Can anyone provide an approachable explanation of how an edge-preserving smooth works?

How does an edge preserving smooth work? This is an image filter which blurs the image without messing up the edges.

My searches on Google have turned up only academic papers discussing mathematics that are way beyond my comprehension.

Can you provide some pseudocode or a link to a simple explanation?

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Probably operates similarly (or oppositely) to how edge sharpening filters work in regards to edge detection. –  JAB Jul 18 '11 at 20:20
It depends on the algorithm. Do you have a name of a specific one you're interested in ? –  Yochai Timmer Jul 18 '11 at 20:21
@Yochai Timmer- No. Is there a simple proto-algorithm which the specific implementations are based on? Is there any one in particular which you are familiar with? –  Nathan Jul 18 '11 at 20:23

First of all, there's a lot of math in doing that, so if you don't understand the mathematical equations you found, I'll try to explain it in simple terms:

Smoothing in general is done by doing some kind weighted average of the adjacent pixels.

Because this is basically math, and pictures are basically 3D matrices, you can achieve smoothing efficiently with basic matrix mathematical manipulations.

Now to get edge detection you just need to find the difference between adjacent pixels (or if it's a wide edge, you can set a maximal width), which again is just the gradient of the matrix. (Multi-dimensial Derivative).

So, even if you do it naively, you could use the gradient as a weight factor for the weighting the average of pixel color.

I assume that most of the mathematical equations you'll find use the gradient at some level, but just make it more efficient (single mathematical formula in oppose to many loops)

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I've learned that both blurring and edge detection can be done with a convolution matrix. docs.gimp.org/en/plug-in-convmatrix.html So is an edge preserving smooth a convolution matrix operation which uses the sum of the blurring kernel and the edge detection kernel? –  Nathan Jul 19 '11 at 18:37
Convolution will give you a nice representation of the difference between two functions, which you could apply to give you the difference between the original picture and the gradient (or some other measurement). It's just a tool. There are a lot of methods to do this, some are better some are worse. Every other person who wants a high degree in CS and image processing comes up with a new mathematical equation for this. –  Yochai Timmer Jul 19 '11 at 19:33
Convolution, or any linear filter, will be very destructive to edges, either blurring them out or adding ringing (likely a mix of both). Median filter will avoid this, but it's rather too discrete for good "smoothing". –  R.. Jul 29 '11 at 9:06