Grid of Colored Squares

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Grid of Colored Squares

Hi,

"I want that UF make a random distribution of squares (on a regular grid) in white and black only (i need it as a mask). I don't know to to make this kind af pictures. Imagine a square subdivided in n x n squares. i would like to color every square randomly in white or black. Do you think this is possibile?"

I think "Matting and Framing" in the rkb.ucl folder would be useful to you. Robert also has a great 20+ page tutorial you can download from his website in pdf format. The download zip also includes lots of very helpful example uprs. Here is the link to that: [1]

This is an image I made while beta testing. It's not black and white squares, but you could use this formula for something like that.

Cindy

***

As Cindy mentions, the Matting and Framing color formula will do this. Here is a UPR. I'm not exactly sure what you are looking to do, so I did three layers that each do things a bit differently. You can change the random seed and/or the position of the nodes on the gradient to get the look you want.

Rob

MattingAndFraming {
; Copyright © 2008 by Cindy Meyers.
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