# Mask a circular sector in a numpy array

I have a code that slices a numpy array into a circle. I wish to recover only the values included in a certain range of angles from the circle and mask the array. For example: mask the original array with the (x,y) positions comprised between 0 and 45 degrees of the circle.

Is there a pythonic way for doing so?

Here's my (simplified) original code:

``````import numpy as np
matrix = np.zeros((500,500))
x = 240
y = 280
``````

Edit: I omitted that radius can vary.

-
Your code will mask a square in the array rather than a circle - is it definitely a circle that you want? –  ali_m Aug 21 '13 at 9:27
Yes, that is. I see my error and I'm trying to solve it! –  Guadancil11 Aug 21 '13 at 9:51
maybe this is a duplicate of stackoverflow.com/q/8647024/832621 –  Saullo Castro Aug 21 '13 at 10:42
@SaulloCastro in this case it's a circular sector rather than just a circle –  ali_m Aug 21 '13 at 10:47
@ali_m thank you... I was not sure if it was a duplicate or not! –  Saullo Castro Aug 21 '13 at 10:48

I would do this by converting from cartesian to polar coordinates and constructing boolean masks for the circle and for the range of angles you want:

``````import numpy as np

"""
Return a boolean mask for a circular sector. The start/stop angles in
`angle_range` should be given in clockwise order.
"""

x,y = np.ogrid[:shape[0],:shape[1]]
cx,cy = centre

# ensure stop angle > start angle
if tmax < tmin:
tmax += 2*np.pi

# convert cartesian --> polar coordinates
r2 = (x-cx)*(x-cx) + (y-cy)*(y-cy)
theta = np.arctan2(x-cx,y-cy) - tmin

# wrap angles between 0 and 2*pi
theta %= (2*np.pi)

``````

For example:

``````from matplotlib import pyplot as pp
from scipy.misc import lena

matrix = lena()
`theta = np.arctan2(x-cx,y-cy)` must be changed into all positive angles using `theta = np.where(theta<0,2*pi+theta,theta)` otherwise the code above will not work correctly for angles higher than 180. –  Developer Aug 21 '13 at 13:52