Corrected file handling.
This commit is contained in:
+38
-32
@@ -1,4 +1,5 @@
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__author__ = 'shua'
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import argparse
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import numpy as np
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import wave
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@@ -12,9 +13,11 @@ from copy import deepcopy
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from scipy.fftpack import fft, ifft
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from scikits.talkbox.linpred import lpc
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import shutil
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epsilon = 0.0000000001
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prefac = .97
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def build_data(wav,begin=None,end=None):
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wav_in_file = wave.Wave_read(wav)
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wav_in_num_samples = wav_in_file.getnframes()
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@@ -29,6 +32,7 @@ def build_data(wav,begin=None,end=None):
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X.append(data[i:i + 480])
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return X
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def periodogram(x, nfft=None, fs=1):
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"""Compute the periodogram of the given signal, with the given fft size.
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@@ -89,6 +93,7 @@ def periodogram(x, nfft=None, fs=1):
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fgrid = np.linspace(0, fs * 0.5, pn)
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return pxx[:pn] / (n * fs), fgrid
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def arspec(x, order, nfft=None, fs=1):
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"""Compute the spectral density using an AR model.
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@@ -140,6 +145,7 @@ def arspec(x, order, nfft=None, fs=1):
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fx = np.linspace(0, fs * 0.5, pxx.size)
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return pxx, fx
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def taper(n, p=0.1):
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"""Return a split cosine bell taper (or window)
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@@ -165,6 +171,7 @@ def taper(n, p=0.1):
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return w
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def atal(x, order, num_coefs):
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x = np.atleast_1d(x)
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n = x.size
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@@ -184,10 +191,12 @@ def atal(x, order, num_coefs):
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c[m] += (float(k)/float(m)-1)*a[k]*c[m-k]
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return c
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def preemp(input, p):
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"""Pre-emphasis filter."""
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return lfilter([1., -p], 1, input)
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def arspecs(input_wav,order,Atal=False):
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epsilon = 0.0000000001
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data = input_wav
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@@ -207,6 +216,7 @@ def arspecs(input_wav,order,Atal=False):
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ar = dct(mspec1, type=2, norm='ortho', axis=-1)
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return ar[:30]
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def specPS(input_wav,pitch):
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N = len(input_wav)
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samps = N/pitch
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@@ -233,41 +243,37 @@ def specPS(input_wav,pitch):
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# Use the DCT to 'compress' the coefficients (spectrum -> cepstrum domain)
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ceps = dct(mspec, type=2, norm='ortho', axis=-1)
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return ceps[:50]
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def build_single_feature_row(data,Atal):
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lpcs = [8,9,10,11,12,13,14,15,16,17]
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arr = []
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periodo = specPS(data,50)
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arr.extend(periodo)
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for j in lpcs:
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if Atal:
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ars = arspecs(data, j, Atal=True)
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else:
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ars = arspecs(data, j)
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arr.extend(ars)
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for i in range(len(arr)):
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if np.isnan(np.float(arr[i])):
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arr[i] = 0.0
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return arr
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def Create_features(input_wav,feature_file_name, begin=None,end=None,Atal=False):
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X = build_data(input_wav,begin,end)
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full_path = os.path.realpath(__file__)
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output_directory = os.path.dirname(full_path)+'/Features/'
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if Atal:
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feature_file = output_directory+"ATAL_features_"+feature_file_name+'.txt'
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else:
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feature_file = output_directory+"features_"+feature_file_name+'.txt'
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def build_single_feature_row(data, Atal):
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lpcs = [8, 9, 10, 11, 12, 13, 14, 15, 16, 17]
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arr = []
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periodo = specPS(data, 50)
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arr.extend(periodo)
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for j in lpcs:
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if Atal:
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ars = arspecs(data, j, Atal=True)
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else:
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ars = arspecs(data, j)
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arr.extend(ars)
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for i in range(len(arr)):
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if np.isnan(np.float(arr[i])):
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arr[i] = 0.0
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return arr
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def create_features(input_wav_filename, feature_filename, begin=None, end=None, Atal=False):
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X = build_data(input_wav_filename, begin, end)
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if begin is not None and end is not None:
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arr = [input_wav.replace('.wav','')]
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arr.extend(build_single_feature_row(X,Atal))
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np.savetxt(feature_file,np.asarray([arr]),delimiter=",",fmt="%s")
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return arr
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arr = [input_wav_filename]
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arr.extend(build_single_feature_row(X, Atal))
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np.savetxt(feature_filename, np.asarray([arr]), delimiter=",", fmt="%s")
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return arr
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arcep_mat = []
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for i in range(len(X)):
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arr = [input_wav.replace('.wav','_PART_')+str(i)]
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arr.extend(build_single_feature_row(X[i], Atal))
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arcep_mat.append(arr)
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np.savetxt(feature_file,np.asarray(arcep_mat),delimiter=",",fmt="%s")
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arr = [input_wav_filename + str(i)]
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arr.extend(build_single_feature_row(X[i], Atal))
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arcep_mat.append(arr)
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np.savetxt(feature_filename, np.asarray(arcep_mat), delimiter=",", fmt="%s")
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return arcep_mat
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+10
-17
@@ -1,14 +1,13 @@
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import Extract_Features as features
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from subprocess import call
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import os
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import sys
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import shlex
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import argparse
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import tempfile
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def easy_call(command, debug_mode=False):
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def easy_call(command, debug_mode=True):
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try:
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#command = "time " + command
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if debug_mode:
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print >>sys.stderr, command
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call(command, shell=True)
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@@ -28,20 +27,14 @@ if __name__ == "__main__":
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parser.add_argument('--begin', help="beginning time in the WAV file", default=0.0, type=float)
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parser.add_argument('--end', help="end time in the WAV file", default=-1.0, type=float)
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args = parser.parse_args()
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full_path = os.path.realpath(__file__)
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if not os.path.exists(os.path.dirname(full_path)+'/Features/'):
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os.makedirs(os.path.dirname(full_path)+'/Features/')
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if not os.path.exists(os.path.dirname(full_path)+'/Predictions/'):
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os.makedirs(os.path.dirname(full_path)+'/Predictions/')
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tmp_features_filename = tempfile._get_default_tempdir() + "/" + next(tempfile._get_candidate_names()) + ".txt"
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print tmp_features_filename
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if args.begin > 0.0 or args.end > 0.0:
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Data = features.Create_features(args.wav_file, args.formants_file, args.begin, args.end)
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ff = str(os.path.dirname(os.path.realpath(__file__))+'/Features/features_' + args.formants_file+'.txt')
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pf = str(os.path.dirname(os.path.realpath(__file__))+'/Predictions/' +args.formants_file+'.csv')
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easy_call("th load_estimation_model.lua " + ff + ' ' + pf)
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features.create_features(args.wav_file, tmp_features_filename, args.begin, args.end)
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easy_call("th load_estimation_model.lua " + tmp_features_filename + ' ' + args.formants_file)
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else:
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Data = features.Create_features(args.wav_file, args.formants_file)
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ff = str(os.path.dirname(os.path.realpath(__file__))+'/Features/features_' + args.formants_file+'.txt')
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pf = str(os.path.dirname(os.path.realpath(__file__))+'/Predictions/' +args.formants_file+'.csv')
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easy_call("th load_tracking_model.lua " + ff + ' ' + pf)
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features.create_features(args.wav_file, tmp_features_filename)
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easy_call("th load_tracking_model.lua " + tmp_features_filename + ' ' + args.formants_file)
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