I've tried to find a neat solution to this, but I'm slicing several 2D arrays of the same shape in the same manner. I've tidied it up as much as I can by defining a list containing the 'x,y' center e.g. cpix = [161, 134]
What I'd like to do is instead of having to write out the slice three times like so:
a1 = array1[cpix[1]-50:cpix[1]+50, cpix[0]-50:cpix[0]+50]
a2 = array2[cpix[1]-50:cpix[1]+50, cpix[0]-50:cpix[0]+50]
a3 = array3[cpix[1]-50:cpix[1]+50, cpix[0]-50:cpix[0]+50]
is just have something predefined (like maybe a mask?) so I can just do a
a1 = array1[predefined_2dslice]
a2 = array2[predefined_2dslice]
a3 = array3[predefined_2dslice]
Is this something that numpy supports?
Yes you can use numpy.s_
:
Example:
>>> a = np.arange(10).reshape(2, 5)
>>>
>>> m = np.s_[0:2, 3:4]
>>>
>>> a[m]
array([[3],
[8]])
And in this case:
my_slice = np.s_[cpix[1]-50:cpix[1]+50, cpix[0]-50:cpix[0]+50]
a1 = array1[my_slice]
a2 = array2[my_slice]
a3 = array3[my_slice]
You can also use numpy.r_
in order to translates slice objects to concatenation along the first axis.
You can index a multidimensional array by using a tuple of slice
objects.
window = slice(col_start, col_stop), slice(row_start, row_stop)
a1 = array1[window]
a2 = array2[window]
This is not specific to numpy
and is simply how subscription/slicing syntax works in python.
class mock_array:
def __getitem__(self, key):
print(key)
m = mock_array()
m[1:3, 7:9] # prints tuple(slice(1, 3, None), slice(7, 9, None))