During preparing data for NumPy calculate. I am curious about way to construct:
myarray.shape => (2,18,18)
from:
d1.shape => (18,18)
d2.shape => (18,18)
I try to use NumPy command:
hstack([[d1],[d2]])
but it looks not work!
Just doing d3 = array([d1,d2])
seems to work for me:
>>> from numpy import array
>>> # ... create d1 and d2 ...
>>> d1.shape
(18,18)
>>> d2.shape
(18,18)
>>> d3 = array([d1, d2])
>>> d3.shape
(2, 18, 18)
hstack and vstack do no change the number of dimensions of the arrays: they merely put them "side by side". Thus, combining 2-dimensional arrays creates a new 2-dimensional array (not a 3D one!).
You can do what Daniel suggested (directly use numpy.array([d1, d2])
).
You can alternatively convert your arrays to 3D arrays before stacking them, by adding a new dimension to each array:
d3 = numpy.vstack([ d1[newaxis,...], d2[newaxis,...] ]) # shape = (2, 18, 18)
In fact, d1[newaxis,...].shape == (1, 18, 18)
, and you can stack both 3D arrays directly and get the new 3D array (d3
) that you wanted.
np.vstack([a[np.newaxis,...],b[np.newaxis,...]])
worked like charm! Thanks.
Nov 24, 2017 at 14:11
arr3=np.dstack([arr1, arr2])
arr1, arr2 are 2d array shape (256,256)
, arr3: shape(256,256,2)
(height,width,3)
.
Jun 26, 2020 at 14:30
A lot of versatility is provided by the np.stack()
function. You can use it like this:
>>> d3 = np.stack([d1, d2])
>>> d3.shape
(2, 18, 18)
However you can also specify the axis along which the arrays get joined. So if you wanted to join channels of a RGB image, you would use:
>>> rgb = np.stack([r, g, b], axis=-1) # r, g and b each have shape (18, 18)
>>> rgb.shape
(18, 18, 3)