Eccentricity estimation in Python

I've got a binary numpy array and have labeled the connected regions with scipy.ndimage. Is there a call that I can make to estimate the eccentricity of each labeled section?

Edit:

I'm trying to develop criteria to find and toss the labeled sections that are much longer than they are wide. In the following array, I might want to keep the 7s and toss the 3s.

``````3 3 0 0 0 0
3 3 0 7 7 7
3 3 0 7 7 7
3 3 0 7 0 7
3 3 0 0 0 0
``````
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What is your definition of eccentricity? You have a 2D array? You want to work on the tensor of inertia of you points? –  hpixel Nov 16 '11 at 22:46
Eccentricity as a measure of how enlongated each labeled blob is. It's a 2D array, yes. It'd be nice if it could also work for 3, though that could be for later. –  ajwood Nov 17 '11 at 1:44

I guess you first need a bit of math. Let first consider you have only one blob labeled as 1. Your matrix label will be a scalar field. You should first compute its average:

where is your label (it as no index since it is a scalar). Then compute:

A good definition of eccentricity would be the ratio of the two biggest eigenvalues of the traceless part of this matrix (in 2D, you will have only 2 eigenvalues). You can also normalize it to get a value between 0 and 1. I am not used enough with scipy to write an efficient code for that.

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This would be perfect. My gut tells me it's just a couple of calls with scipy, but I have no idea how to do it... –  ajwood Nov 18 '11 at 14:17

Assuming you assign each label only once: a matrix with an eccentric blob will have more empty rows than empty column or vice versa.

``````labels = [2,3,7] # or whatever you have
good_labels = []
for label in labels:
m = matrix == label
non_empty_columns = sum(sum(m)>0)
non_empty_rows = sum(sum(m.transpose())>0)
if 1.0 * non_empty_rows / (non_empty_columns+0.001) > threshold:
good_labels.append(label)
``````

That will remove very long (vertically) blobs, turn rows and columns around to remove horizontally stretched blobs.

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In many cases this would work, but what about cases like a 'T' shape? –  ajwood Nov 17 '11 at 19:13