# How to extract R,G,B values with numpy into seperate arrays

Suppose I have a image with some dimension `(1920, 1080, 3)` , I want to extract out R,G,B values into separate arrays `R , G, B` . I tried to do it like

``````for i in range(image.shape):
for j in range(image.shape):
B = np.append(B, image[i, j])
G = np.append(G, image[i, j])
R = np.append(R, image[i, j])
``````

But as expected this is very slow , How can I do this with numpy in built function?

• This is basic indexing: `B = image[:,:,0]; G = image[:,:,1]; R = image[:,:,2]`. See pretty much any numpy tutorial. – Warren Weckesser Jan 6 '17 at 7:19
• or just roll your axis, then take simple slices ... rolled = np.rollaxis(rgb,-1) ... r = rolled, g = rolled, b = rolled – NaN Jan 6 '17 at 7:22

If you want it to use in `OpenCV` way then you may use `cv2.split()`, keeping in mind channels of your image:

``````b, g, r    = cv2.split(image) # For BGR image
b, g, r, a = cv2.split(image) # for BGRA image
``````

Or if you may like direct numpy format then you may use directly [which seems to be more efficient as per comments of @igaurav]

``````b, g, r    = image[:, :, 0], image[:, :, 1], image[:, :, 2] # For RGB image
b, g, r, a = image[:, :, 0], image[:, :, 1], image[:, :, 2], image[:, :, 3] # for BGRA image
``````

You may use `np.shape` to check the number of channels in the given image.

`dsplit` it.

``````import numpy as np

def channelSplit(image):
return np.dsplit(image,image.shape[-1])

[B,G,R]=channelSplit(image)
``````

This works for RGB or RGBA images.