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Does anyone know of any methods of extracting the data from a MATLAB fig file using Python? I know these are binary files but the methods in the Python Cookbook for .mat files http://www.scipy.org/Cookbook/Reading_mat_files don't seem to work for .fig files...

Thanks in advance for any help, Dan

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4 Answers

up vote 6 down vote accepted

.fig files are .mat files (containing a struct), see http://undocumentedmatlab.com/blog/fig-files-format/

As the reference you give states, structs are only supported up to v7.1: http://www.scipy.org/Cookbook/Reading_mat_files

So, in MATLAB I save using -v7:

plot([1 2],[3 4])
hgsave(gcf,'c','-v7');

Then in Python 2.6.4 I use:

>>> from scipy.io import loadmat
>>> x = loadmat('c.fig')
>>> x
{'hgS_070000': array([[<scipy.io.matlab.mio5.mat_struct object at 0x1500e70>]], dtype=object), '__version__': '1.0', '__header__': 'MATLAB 5.0 MAT-file, Platform: MACI64, Created on: Fri Nov 18 12:02:31 2011', '__globals__': []}
>>> x['hgS_070000'][0,0].__dict__
{'handle': array([[1]], dtype=uint8), 'children': array([[<scipy.io.matlab.mio5.mat_struct object at 0x1516030>]], dtype=object), '_fieldnames': ['type', 'handle', 'properties', 'children', 'special'], 'type': array([u'figure'], dtype='<U6'), 'properties': array([[<scipy.io.matlab.mio5.mat_struct object at 0x1500fb0>]], dtype=object), 'special': array([], shape=(1, 0), dtype=float64)}

Where I used .__dict__ to see how to traverse the structure. E.g. to get XData and YData I can use:

>>> x['hgS_070000'][0,0].children[0,0].children[0,0].properties[0,0].XData
array([[1, 2]], dtype=uint8)
>>> x['hgS_070000'][0,0].children[0,0].children[0,0].properties[0,0].YData
array([[3, 4]], dtype=uint8)

Showing that I'd used plot([1 2],[3 4]) in MATLAB (the child is the axis and the grandchild is the lineseries).

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This is much easier way available. It's based on the newer Scipy and loadmat:

http://answerpot.com/showthread.php?3707193-loadmat+and+figure

And my small extension to it for the simple 2D lines is:

from scipy.io import loadmat



d = loadmat('../impulse_all.fig',squeeze_me=True, struct_as_record=False)
# d = loadmat('R11_resuspension.fig',squeeze_me=True, struct_as_record=False)
ax1 = d['hgS_070000'].children
if size(ax1) > 1:
    ax1 = ax1[0]

figure
hold(True)
counter = 0
for line in ax1.children:
    if line.type == 'graph2d.lineseries':
        marker = "%s" % line.properties.Marker
        linestyle = "%s" % line.properties.LineStyle
        r,g,b =  line.properties.Color
        marker_size = line.properties.MarkerSize
        x = line.properties.XData
        y = line.properties.YData
        plot(x,y,marker,linestyle=linestyle,color = (r,g,b),markersize=marker_size)
    elif line.type == 'text':
        if counter < 1:
            xlabel("%s" % line.properties.String,fontsize =16)
            counter += 1
        elif counter < 2:
            ylabel("%s" % line.properties.String,fontsize = 16)
            counter += 1



hold(False)
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What does the line containing only figure mean? –  user647772 Sep 27 '12 at 15:56
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When you save a MATLAB figure, it dumps the Handle Graphics hierarchy into a structure, saves it to a .mat file, and changes the extension to .fig. So .fig files are just .mat files, and if the data you're looking for was stored somewhere in the original figure it will be in there. If you manually change the extension back to .mat you can load it into MATLAB and take a look.

I'm afraid I don't know much about reading .mat files from Python, but if you have a way of doing that in general, you should also be able to read in a .fig file.

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I found Alex's answer very appealing, but I extended his code a bit. First of all, I included the preamble to show where the figure, ylabel, etc. comes from. Second of all, I included the legend! I'm rather new to Python, so any suggestions for improvements are highly welcomed.

def plotFig(filename,fignr=1):
   from scipy.io import loadmat
   from numpy import size
   from matplotlib.pyplot import plot,figure,hold,xlabel,ylabel,show,clf,xlim,legend
   d = loadmat(filename,squeeze_me=True, struct_as_record=False)
   ax1 = d['hgS_070000'].children
   if size(ax1) > 1:
       legs= ax1[1]
       ax1 = ax1[0]
   else:
        legs=0
   figure(fignr)
   clf()
   hold(True)
   counter = 0    
   for line in ax1.children:
       if line.type == 'graph2d.lineseries':
           if hasattr(line.properties,'Marker'):
               mark = "%s" % line.properties.Marker
               mark = mark[0]
           else:
               mark = '.'
           if hasattr(line.properties,'LineStyle'):
               linestyle = "%s" % line.properties.LineStyle
           else:
               linestyle = '-'
           if hasattr(line.properties,'Color'):
               r,g,b =  line.properties.Color
           else:
               r = 0
               g = 0
               b = 1
           if hasattr(line.properties,'MarkerSize'):
               marker_size = line.properties.MarkerSize
           else:
               marker_size = 1                
           x = line.properties.XData
           y = line.properties.YData
           plot(x,y,marker=mark,linestyle=linestyle,\
           color(r,g,b),markersize=marker_size)
       elif line.type == 'text':
           if counter < 1:
               xlabel("%s" % line.properties.String,fontsize =16)
               counter += 1
           elif counter < 2:
               ylabel("%s" % line.properties.String,fontsize = 16)
               counter += 1        
   xlim(ax1.properties.XLim)
   if legs:        
       leg_entries = tuple(legs.properties.String)
       py_locs = ['upper center','lower center','right','left','upper right','upper left','lower right','lower left','best']
       MAT_locs=['North','South','East','West','NorthEast', 'NorthWest', 'SouthEast', 'SouthWest','Best']
       Mat2py = dict(zip(MAT_locs,py_locs))
       location = legs.properties.Location
       legend(leg_entries,loc=Mat2py[location])
    hold(False)
    show()
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