11

I'm trying to learn opencv using python and came across this code below:

import cv2
import numpy as np
from matplotlib import pyplot as plt

BLUE = [255,0,0]

img1 = cv2.imread('opencv_logo.png')
replicate = cv2.copyMakeBorder(img1,10,10,10,10,cv2.BORDER_REPLICATE)
reflect = cv2.copyMakeBorder(img1,10,10,10,10,cv2.BORDER_REFLECT)
reflect101 = cv2.copyMakeBorder(img1,10,10,10,10,cv2.BORDER_REFLECT_101)
wrap = cv2.copyMakeBorder(img1,10,10,10,10,cv2.BORDER_WRAP)
constant= cv2.copyMakeBorder(img1,10,10,10,10,cv2.BORDER_CONSTANT,value=BLUE)

plt.subplot(231),plt.imshow(img1,'gray'),plt.title('ORIGINAL')
plt.subplot(232),plt.imshow(replicate,'gray'),plt.title('REPLICATE')
plt.subplot(233),plt.imshow(reflect,'gray'),plt.title('REFLECT')

plt.subplot(234),plt.imshow(reflect101,'gray'),plt.title('REFLECT_101')
plt.subplot(235),plt.imshow(wrap,'gray'),plt.title('WRAP')
plt.subplot(236),plt.imshow(constant,'gray'),plt.title('CONSTANT')

plt.show()

source : http://docs.opencv.org/master/doc/py_tutorials/py_core/py_basic_ops/py_basic_ops.html#exercises

What does plt.imshow(img1, 'gray') do? I tried searching Google and all I could understand was that the 'gray' argument was a Color map. But my image (pic is there on the site. see link) is not displayed in grayscale. I tried removing the second argument. So the code was like plt.imshow(img1). It executes. The image remains same as before. Then what does the second argument 'gray' do? Can someone explain all this to me? Any help appreciated. Thanks.

PS. I'm totally new to Matplotlib

24

When img1 has shape (M,N,3) or (M,N,4), the values in img1 are interpreted as RGB or RGBA values. In this case the cmap is ignored. Per the help(plt.imshow) docstring:

cmap : ~matplotlib.colors.Colormap, optional, default: None

If None, default to rc image.cmap value. cmap is ignored when X has RGB(A) information

However, if img were an array of shape (M,N), then the cmap controls the colormap used to display the values.


import numpy as np
import matplotlib.pyplot as plt
import mpl_toolkits.axes_grid1 as axes_grid1
np.random.seed(1)

data = np.random.randn(10, 10)

fig = plt.figure()
grid = axes_grid1.AxesGrid(
    fig, 111, nrows_ncols=(1, 2), axes_pad = 0.5, cbar_location = "right",
    cbar_mode="each", cbar_size="15%", cbar_pad="5%",)

im0 = grid[0].imshow(data, cmap='gray', interpolation='nearest')
grid.cbar_axes[0].colorbar(im0)

im1 = grid[1].imshow(data, cmap='jet', interpolation='nearest')
grid.cbar_axes[1].colorbar(im1)
plt.savefig('/tmp/test.png', bbox_inches='tight', pad_inches=0.0, dpi=200,)

enter image description here

| improve this answer | |
  • 1
    Thanks. Could you explain what cmap is used for? Why do we use color maps? – Clive Sep 2 '14 at 14:51
  • 4
    The colormap is a dictionary which maps numbers to colors. Matplotlib provides many built-in colormaps. When you have a 2D array, such as data above, the values at each grid point is a float between 0 and 1. The gray colormap maps 0 to black and 1 to white. The jet colormap maps 0 to blue and 1 to red. See the link for a visual display of the colors in between. – unutbu Sep 2 '14 at 14:56
  • 1
    Correction: The data array used above has values which are normally distributed; by default the colormap adjusts the colors to the data's range. – unutbu Sep 2 '14 at 16:14
  • @ubuntu: I understood your first comment, then got confused after the last one, what exactly does it mean? a previously color image, was represented in floats (2d, 1 channel), and now, we want to get that back to rgb ? – Rika Nov 6 '16 at 7:08
  • @Hossein: Since data = np.random.randn(10, 10), the minimum and maximum values of data could be different from 0 and 1. The imshow function normalizes data so that min(data) gets mapped to 0 and max(data) gets mapped to 1. Then the colormap is applied. The purpose of the second comment was merely to stress the existence of that normalization step. – unutbu Nov 6 '16 at 11:00

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