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Updated contributions and demos section of readme
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@@ -15,7 +15,7 @@ Index | |
5. Examples. | ||
6. Demos. | ||
7. Contact. | ||
8. Acknowledgements | ||
8. Acknowledgements. | ||
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1. Quick start guide | ||
-------------------- | ||
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@@ -87,7 +87,6 @@ Note: this toolbox has only been tested under Linux. Installation might require | |
Two main functions conform the proxTV toolbox: TV and TVgen. The first one provides basic options over the Total Variation problem, while the second one allows a more advanced configuration. In general, the TV function should suffice for most uses. | ||
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a) TV | ||
····· | ||
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Solves Total Variation proximity operators for n-dimensional signals, applying a TV-Lp norm. The inputs and outputs of this function are: | ||
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@@ -136,7 +135,6 @@ were each difference among signal entries x_i and x_(i-1) is penalized using a d | |
where Wd[i] is the 1-dimensional fiber of weights along the d-th dimension applied to X[i,d]. Weight tensors are provided in TV function as the lambda parameter through a cell array in the form {W1, W2, ..., Wd} (see the examples in the "Examples" section) | ||
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b) TVgen | ||
········ | ||
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Solves a generalized TV proximity operator for a multidimensional signal, in the form | ||
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@@ -163,7 +161,6 @@ When possible, TV should be preferred. See the Examples section next for some sp | |
----------- | ||
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1D examples | ||
··········· | ||
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- Filter 1D signal using TV-L1 norm: | ||
TV(x,lambda) | ||
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TVgen(X,[lambda1 lambda2],[1 1],[1 2]) | ||
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2D examples | ||
··········· | ||
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- Filter 2D signal using TV-L1 norm: | ||
TV(X,lambda) | ||
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@@ -205,7 +201,6 @@ When possible, TV should be preferred. See the Examples section next for some sp | |
TV(X, {W1, W2}) | ||
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3D examples | ||
··········· | ||
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- Filter 3D signal using TV-L1 norm: | ||
TV(X,lambda) | ||
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@@ -225,6 +220,7 @@ Some demos in the form of Matlab scripts showing how to work with proxTV are inc | |
- demo_filter_image: TV-L1 filtering of 2-dimensional image. | ||
- demo_filter_image_color: TV-L1 filtering of 3-dimensional image (length, width and color). | ||
- demo_filter_image_threads: multi-thread TV-L1 filtering of 2-dimensional image. | ||
- demo_filter_image_weighted: weighted TV-L1 filtering of 2-dimensional image. | ||
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7. Contact | ||
---------- | ||
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8. Acknowledgements | ||
------------------- | ||
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We wish to thank Zico Kolter for pointing out a bug in version 1.0 of this code. | ||
We wish to thank the following people for helping us in debugging the toolbox: | ||
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- Zico Kolter for pointing out a bug in version 1.0 of this code. | ||
- Sesh Kumar for spotting and finding a bug in our weighted 1D-TV method. |