# Stop pyplot.contour from drawing a contour along a discontinuity

I have a 2d map of a coordinate transform. The data at each point is the aximuthal angle in the original coordinate system, which goes from 0 to 360. I'm trying to use pyplot.contour to plot lines of constant angle, e.g. 45 degrees. The contour appears along the 45 degree line between the two poles, but there's an additional part to the contour that connects the two poles along the 0/360 discontinuity. This makes a very jagged ugly line as it basically just traces the pixels with a number close to 0 on one side and another close to 360 on the other.

Examples: Here is an image using full colour map:

You can see the discontinuity along the blue/red curve on the left side. One side is 360 degrees, the other is 0 degrees. When plotting contours, I get:

Note that all contours connect the two poles, but even though I have NOT plotted the 0 degree contour, all the other contours follow along the 0 degree discontinuity (because pyplot thinks if it's 0 on one side and 360 on the other, there must be all other angles in between).

Code to produce this data:

``````import numpy as np
import matplotlib.pyplot as plt
jgal = np.array( [[-0.054875539726,-0.873437108010,-0.483834985808],\
[0.494109453312,-0.444829589425, 0.746982251810],\
[-0.867666135858,-0.198076386122, 0.455983795705]])

def s2v3(rra, rdec, r):
pos0 = r * np.cos(rra) * np.cos(rdec)
pos1 = r * np.sin(rra) * np.cos(rdec)
pos2 = r * np.sin(rdec)
return np.array([pos0, pos1, pos2])

def v2s3(pos):
x = pos[0]
y = pos[1]
z = pos[2]
if np.isscalar(x): x, y, z = np.array([x]), np.array([y]), np.array([z])
rra = np.arctan2(y, x)
low = np.where(rra < 0.0)
high = np.where(rra > 2.0 * np.pi)
if len(low[0]): rra[low] = rra[low] + (2.0*np.pi)
if len(high[0]): rra[high] = rra[high] - (2.0*np.pi)
rxy = np.sqrt(x**2 + y**2)
rdec = np.arctan2(z, rxy)
r = np.sqrt(x**2 + y**2 + z**2)
if x.size == 1:
rra = rra[0]
rdec = rdec[0]
r = r[0]
return rra, rdec, r

def gal2fk5(gl, gb):
dgl = np.array(gl)
dgb = np.array(gb)
r = 1.0
pos = s2v3(rgl, rgb, r)

pos1 = np.dot(pos.transpose(), jgal).transpose()

rra, rdec, r = v2s3(pos1)

return dra, ddec

def make_coords(resolution=50):
width=9
height=6
px = width*resolution
py = height*resolution
coords = np.zeros((px,py,4))
for ix in range(0,px):
for iy in range(0,py):
l = 360.0/px*ix - 180.0
b = 180.0/py*iy - 90.0
dra, ddec = gal2fk5(l,b)
coords[ix,iy,0] = dra
coords[ix,iy,1] = ddec
coords[ix,iy,2] = l
coords[ix,iy,3] = b
return coords

coords = make_coords()

# now do one of these
#plt.imshow(coords[:,:,0],origin='lower') # color plot
#plt.contour(coords[:,:,0],levels=[45,90,135,180,225,270,315]) # contour plot with jagged ugliness
``````

How can I either:

1. stop pyplot.contour from drawing a contour along the discontinuity

2. make pyplot.contour recognize that the 0/360 discontinuity in angle is not a real discontinuity at all.

I can just increase the resolution of the underlying data, but before I get a nice smooth line it starts to take a very long time and a lot of memory to plot.

I will also want to plot a contour along 0 degrees, but if I can figure out how to hide the discontinuity I can just shift it to somewhere else not near a contour. Or, if I can make #2 happen, it won't be an issue.

