问题
I have a 2D numpy array of 2D points:
np.random.seed(0)
a = np.random.rand(3, 4, 2) # each value is a 2D point
I would like to sort each row by the norm of every point
norms = np.linalg.norm(a, axis=2) # shape(3, 4)
indices = np.argsort(norms, axis=0) # indices of each sorted row
Now I would like to create an array with the same shape and values as a
. that will have each row of 2D points sorted by their norm.
How can I achieve that?
I tried variations of np.take & np.take_along_axis but with no success.
for example:
np.take(a, indices, axis=1) # shape (3,3,4,2)
This samples a
3 times, once for each row in indices
.
I would like to sample a
just once. each row in indices
has the columns that should be sampled from the corresponding row.
回答1:
If I understand you correctly, you want this:
norms = np.linalg.norm(a,axis=2) # shape(3,4)
indices = np.argsort(norms , axis=1)
np.take_along_axis(a, indices[:,:,None], axis=1)
output for your example:
[[[0.4236548 0.64589411]
[0.60276338 0.54488318]
[0.5488135 0.71518937]
[0.43758721 0.891773 ]]
[[0.07103606 0.0871293 ]
[0.79172504 0.52889492]
[0.96366276 0.38344152]
[0.56804456 0.92559664]]
[[0.0202184 0.83261985]
[0.46147936 0.78052918]
[0.77815675 0.87001215]
[0.97861834 0.79915856]]]
来源:https://stackoverflow.com/questions/64235838/how-to-sort-each-row-of-a-3d-numpy-array-by-another-2d-array