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()): contour(labelmask,levels=[ii-0.5])
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.