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I have images that have had features extracted with a contouring algorithm (I'm doing astrophysical source extraction). This approach yields a "feature map" that has each pixel "labeled" with an integer (usually ~1000 unique features per map).

I would like to show each individual feature as its own contour.

One way I could accomplish this is:

for ii in range(labelmask.max()):

However, this is very slow, particularly for large images. Is there a better (faster) way?

P.S. A little testing showed that skimage's find-contours is no faster.

As per @tcaswell's comment, I need to explain why contour(labels, levels=np.unique(levels)+0.5)) or something similar doesn't work:

1. Matplotlib spaces each subsequent contour "inward" by a linewidth to avoid overlapping contour lines.  This is not the behavior desired for a labelmask.
2. The lowest-level contours encompass the highest-level contours
3. As a result of the above, the highest-level contours will be surrounded by a miniature version of whatever colormap you're using and will have extra-thick contours compared to the lowest-level contours.
share|improve this question
I would try either masking down the image you hand to contour to just the region of interest, extracting the path it gives back, and then shifting them to be in the right place. Or use some sort of edge detection on your mask. – tcaswell Mar 2 '13 at 18:18
How would edge detection help? I think the 'mask' image should already be as edgy as possible... are there routines that turn sharp edges into sets-of-points that can be used as contours? – keflavich Mar 2 '13 at 18:19
This question is related and useful:… (describes find_contours and creating the label map I already have) – keflavich Mar 2 '13 at 18:29
The second part is what I was thinking (turning the outline -> a path), see . That is essentially what contour is doing underneath, you might be able to same some time by skipping a bunch of the auxiliary work it does. – tcaswell Mar 2 '13 at 18:53
you should add the contents of your comment on my now deleted answer to your original question. – tcaswell Mar 2 '13 at 19:12
up vote 1 down vote accepted

Sorry for answering my own... impatience (and good luck) got the better of me.

The key is to use matplotlib's low-level C routines:

I = imshow(data)
E = I.get_extent()
x,y = np.meshgrid(np.linspace(E[0],E[1],labels.shape[1]), np.linspace(E[2],E[3],labels.shape[0]))

for ii in np.unique(labels):
    if ii == 0: continue
    tracer = matplotlib._cntr.Cntr(x,y,labels*(labels==ii))
    T = tracer.trace(0.5)
    contour_xcoords,contour_ycoords = T[0].T
    # to plot them:
    plot(contour_xcoords, contour_ycoords)

Note that labels*(labels==ii) will put each label's contour at a slightly different location; change it to just labels==ii if you want overlapping contours between adjacent labels.

share|improve this answer
Answering your own question is totally cool. Remember to accept it as well. – tcaswell Mar 2 '13 at 19:16
Additional note: if you want the contours to be not-offset, use tracer = matplotlib._cntr.Cntr(x,y,(labels==ii)) instead – keflavich Mar 7 '13 at 1:12
you should edit your answer to include that note, comments are not stable. – tcaswell Mar 7 '13 at 1:58

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