# Converting a grayscale image to an RGB heatmap image with matplotlib [duplicate]

How do I convert an M x N grayscale image, or in other words a matrix or 2-D array, into an RGB heatmap, or in other words an M x N x 3 array?

Example:

`````` [[0.9, 0.3], [0.2, 0.1]]
``````

should become

``````[[red, green-blue], [green-blue, blue]]
``````

where red is `[1, 0, 0]`, blue is `[0, 0, 1]`,etc.

• Also see: stackoverflow.com/questions/14869321/… . Remember to accept your own answer when it will let you. Mar 15, 2013 at 3:32
• I agree, this is similar to that question, although this is worded more clearly. (I searched for a while and couldn't find that question.) I'm pretty new to stackoverflow; do we merge or something?
– rd11
Mar 15, 2013 at 12:41
• Don't worry about it, you need to take no action. I have flagged it as a possible duplicate, if 4 other people with 3k+ rep agree this will get closed as a duplicate (which just means no new answers, and a permanent link to the other question). If other people don't agree, the comment will stay, but my close vote will go away. I agree you did a better job of identifying the real problem (based on the comment in your answer about using `imshow`). Mar 15, 2013 at 14:44

``````import matplotlib.pyplot as plt

img = [[0.9, 0.3], [0.2, 0.1]]

cmap = plt.get_cmap('jet')

rgba_img = cmap(img)
rgb_img = np.delete(rgba_img, 3, 2)
``````

`cmap` is an instance of matplotlib's `LinearSegmentedColormap` class, which is derived from the `Colormap` class. It works because of the `__call__` function defined in `Colormap`. Here is the docstring from matplotlib's git repo for reference, since it's not described in the API.

``````def __call__(self, X, alpha=None, bytes=False):
"""
*X* is either a scalar or an array (of any dimension).
If scalar, a tuple of rgba values is returned, otherwise
an array with the new shape = oldshape+(4,). If the X-values
are integers, then they are used as indices into the array.
If they are floating point, then they must be in the
interval (0.0, 1.0).
Alpha must be a scalar between 0 and 1, or None.
If bytes is False, the rgba values will be floats on a
0-1 scale; if True, they will be uint8, 0-255.
"""
``````

A simpler option is to display `img`, using `plt.imshow` or `plt.matshow`, and then copy or save the result as an RGB or RGBA image. This was too slow for my application (~ 30 times slower on my machine).

• +1. With the described method (instead of imshow) you are guaranteed to get back an image with same dimensions. If you want an image of different size, then you can get it from imshow (with some tuning needed), since it already interpolates the image for you. Mar 14, 2013 at 20:45