# Apply functions to 3D numpy array

I have a numpy 3D array from Image(PIL/Pillow) object.

`````` [[178 214 235]
[180 215 236]
[180 215 235]
...,
[146 173 194]
[145 172 193]
[146 173 194]]
...,
[[126 171 203]
[125 169 203]
[128 171 205]
...,
[157 171 182]
[144 167 182]
[131 160 180]]]
``````

Image size about 500x500 px. I need to apply two functions for each pixel.

1. Convert RGB to LAB (using functions from python-colormath) This function takes 1D array like `[157, 171, 182]` and return 1D array with LAB color, e.g. `[53.798345635, -10.358443685, 100.358443685]`.
2. Find nearest color from custom palette using `scipy.spatial.cKDTree`.

Custom palette is kd-tree.

``````palette = [[0,0,0], [127,127,127], [255,255,255]] #  or [[0.,0.,0.], [50.,0.,0.], [100.,0.,0.]] for LAB color
tree = scipy.spatial.cKDTree(palette)
def find nearest(pixel):
distance, result = tree.query(pixel)
new_pixel = palette[result]
return new_pixel
``````

Is there a faster solution than iterating with Python? E.g.

``````for row in array:
for pixel in row:
apply_fuction1(pixel) # where pixel is one dimensional array like [157 171 182]
apply_fuction2(pixel)
``````

UPD1 I dont know what I am doing wrong, but:

``````python3 -mtimeit -s'import test' 'test.find_nearest()' # my variant with 2 loops and Image.putdata()
10 loops, best of 3: 3.35 sec per loop
python3 -mtimeit -s'import test' 'test.find_nearest_with_map()' # list comprehension with map and Image.fromarray() by traceur
10 loops, best of 3: 3.67 sec per loop
python3 -mtimeit -s'import test' 'test.along_axis()' # np.apply_along_axis() and Image.fromarray() by AdrienG
10 loops, best of 3: 5.25 sec per loop

def find_nearest(array=test_array):
new_image = []
for row in array:
for pixel in row:
distance, result = tree.query(pixel)
new_pixel = palette[result]
new_image.append(new_pixel)
im = Image.new('RGB', (300, 200))
im.putdata(new_image)

def _find_nearest(pixel):
distance, result = tree.query(pixel)
new_pixel = palette[result]
return new_pixel

def along_axis(array=test_array):
array = np.apply_along_axis(_find_nearest, 2, array)
im = Image.fromarray(np.uint8(array))

def find_nearest_with_map(array=test_array):
array = [list(map(_find_nearest, row)) for row in array]
im = Image.fromarray(np.uint8(array))
``````
-
Can you explain what you need to do in a bit more detail? EG Does #1 want a 1D or 2D array, how are you indexing the `pixel` array, and what does the "custom palette" look like? – Ophion Mar 15 '14 at 13:54
@Ophion All my functions take one pixel color as argument (1D array, e.g. [157, 171, 182]) and return 1D array. First function returns LAB color, e.g. [53.798345635, -10.358443685, 100.358443685], second function I will explain more detail in question in 5 min – Pylyp Mar 15 '14 at 17:35

``````a = np.arange(12).reshape((4,3))
def sum(array):
return np.sum(array)

np.apply_along_axis(sum, 1, a)
>>> array([ 3, 12, 21, 30])
``````
-
How to get the same 3D array after `apply_along_axis`? I got `KeyError: ((1, 1, 3), '<i4')` after `Image.fromarray(numpy.apply_along_axis(function, 2, pixels))` – Pylyp Mar 15 '14 at 13:25
actually, this is your function that returns a 2D from 1D array, so the final array will be 3D – AdrienG Mar 15 '14 at 13:27
@Pylyp, `apply_along_axis` is going to replace each 1D array it acts on with whatever `function` returns; make sure your `function` returns a 1D array. – SlightlyCuban Mar 15 '14 at 14:19
@Pylyp also, `apply_along_axis` is going to return a new array. If you need the original, make sure to keep a reference to it. If you're making many, many images at once, keep an eye on memory usage. – SlightlyCuban Mar 15 '14 at 14:24
@SlightlyCuban It was a problem with PIL/Pillow `im = Image.fromarray(np.uint8(array))` works correctly – Pylyp Mar 17 '14 at 12:19