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Importing An Svg File Into A Matplotlib Figure

I like to produce high quality plots and therefore avoid rasterized graphics as much as possible. I am trying to import an svg file on to a matplotlib figure: import matplotlib.py

Solution 1:

Maybe what you are looking for is svgutils

import svgutils.compose as sc
from IPython.display import SVG # /!\ note the 'SVG' function also in svgutils.compose
import numpy as np

# drawing a random figure on top of your SVG
fig, ax = plt.subplots(1, figsize=(4,4))
ax.plot(np.sin(np.linspace(0,2.*np.pi)), np.cos(np.linspace(0,2.*np.pi)), 'k--', lw=2.)
ax.plot(np.random.randn(20)*.3, np.random.randn(20)*.3, 'ro', label='random sampling')
ax.legend()
ax2 = plt.axes([.2, .2, .2, .2])
ax2.bar([0,1], [70,30])
plt.xticks([0.5,1.5], ['water  ', ' ground'])
plt.yticks([0,50])
plt.title('ratio (%)')
fig.savefig('cover.svg', transparent=True)
# here starts the assembling using svgutils 
sc.Figure("8cm", "8cm", 
    sc.Panel(sc.SVG("./Worldmap_northern.svg").scale(0.405).move(36,29)),
    sc.Panel(sc.SVG("cover.svg"))
    ).save("compose.svg")
SVG('compose.svg')

Output:

enter image description here


Solution 2:

to anyone ending up here in 2021...

I'd suggest having a look at the cairosvg package
(conda install -c conda-forge cairosvg)

https://cairosvg.org/

import cairosvg
import matplotlib.pyplot as plt
from PIL import Image
from io import BytesIO

img = cairosvg.svg2png("... the content of the svg file ...")
img = Image.open(BytesIO(img_png))
plt.imshow(img)

Solution 3:

SVG (Scalable Vector Graphics) is a vectorial format, which means the image is not composed of pixels, but instead of relative paths that can be scaled arbitrarily.

NumPy/Matplotlib, as numerics software, only really works with pixel graphics and cannot handle svg. I would suggest first converting the svg file to e.g. a png file by opening and saving it in software such as Inkscape (which is free). Then, open the exported png in Python.

Alternatively, use the wikimedia provided versions of the file in png format on the picture's information page (click on the download button to the right of the picture).

If you really believe you need the vectorial form, well, there is no way to do that. You can always superpose the matplotlib figure on to the figure manually (using the matplotlib Artist to draw on the plot canvas), or through some pycairo magic, and save that. But Matplotlib cannot work directly with svg content.


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