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It would help if you could post an image of the problem plot, or some example code to produce a (simplified) version. –  askewchan Apr 25 at 1:31
I just added example plots to illustrate the problem –  GJP Apr 26 at 13:23
This is a strange use of contours and I do not think you are going to be able to make it work the way you want. I am, however confident that you can get the plot you want using something other than contour. Using `imshow` will give you something like your top plot and `streamplot` will give you something close to your bottom plot. Which plot is closer to what you ultimately want? Could you supply a function that produces the data field so we have something to play with? –  Paul Apr 26 at 18:23
@GJP The function is not passing along a discontinuity, it is the end of a period, see answer below... –  Saullo Castro Apr 27 at 5:59
The first plot is imshow, but I only use that to show you where the discontinuity is. I will have to look at streamplot but it doesn't look like it's quite what I need. –  GJP Apr 27 at 19:23

This is definitely still a hack, but you can get nice smooth contours with a two-fold approach:

1. Plot contours of the absolute value of the phase (going from -180˚ to 180˚) so that there is no discontinuity.
2. Plot two sets of contours in a finite region so that numerical defects close to the tops and bottoms of the extrema do not creep in.

Here is the complete code to append to your example:

``````Z = np.exp(1j*np.pi*coords[:,:,0]/180.0)
Z *= np.exp(0.25j*np.pi/2.0)   # Shift to get same contours as in your example
X = np.arange(300)
Y = np.arange(450)

N = 2
levels = 90*(0.5 + (np.arange(N) + 0.5)/N)
c1 = plt.contour(X, Y, abs(np.angle(Z)*180/np.pi), levels=levels)
c2 = plt.contour(X, Y, abs(np.angle(Z*np.exp(0.5j*np.pi))*180/np.pi), levels=levels)
``````

One can generalize this code to get smooth contours for any "periodic" function. What is left to be done is to generate a new set of contours with the correct values so that colormaps apply correctly, labels will be applied correctly etc. However, there does not seem to be a simple way of doing this with matplotlib: the relevant `QuadContourSet` class does everything and I do not see a simple way of constructing an appropriate contour object from the contours `c1` and `c2`.

-

In your case `pyplot.contour` is not passing along a discontinuity, but along the end of a period. The color map (`cmap`) that you are using (probably `jet`) does not work properly for periodic functions. Use `hsv` instead, as detailed in the example below, to get a continuous contour. I found here a good description of different color maps. Any color map that has the beginning color continuous with the ending color is supposed to work for periodic functions.

The following code can reproduce your problem:

``````import numpy as np
import matplotlib.pyplot as pyplot
lim1 = 0
lim2 = 360
angles = np.linspace(lim1, lim2, 1000)
r = np.linspace(0,1,1000)
mangles, mr = np.meshgrid(angles, r)
mx = mr * np.cos( np.deg2rad( mangles ) )
my = mr * np.sin( np.deg2rad( mangles ) )
levels=np.linspace(lim1, lim2, 360)
pyplot.contourf(mx, my, mangles,  cmap=pyplot.cm.jet, levels=levels)
pyplot.show()
``````

From where you get the following plot:

Changing the color map to `hsv` gives:

-
The issue is not that the colour map jumps from red to blue. The issue is that when I draw contours, pyplot.contour thinks that all intermediate values are there between one pixel at 0 and the next at 360. In your circular plots, this would be a horizontal line going out from the center to the right no matter what level you chose for a contour. –  GJP Apr 27 at 19:22
@GJP ok, so I guess I missunderstood your problem. It would be of great value to have your code for a deeper investigation... –  Saullo Castro Apr 28 at 8:20

Using your code and the `hsv`color map with `imshow()` like this:

``````plt.imshow( coords[:,:,0], cmap = plt.cm.hsv, origin ='lower' )
``````

Gives the following:

Wouldn't be this what you need?

-
No, I need a contour plot. –  GJP Apr 29 at 15:22
@GJP I will take a look at this later, but at least I think I understood your point now, that `contour` forces all other lines to pass in between `0` and `360`... –  Saullo Castro Apr 30 at 16:15