Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have the following numpy array:

#                      A    B    C         Y
my_arr = np.array([ [.20, .54, .26],     # <0
                    [.22, .54, .24],     # 1
                    [.19, .56, .25],     # 2
                    [.19, .58, .23],     # 3
                    [.17, .62, .21] ])   # 4+

if a user enters a y (example, 2.5) I should out put three values, one for A, B, and C:

in my example A: .19, B: .57, C: .24

More Examples:

Y     A      B      C
0.2   .20    .54    .26 
1.5   .215   .55    .245
4.0   .17    .62    .21
8.7   .17    .62    .21

The user will enter a multiple of y values as a numpy array. the result should be an array as well

I've done bits and pieces of the code for example

#boundaries:
y[y < 0] = 0
y[y > 4] = 4

I'm also assuming that scipy.ndimage / map_coordinates will best fit my requirements rather than scipy.interpolate but I could be wrong

share|improve this question
    
Should it be B: .57? –  unutbu Jul 15 '10 at 13:18
    
Fixed, thanks :) –  dassouki Jul 15 '10 at 13:19
    
possible duplicate of Scipy interpolation on a numpy array –  Judge Maygarden Jul 15 '10 at 14:34
    
that was my question as well, the difference between the two, is one interpolates over x, y and this question only over the y –  dassouki Jul 15 '10 at 15:08
add comment

2 Answers

up vote 6 down vote accepted
from scipy import array, ndimage

#              A    B    C         Y
m = array([ [.20, .54, .26],     # 0
            [.22, .54, .24],     # 1
            [.19, .56, .25],     # 2
            [.19, .58, .23],     # 3
            [.17, .62, .21] ])   # 4

inputs = array([-1, 0, 0.2, 1, 1.5, 2, 2.5, 3, 4, 8.7])
inputs[inputs < 0] = 0
inputs[inputs > 4] = 4

for y in inputs:
    x = ndimage.map_coordinates(m, [y * numpy.ones(3), numpy.arange(3)], order=1)
    print y, x

>>> 
0.0 [ 0.2   0.54  0.26]
0.0 [ 0.2   0.54  0.26]
0.2 [ 0.204  0.54   0.256]
1.0 [ 0.22  0.54  0.24]
1.5 [ 0.205  0.55   0.245]
2.0 [ 0.19  0.56  0.25]
2.5 [ 0.19  0.57  0.24]
3.0 [ 0.19  0.58  0.23]
4.0 [ 0.17  0.62  0.21]
4.0 [ 0.17  0.62  0.21]
share|improve this answer
    
what if the y axis is different from 0 to 4 –  dassouki Sep 16 '10 at 3:42
add comment

There might be a better way using scipy.ndimage, but here is how you could do it with scipy.interpolate.interp1d:

import numpy as np
import scipy.interpolate as spi

#                      A    B    C         Y
my_arr = np.array([ [.20, .54, .26],     # 0
                    [.22, .54, .24],     # 1
                    [.19, .56, .25],     # 2
                    [.19, .58, .23],     # 3
                    [.17, .62, .21] ])

print(my_arr)
Y=np.arange(len(my_arr))
interp_funcs=[spi.interp1d(Y,my_arr[:,col]) for col in range(3)]
y=np.array([2.5,0.2,1.5,4.0,8.7])
y[y < 0] = 0
y[y > 4] = 4
print(np.vstack(f(y) for f in interp_funcs))
# [[ 0.19   0.204  0.205  0.17   0.17 ]
#  [ 0.57   0.54   0.55   0.62   0.62 ]
#  [ 0.24   0.256  0.245  0.21   0.21 ]]
share|improve this answer
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.