi and Manduchi 1998] Spatial Gaussian f Gaussian g on the intensity difference output input

26 The weights are different for each output pixel
[Tomasi and Manduchi 1998] The weights are different for each output pixel output input

27 Bilateral filtering is non-linear
[Tomasi and Manduchi 1998] The weights are different for each output pixel output input

28 Bilateral Filtering Unilateral filtering Bilateral filtering
Smoothing using filtering Bilateral filtering Edge-preserving smoothing Input Gaussian Smoothing Log(Intensity) Bilateral Smoothing [Ben Weiss, Siggraph 2006]


Download ppt "Image Processing and Reconstructions Tools"

Similar presentations


Ads by Google