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如何使用3D数组和2D数组numpy进行遮罩

[英]How to mask with 3d array and 2d array numpy

如何使用1d数组从3d数组中选择一组元素。

#These are my 3 data types
# A = numpy.ndarray[numpy.ndarray[float]]
# B1 = numpy.ndarray[numpy.ndarray[numpy.ndarray[float]]]
#B2=numpy.ndarray[numpy.ndarray[numpy.ndarray[float]]]
#I want to choose values from A based on values from B1 in the B2

这是我尝试过的,但是返回了所有False

A2[i]=image_values[updated_image_values==initial_means[i]]

例:

A=[[1,1,1][2,2,2]]
B=[[[1,1,1],[2,3,4]],[[2,2,2],[1,1,1]],[[1,1,1],[2,2,2]]]
B2=[[[2,2,2],[9,3,21]],[[22,0,-2],[-1,-1,1]],[[1,-1,-1],[10,0,2]]]

#A2 is calculated as the means of the B2 values that correspond 
#to it's value according to B

因此,要计算A2我们使用B2中的值等于A中的值。因此,对于第一个索引A[0]B[0][0]B[1][1]B[2][0]等于A[0] 因此,对于A2[0] ,我们获得B2B的对应值,并使用这些值计算每个索引的平均值:

#A2[0][0]=(B2[0][0][0]+B2[1][1][0]+B2[2][0][0]) /3 = 0.67

#A2[1][2]=(B2[1][0][2]+B2[2][1][2]) /2 = 0

#After doing this for every A2 value, A2 should be:

A2=[[0.67,0,0.67],[16,0,0]]

这是使用np.add.reduceat的矢量化方法-

idx = np.argwhere((B == A[:,None,None]).all(-1))
B2_indexed = B2[idx[:,1],idx[:,2]]
_,start, count = np.unique(idx[:,0],return_index=1,return_counts=1)
out = np.add.reduceat(B2_indexed,start)/count.astype(float)[:,None]

另外,我们可以避免使用3D蒙版来创建4D蒙版,而不是获取idx ,从而节省一些内存,例如,

dims = np.maximum(B.max(axis=(0,1)),A.max(0))+1
A_reduced = np.ravel_multi_index(A.T,dims)
B_reduced = np.ravel_multi_index(B.T,dims)
idx = np.argwhere(B_reduced.T == A_reduced[:,None,None])

这是使用单循环的另一种方法-

out = np.empty(A.shape)
for i in range(A.shape[0]):
    r,c = np.where((B == A[i]).all(-1))    
    out[i] = B2[r,c].mean(0)

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