Type 1 fonts with log graphs

I'm trying to use Matplotlib graphs as part of a camera-ready submission, and the publishing house requires the use of Type 1 fonts only.

I'm finding that the PDF backend happily outputs Type-1 fonts for simple graphs with linear Y axes, but outputs Type-3 fonts for logarithmic Y axes.

Using a logarithmic yscale incurs the use of mathtext, which seems to use Type 3 fonts, presumably because of the default use of exponential notation. I can use an ugly hack to get around this - using pyplot.yticks() to force the axis ticks to not use exponents - but this would require moving the plot region to accommodate large labels (like 10 ^ 6) or writing the axes as 10, 100, 1K, etc. so they fit.

I've tested the example below with the matplotlib master branch as of today, as well as 1.1.1, which produces the same behavior, so I don't know that this is a bug, probably just unexpected behavior.

#!/usr/bin/env python
# Simple program to test for type 1 fonts.
# Generate a line graph w/linear and log Y axes.

from matplotlib import rc, rcParams

rc('font',**{'family':'sans-serif','sans-serif':['Helvetica']})
#rc('font',**{'family':'sans-serif','sans-serif':['computer modern sans serif']})

# These lines are needed to get type-1 results:
# http://nerdjusttyped.blogspot.com/2010/07/type-1-fonts-and-matplotlib-figures.html
rcParams['ps.useafm'] = True
rcParams['pdf.use14corefonts'] = True
rcParams['text.usetex'] = False

import matplotlib.pyplot as plt

YSCALES = ['linear', 'log']

def plot(filename, yscale):
plt.figure(1)
xvals = range(1, 2)
yvals = xvals
plt.plot(xvals, yvals)
plt.yscale(yscale)
plt.savefig(filename + '.pdf')

if __name__ == '__main__':
for yscale in YSCALES:
plot('linegraph-' + yscale, yscale)


Does anyone know a clean way to get Type 1 fonts with log axes?

Thanks!

-
Just for awareness, this was also posted on the mpl-users mailinglist: matplotlib.1069221.n5.nabble.com/… –  pelson Oct 30 '12 at 9:25
Some useful references (no answer to this question in them): matplotlib.1069221.n5.nabble.com/… & nerdjusttyped.blogspot.co.uk/2010/07/… –  pelson Oct 30 '12 at 9:27

This is the code I use for camera-ready submissions:

from matplotlib import pyplot as plt

def SetPlotRC():
#If fonttype = 1 doesn't work with LaTeX, try fonttype 42.
plt.rc('pdf',fonttype = 1)
plt.rc('ps',fonttype = 1)

def ApplyFont(ax):

ticks = ax.get_xticklabels() + ax.get_yticklabels()

text_size = 14.0

for t in ticks:
t.set_fontname('Times New Roman')
t.set_fontsize(text_size)

txt = ax.get_xlabel()
txt_obj = ax.set_xlabel(txt)
txt_obj.set_fontname('Times New Roman')
txt_obj.set_fontsize(text_size)

txt = ax.get_ylabel()
txt_obj = ax.set_ylabel(txt)
txt_obj.set_fontname('Times New Roman')
txt_obj.set_fontsize(text_size)

txt = ax.get_title()
txt_obj = ax.set_title(txt)
txt_obj.set_fontname('Times New Roman')
txt_obj.set_fontsize(text_size)


The fonts won't appear until you run savefig

Example:

import numpy as np

SetPlotRC()

t = np.arange(0, 2*np.pi, 0.01)
y = np.sin(t)

plt.plot(t,y)
plt.xlabel("Time")
plt.ylabel("Signal")
plt.title("Sine Wave")

ApplyFont(plt.gca())
plt.savefig("sine.pdf")

-
I just tried it with a log-axis. It seems to work for me. Sorry this answer is so late. Hope your paper submission went well! I've been there too. –  DrRobotNinja Aug 31 '13 at 20:43

The preferred method to get Type 1 fonts via matplotlib seems to be to use TeX for typesetting. Doing so results in all axis being typeset in the default math font, which is typically undesired but which can be avoided by using TeX-commands.

Long story short, I found this solution:

import matplotlib.pyplot as mp
import numpy as np

mp.rcParams['text.usetex'] = True #Let TeX do the typsetting
mp.rcParams['text.latex.preamble'] = [r'\usepackage{sansmath}', r'\sansmath'] #Force sans-serif math mode (for axes labels)
mp.rcParams['font.family'] = 'sans-serif' # ... for regular text
mp.rcParams['font.sans-serif'] = 'Helvetica, Avant Garde, Computer Modern Sans serif' # Choose a nice font here

fig = mp.figure()
dim = [0.1, 0.1, 0.8, 0.8]

ax.text(0.001, 0.1, 'Sample Text')
ax.set_xlim(10**-4, 10**0)
ax.set_ylim(10**-2, 10**2)
ax.set_xscale("log")
ax.set_yscale("log")
ax.set_xlabel('$\mu_0$ (mA)')
ax.set_ylabel('R (m)')
t = np.arange(10**-4, 10**0, 10**-4)
y = 10*t

mp.plot(t,y)

mp.savefig('tmp.png', dpi=300)


Then results in this

-