I have a set of curves defined as 2D arrays (number of points, number of coordinates). I am calculating a distance matrix for them using Hausdorff distance. My current code is as follows. Unfortunately it is too slow with 500-600 curves each having 50-100 3D points. Is there any faster way for that?
def distanceBetweenCurves(C1, C2): D = scipy.spatial.distance.cdist(C1, C2, 'euclidean') #none symmetric Hausdorff distances H1 = np.max(np.min(D, axis=1)) H2 = np.max(np.min(D, axis=0)) return (H1 + H2) / 2. def distanceMatrixOfCurves(Curves): numC = len(Curves) D = np.zeros((numC, numC)) for i in range(0, numC-1): for j in range(i+1, numC): D[i, j] = D[j, i] = distanceBetweenCurves(Curves[i], Curves[j]) return D