# 2D plot of a matrix with colors like in a spectrogram

How to plot, with Python, a 2D matrix `A[i,j]` like this:

• `i` is the x-axis
• `j` is the y-axis
• `A[i,j]` is a value between 0 and 100 that has to be drawn by a colour (ex: 0=blue, 100=red)

Is there a Python function for that?

(NB: I don't want a function that does the spectrogram for me, such as `specgram`, because I want to compute the FFT of the signal myself; thus I only need a function that plots a matrix with colors) • The `imshow` function is dedicated to this task. You'll find several examples in the matplotlib gallery. Nov 19, 2013 at 10:56
• Thanks for `imshow` but `pcolormesh` is more what I was looking for : courspython.com/v3/visualisation_couleur.html
– Basj
Nov 19, 2013 at 11:01
• You shouldnt use `pcolormesh` if you have a regular grid, why dont you use `imshow`? Nov 19, 2013 at 11:10
• `pcolor` and `pcolormesh` are very similar, but with performance differences. They are meant for irregular grids. You provide the corner coordinates and mpl draws a polygon between them. If you have a regular grid, with a constant resolution along the axis `imshow` is a much better choice, more robust and much faster. Nov 19, 2013 at 11:39
• Read the documentation! The `extent` keyword is what you're probably looking for. Nov 19, 2013 at 12:02

Let `Z` be the array, here is what I finally use:

``````plt.imshow(np.transpose(Z), extent=[0,4.2,0,48000], cmap='jet',
vmin=-100, vmax=0, origin='lowest', aspect='auto')
plt.colorbar()
plt.show()
``````

Notes:

• `'jet'` is the colormap that is seen in the question's image, see also these colormaps

• setting `origin='lowest'` has the same effect than replacing `np.transpose(Z)` by `np.transpose(Z)[::-1,]`

• `vmin`, `vmax` give the scale (here from 0 to -100 dB in the example)

• `extent` gives the limits of the x-axis (here 0 to 4.2 seconds) and y-axis (0 to 48000 Hz) (in this example I'm plotting the spectrogram of a 4.2 second-long audio file of samplerate 96Khz)

• if `aspect='auto'` is not set, the plot would be very thin and very high (due to 4.2 vs. 48000 !)

• Just FYI: There's nothing wrong with using `pcolormesh` in this case. It's slighly less efficient than `imshow`, but for a moderately sized array, you won't have problems. The difference is that `pcolor` and `pcolormesh` produce vector output. (i.e. each pixel is a polygon) If you save to pdf or svg and edit the output, you'll see the difference. `pcolor` is for irregular grids, and `pcolormesh` is an efficient version of `pcolor` for regular grids. The advantage over `imshow` is you don't have to override the aspect ratio and it's easier to specify the x and y coordinates in some cases. Nov 19, 2013 at 16:54
• Also there's nothing wrong with using `imshow` for this either. The big difference is raster vs. vector output. If you're saving to a raster format, you won't notice a difference. Nov 19, 2013 at 16:56