I have a masked array which is used by matplotlib.plt.contourf to project a temperature contour on a glabal map. I was trying to smooth the contour, but unfortunately none of the proposed solutions seems to be able to handle masked array. I tested these solutions:

-scipy.ndimage.gaussian_filter - moving averages

- scipy.ndimage.zoom

none of them works(they count in the masked values also). Is there any way I can smooth my contour on maskedArray

I have added this part after trying the proposed 'inpaint' solution and the results were unchanged. here is the code (if it helps)

```
import Scientific.IO.NetCDF as S
import mpl_toolkits.basemap as bm
import numpy.ma as MA
import numpy as np
import matplotlib.pyplot as plt
import inpaint
def main():
fileobj = S.NetCDFFile('Bias.ANN.tas_A1_1.nc', mode='r')
# take the values
set1 = {'time', 'lat', 'lon'}
set2 = set(fileobj.variables.keys())
set3 = set2 - set1
datadim = set3.pop()
print "******************datadim: "+datadim
data = fileobj.variables[datadim].getValue()[0,:,:]
lon = fileobj.variables['lon'].getValue()
lat = fileobj.variables['lat'].getValue()
fileobj.close()
data, lon = bm.shiftgrid(180.,data, lon,start=False)
data = MA.masked_equal(data, 1.0e20)
#data2 = inpaint.replace_nans(data, 10, 0.25, 2, 'idw')
#- Make 2-D longitude and latitude arrays:
[lon2d, lat2d] =np.meshgrid(lon, lat)
#- Set up map:
mapproj = bm.Basemap(projection='cyl',
llcrnrlat=-90.0, llcrnrlon=-180.00,
urcrnrlat=90.0, urcrnrlon=180.0)
mapproj.drawcoastlines(linewidth=.5)
mapproj.drawmapboundary(fill_color='.8')
#mapproj.drawparallels(N.array([-90, -45, 0, 45, 90]), labels=[1,0,0,0])
#mapproj.drawmeridians(N.array([0, 90, 180, 270, 360]), labels=[0,0,0,1])
lonall, latall = mapproj(lon2d, lat2d)
cmap=plt.cm.Spectral
#- Make a contour plot of the temperature:
mymapf = plt.contourf(lonall, latall, data, 20, cmap=cmap)
#plt.clabel(mymapf, fontsize=12)
plt.title(cmap.name)
plt.colorbar(mymapf, orientation='horizontal')
plt.savefig('sample2.png', dpi=150, edgecolor='red', format='png', bbox_inches='tight', pad_inches=.2)
plt.close()
if __name__ == "__main__":
main()
```

I am comparing the output from this code (the first figure), with output of the same datafile from Panoply. Zoomin in and looking more precisely it seems like it is not the smoothness problem, but the pyplot model provides one stripe slimmer, or the contours are cut earlier (the outer boundaries shows this clearly, and inner contours are different due to this fact). It makes it to look like that the pyplot model is not as smooth as the Panoply one. how can I get (nearly) the same model? Am I distinguishing it right?