So I'm generating images of curvy lines. I build my lines out of the first few modes of a fourier series (using randomly chosen amplitudes on each cosine function) and then generate a list of x and y values from my fourier series for the curvy line. But now I'd like to plot y vs x, on my own terms, since I need lots of control and pyplot does too much under the hood.
So I cast my x and y vectors (1D numpy arrays) into integers, so that now they refer to pixel positions (everything is scaled to fit in a 128x128 img window). Now I would like to eliminate redundancies from my vectors (ie. wherever I have a repeated x AND y value, I want to remove that x from the x vector and that y from the y vector).
Currently, x and y are in two different vectors. Would it be better to keep them as a single vector of ordered pairs? Then it would be a matter of removing redundant ordered pairs.
Either way, what's the ideal route to knocking out the redundancies. I feel like I'm coding around the bush (teehee) on this one and there's got to be a simple pythonic route.