13

I'm just a beginner here in signal processing. Here is my code so far on extracting MFCC feature from an audio file (.WAV):

from python_speech_features import mfcc
import scipy.io.wavfile as wav

(rate,sig) = wav.read("AudioFile.wav")
mfcc_feat = mfcc(sig,rate)

print(mfcc_feat)

I just wanted to plot the mfcc features to know what it looks like.

9

This will plot the MFCC as colors, which is a more popular way

import matplotlib.pyplot as plt
import numpy as np
from matplotlib import cm
fig, ax = plt.subplots()
mfcc_data= np.swapaxes(mfcc_data, 0 ,1)
cax = ax.imshow(mfcc_data, interpolation='nearest', cmap=cm.coolwarm, origin='lower')
ax.set_title('MFCC')

plt.show()
4
from python_speech_features import mfcc
import scipy.io.wavfile as wav
import matplotlib.pyplot as plt

(rate,sig) = wav.read("AudioFile.wav")
mfcc_feat = mfcc(sig,rate)

print(mfcc_feat)
plt.plot(mfcc_feat)
plt.show()
4
  • 5
    Please edit with more information. Code-only and "try this" answers are discouraged, because they contain no searchable content, and don't explain why someone should "try this". We make an effort here to be a resource for knowledge. Apr 21 '17 at 18:14
  • Please edit your answer to include some explanation. Code-only answers do very little to educate future SO readers. Your answer is in the moderation queue for being low-quality. Apr 22 '17 at 2:37
  • what if I want to work with mp3/.mp4 files how will above code change?
    – kRazzy R
    Dec 1 '17 at 18:56
  • This is not even the proper way of plotting mfcc features
    – Isaac
    Feb 12 '19 at 16:56
3

The previous answer did no defined mfcc_data.

import matplotlib.pyplot as plt
import numpy as np
from matplotlib import cm

(rate,sig) = wav.read("file.wav")
mfcc_feat = mfcc(sig,rate)

ig, ax = plt.subplots()
mfcc_data= np.swapaxes(mfcc_feat, 0 ,1)
cax = ax.imshow(mfcc_data, interpolation='nearest', cmap=cm.coolwarm, origin='lower', aspect='auto')
ax.set_title('MFCC')
#Showing mfcc_data
plt.show()
#Showing mfcc_feat
plt.plot(mfcc_feat)
plt.show()

MFCC_data MFCC_feat

1

Initially I read the wav file using librosa and fed with inbuilt function

import librosa
audio_path='../.../../../combo.wav' #location
(xf, sr) = librosa.load(audio_path)    
mfccs = librosa.feature.mfcc(y=xf, sr=sr, n_mfcc=4)
librosa.display.specshow(mfccs, x_axis='time')
plt.colorbar()
plt.tight_layout()
plt.title('mfcc')
plt.show

I used librosa

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