I want to visualise conversion of filters. I would like to plot a scatter plot, where every half second the next filter's values are plotted.
My objectives are:
Plot all values up to point (k) but to have values(k) indicated on the plot.
Pause between plotting values for (k) and (k+1)
Plot at full screen
Have the plot after finishing all iteration
I did a function but it is very inefficient and everything slows down after plotting some values.
The only way I found is to use interactive plot
ion() and every step plot all points again with updated marker. For each step (k) I would like to rather remove previous points (k-1) and add them in them with different marker and add current points (k)
import pylab as pl import time xPos1 = pl.arange(100) m1 = [pl.sin(pl.pi*x/10) for x in xPos1] m2 = [pl.cos(pl.pi*x/30) for x in xPos1] m3 = [pl.sin(pl.pi*x/20) for x in xPos1] trueVal1 = [0 for real in xPos1] def conversionAnim(xPos, trueVal, *args): mTuple = [arg for arg in args] colorList = ['Green','Blue','Orchid','Cyan','Goldenrod','Salmon','Orange','Violet','Magenta'] f = pl.figure(figsize =(17,8)) pl.ion() pl.xlim(min(xPos)-1, max(xPos)+1) pl.ylim(min(j for i in mTuple for j in i)-.5, max(j for i in mTuple for j in i)+.5) for i in range(len(xPos)): print '\ni = %i' % i for j in range(len(mTuple)): m = mTuple[j] mVal = [element for element in m] print 'Value%i is %s' %(j,mVal[i]) if i == 0: pl.hold(True) pl.scatter(xPos[i],mVal[i],s=50, marker = 'o', color = 'Dark'+colorList[j]) pl.plot(xPos[i],trueVal[i]) else: pl.scatter(xPos[i],mVal[i],s=50, marker = 'o',color = 'Dark'+colorList[j]) pl.scatter(xPos[i-1], mVal[i-1],s=50, marker = 'o', color = 'white') pl.scatter(xPos[i-1], mVal[i-1],s=50, marker = 'x', color = colorList[j]) pl.plot(xPos[i-1:i+1],trueVal[i-1:i+1], color = 'red') pl.draw() time.sleep(.01) time.sleep(3) # to hold figure after its shown if __name__ == '__main__': conversionAnim(xPos1, trueVal1, m1, m2, m3)
I don't know how to get around
ion() and make this function efficient.