Python提取频域特征知识点浅析
在多数的现代语音识别系统中,人们都会用到频域特征。梅尔频率倒谱系数(mfcc),首先计算信号的功率谱,然后用滤波器和离散余弦变换的变换来提取特征。本文重点介绍如何提取mfcc特征。
首先创建有一个python文件,并导入库文件: from scipy.io import wavfile from python_speech_features import mfcc, logfbank import matplotlib.pylab as plt1、首先创建有一个python文件,并导入库文件: from scipy.io import wavfile from python_speech_features import mfcc, logfbank import matplotlib.pylab as plt
读取音频文件:
samplimg_freq, audio = wavfile.read("data/input_freq.wav")
提取mfcc特征和过滤器特征:
mfcc_features = mfcc(audio, samplimg_freq)
filterbank_features = logfbank(audio, samplimg_freq)
打印参数,查看可生成多少个窗体:
print('\nmfcc:\nnumber of windows =', mfcc_features.shape[0]) print('length of each feature =', mfcc_features.shape[1]) print('\nfilter bank:\nnumber of windows=', filterbank_features.shape [0]) print('length of each feature =', filterbank_features.shape[1])
将mfcc特征可视化。转换矩阵,使得时域是水平的:
mfcc_features = mfcc_features.t plt.matshow(mfcc_features) plt.title('mfcc')
将滤波器组特征可视化。转化矩阵,使得时域是水平的:
filterbank_features = filterbank_features.t plt.matshow(filterbank_features) plt.title('filter bank') plt.show()
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