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I need help determining if what I'm doing is sufficient. I have extracted the "curvature" from two human faces (essentially the curve that goes from one ear, down the face to the chin, and back up to the other ear). Now I want to compute a curve similarity with another human face.

To try to make this invariant to the possible different curve sizes (since the images these faces are taken from can be taken from varying distances from the person) I've normalized both the X and Y dimensions by subtracting the mean and dividing by the standard deviation (I'm not sure this is correct).

Finally, I'm using Dynamic Time Warping to compare these curves, this is the kind of result I get:

enter image description here

Basically I'm asking whether this approach sounds reasonable.

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there is a vid on how to do this... http://alumni.cs.ucr.edu/~ratana/demo1.htm

if you look at the UCR archive, 3 of the datasets are faces http://www.cs.ucr.edu/~eamonn/time_series_data/

and DTW does work well here

eamonn

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Thanks for the answer. I ended up using Procrustes analysis, which makes more sense when directly comparing the curves. In the link there's a conversion from the contour to the time series, and then a comparison, which is more contrived than what I'm looking for. –  user2974849 Nov 16 '13 at 5:09
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