# 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