Datasculptor's picture
Duplicate from AIGC-Audio/AudioGPT
98f685a
from numpy import array, zeros, full, argmin, inf, ndim
from scipy.spatial.distance import cdist
from math import isinf
def dtw(x, y, dist, warp=1, w=inf, s=1.0):
"""
Computes Dynamic Time Warping (DTW) of two sequences.
:param array x: N1*M array
:param array y: N2*M array
:param func dist: distance used as cost measure
:param int warp: how many shifts are computed.
:param int w: window size limiting the maximal distance between indices of matched entries |i,j|.
:param float s: weight applied on off-diagonal moves of the path. As s gets larger, the warping path is increasingly biased towards the diagonal
Returns the minimum distance, the cost matrix, the accumulated cost matrix, and the wrap path.
"""
assert len(x)
assert len(y)
assert isinf(w) or (w >= abs(len(x) - len(y)))
assert s > 0
r, c = len(x), len(y)
if not isinf(w):
D0 = full((r + 1, c + 1), inf)
for i in range(1, r + 1):
D0[i, max(1, i - w):min(c + 1, i + w + 1)] = 0
D0[0, 0] = 0
else:
D0 = zeros((r + 1, c + 1))
D0[0, 1:] = inf
D0[1:, 0] = inf
D1 = D0[1:, 1:] # view
for i in range(r):
for j in range(c):
if (isinf(w) or (max(0, i - w) <= j <= min(c, i + w))):
D1[i, j] = dist(x[i], y[j])
C = D1.copy()
jrange = range(c)
for i in range(r):
if not isinf(w):
jrange = range(max(0, i - w), min(c, i + w + 1))
for j in jrange:
min_list = [D0[i, j]]
for k in range(1, warp + 1):
i_k = min(i + k, r)
j_k = min(j + k, c)
min_list += [D0[i_k, j] * s, D0[i, j_k] * s]
D1[i, j] += min(min_list)
if len(x) == 1:
path = zeros(len(y)), range(len(y))
elif len(y) == 1:
path = range(len(x)), zeros(len(x))
else:
path = _traceback(D0)
return D1[-1, -1], C, D1, path
def accelerated_dtw(x, y, dist, warp=1):
"""
Computes Dynamic Time Warping (DTW) of two sequences in a faster way.
Instead of iterating through each element and calculating each distance,
this uses the cdist function from scipy (https://docs.scipy.org/doc/scipy/reference/generated/scipy.spatial.distance.cdist.html)
:param array x: N1*M array
:param array y: N2*M array
:param string or func dist: distance parameter for cdist. When string is given, cdist uses optimized functions for the distance metrics.
If a string is passed, the distance function can be 'braycurtis', 'canberra', 'chebyshev', 'cityblock', 'correlation', 'cosine', 'dice', 'euclidean', 'hamming', 'jaccard', 'kulsinski', 'mahalanobis', 'matching', 'minkowski', 'rogerstanimoto', 'russellrao', 'seuclidean', 'sokalmichener', 'sokalsneath', 'sqeuclidean', 'wminkowski', 'yule'.
:param int warp: how many shifts are computed.
Returns the minimum distance, the cost matrix, the accumulated cost matrix, and the wrap path.
"""
assert len(x)
assert len(y)
if ndim(x) == 1:
x = x.reshape(-1, 1)
if ndim(y) == 1:
y = y.reshape(-1, 1)
r, c = len(x), len(y)
D0 = zeros((r + 1, c + 1))
D0[0, 1:] = inf
D0[1:, 0] = inf
D1 = D0[1:, 1:]
D0[1:, 1:] = cdist(x, y, dist)
C = D1.copy()
for i in range(r):
for j in range(c):
min_list = [D0[i, j]]
for k in range(1, warp + 1):
min_list += [D0[min(i + k, r), j],
D0[i, min(j + k, c)]]
D1[i, j] += min(min_list)
if len(x) == 1:
path = zeros(len(y)), range(len(y))
elif len(y) == 1:
path = range(len(x)), zeros(len(x))
else:
path = _traceback(D0)
return D1[-1, -1], C, D1, path
def _traceback(D):
i, j = array(D.shape) - 2
p, q = [i], [j]
while (i > 0) or (j > 0):
tb = argmin((D[i, j], D[i, j + 1], D[i + 1, j]))
if tb == 0:
i -= 1
j -= 1
elif tb == 1:
i -= 1
else: # (tb == 2):
j -= 1
p.insert(0, i)
q.insert(0, j)
return array(p), array(q)
if __name__ == '__main__':
w = inf
s = 1.0
if 1: # 1-D numeric
from sklearn.metrics.pairwise import manhattan_distances
import numpy as np
x = [0, 0, 1, 1, 2, 4, 2, 1, 2, 0]
x = np.array(x).reshape([-1,1,1])
y = [1, 1, 1, 2, 2, 2, 2, 3, 2, 0]
y = np.array(y).reshape([-1,1,1])
dist_fun = manhattan_distances
w = 1
# s = 1.2
elif 0: # 2-D numeric
from sklearn.metrics.pairwise import euclidean_distances
x = [[0, 0], [0, 1], [1, 1], [1, 2], [2, 2], [4, 3], [2, 3], [1, 1], [2, 2], [0, 1]]
y = [[1, 0], [1, 1], [1, 1], [2, 1], [4, 3], [4, 3], [2, 3], [3, 1], [1, 2], [1, 0]]
dist_fun = euclidean_distances
else: # 1-D list of strings
from nltk.metrics.distance import edit_distance
# x = ['we', 'shelled', 'clams', 'for', 'the', 'chowder']
# y = ['class', 'too']
x = ['i', 'soon', 'found', 'myself', 'muttering', 'to', 'the', 'walls']
y = ['see', 'drown', 'himself']
# x = 'we talked about the situation'.split()
# y = 'we talked about the situation'.split()
dist_fun = edit_distance
dist, cost, acc, path = dtw(x, y, dist_fun, w=w, s=s)
# Vizualize
from matplotlib import pyplot as plt
plt.imshow(cost.T, origin='lower', cmap=plt.cm.Reds, interpolation='nearest')
plt.plot(path[0], path[1], '-o') # relation
plt.xticks(range(len(x)), x)
plt.yticks(range(len(y)), y)
plt.xlabel('x')
plt.ylabel('y')
plt.axis('tight')
if isinf(w):
plt.title('Minimum distance: {}, slope weight: {}'.format(dist, s))
else:
plt.title('Minimum distance: {}, window widht: {}, slope weight: {}'.format(dist, w, s))
plt.show()