Spectral entropy for audio signals and auditory spectrograms
Read in an audio file, calculate the entropy using default parameters, and then plot the results.
[audioIn,fs] = audioread('Counting-16-44p1-mono-15secs.wav'); entropy = spectralEntropy(audioIn,fs); t = linspace(0,size(audioIn,1)/fs,size(entropy,1)); plot(t,entropy) xlabel('Time (s)') ylabel('Entropy')
Read in an audio file and then calculate the mel spectrogram using the melSpectrogram
function.
[audioIn,fs] = audioread('Counting-16-44p1-mono-15secs.wav');
[s,cf,t] = melSpectrogram(audioIn,fs);
Calculate the entropy of the mel spectrogram over time. Plot the results.
entropy = spectralEntropy(s,cf); plot(t,entropy) xlabel('Time (s)') ylabel('Entropy')
Read in an audio file.
[audioIn,fs] = audioread('Counting-16-44p1-mono-15secs.wav');
Calculate the entropy of the power spectrum over time. Calculate the entropy for 50 ms Hamming windows of data with 25 ms overlap. Use the range from 62.5 Hz to fs
/2 for the entropy calculation. Plot the results.
entropy = spectralEntropy(audioIn,fs, ... 'Window',hamming(round(0.05*fs)), ... 'OverlapLength',round(0.025*fs), ... 'Range',[62.5,fs/2]); t = linspace(0,size(audioIn,1)/fs,size(entropy,1)); plot(t,entropy) xlabel('Time (s)') ylabel('Entropy')
Create a dsp.AudioFileReader
object to read in audio data frame-by-frame. Create a dsp.SignalSink
to log the spectral entropy calculation.
fileReader = dsp.AudioFileReader('Counting-16-44p1-mono-15secs.wav');
logger = dsp.SignalSink;
In an audio stream loop:
Read in a frame of audio data.
Calculate the spectral entropy for the frame of audio.
Log the spectral entropy for later plotting.
To calculate the spectral entropy for only a given input frame, specify a window with the same number of samples as the input, and set the overlap length to zero. Plot the logged data.
while ~isDone(fileReader) audioIn = fileReader(); entropy = spectralEntropy(audioIn,fileReader.SampleRate, ... 'Window',hamming(size(audioIn,1)), ... 'OverlapLength',0); logger(entropy) end plot(logger.Buffer) ylabel('Entropy')
Use dsp.AsyncBuffer
if
The input to your audio stream loop has a variable samples-per-frame.
The input to your audio stream loop has an inconsistent samples-per-frame with the analysis window of spectralEntropy
.
You want to calculate the spectral entropy for overlapped data.
Create a dsp.AsyncBuffer
object, reset the logger, and release the file reader.
buff = dsp.AsyncBuffer; reset(logger) release(fileReader)
Specify that the spectral entropy is calculated for 50 ms frames with a 25 ms overlap.
fs = fileReader.SampleRate; samplesPerFrame = round(fs*0.05); samplesOverlap = round(fs*0.025); samplesPerHop = samplesPerFrame - samplesOverlap; win = hamming(samplesPerFrame); while ~isDone(fileReader) audioIn = fileReader(); write(buff,audioIn); while buff.NumUnreadSamples >= samplesPerHop audioBuffered = read(buff,samplesPerFrame,samplesOverlap); entropy = spectralEntropy(audioBuffered,fs, ... 'Window',win, ... 'OverlapLength',0); logger(entropy) end end release(fileReader)
Plot the logged data.
plot(logger.Buffer)
ylabel('Entropy')
x
— Input signalInput signal, specified as a vector, matrix, or 3-D array. How the function
interprets x
depends on the shape of f
.
Data Types: single
| double
f
— Sample rate or frequency vector (Hz)Sample rate or frequency vector in Hz, specified as a scalar or vector,
respectively. How the function interprets x
depends on the shape
of f
:
If f
is a scalar, x
is interpreted
as a time-domain signal, and f
is interpreted as the sample
rate. In this case, x
must be a real vector or matrix. If
x
is specified as a matrix, the columns are interpreted as
individual channels.
If f
is a vector, x
is interpreted
as a frequency-domain signal, and f
is interpreted as the
frequencies, in Hz, corresponding to the rows of x
. In this
case, x
must be a real
L-by-M-by-N array,
where L is the number of spectral values at given frequencies
of f
, M is the number of individual
spectrums, and N is the number of channels.
The number of rows of x
, L, must be
equal to the number of elements of f
.
Data Types: single
| double
Specify optional
comma-separated pairs of Name,Value
arguments. Name
is
the argument name and Value
is the corresponding value.
Name
must appear inside quotes. You can specify several name and value
pair arguments in any order as
Name1,Value1,...,NameN,ValueN
.
'Window',hamming(256)
Note
The following name-value pair arguments apply if x
is a
time-domain signal. If x
is a frequency-domain signal, name-value
pair arguments are ignored.
'Window'
— Window applied in time domainrectwin(round(f
*0.03))
(default) | vectorWindow applied in the time domain, specified as the comma-separated pair
consisting of 'Window'
and a real vector. The number of elements in
the vector must be in the range [1,
size(
]. The number of elements in the
vector must also be greater than x
,1)OverlapLength
.
Data Types: single
| double
'OverlapLength'
— Number of samples overlapped between adjacent windowsround(f
*0.02)
(default) | non-negative scalarNumber of samples overlapped between adjacent windows, specified as the
comma-separated pair consisting of 'OverlapLength'
and an integer
in the range [0, size(
).Window
,1)
Data Types: single
| double
'FFTLength'
— Number of bins in DFTnumel(Window
)
(default) | positive scalar integerNumber of bins used to calculate the DFT of windowed input samples, specified as
the comma-separated pair consisting of 'FFTLength'
and a positive
scalar integer. If unspecified, FFTLength
defaults to the number
of elements in the Window
.
Data Types: single
| double
'Range'
— Frequency range (Hz)[0,f
/2]
(default) | two-element row vectorFrequency range in Hz, specified as the comma-separated pair consisting of
'Range'
and a two-element row vector of increasing real values in
the range [0, f
/2].
Data Types: single
| double
'SpectrumType'
— Spectrum type'power'
(default) | 'magnitude'
Spectrum type, specified as the comma-separated pair consisting of
'SpectrumType'
and 'power'
or
'magnitude'
:
'power'
–– The spectral entropy is calculated for the
one-sided power spectrum.
'magnitude'
–– The spectral entropy is calculated for the
one-sided magnitude spectrum.
Data Types: char
| string
entropy
— Spectral entropySpectral entropy, returned as a scalar, vector, or matrix. Each row of
entropy
corresponds to the spectral entropy of a window of
x
. Each column of entropy
corresponds to an
independent channel.
The spectral entropy is calculated as described in [1]:
where
sk is the spectral value at bin k.
b1 and b2 are the band edges, in bins, over which to calculate the spectral entropy.
[1] Misra, H., S. Ikbal, H. Bourlard, and H. Hermansky. "Spectral Entropy Based Feature for Robust ASR." 2004 IEEE International Conference on Acoustics, Speech, and Signal Processing.
You have a modified version of this example. Do you want to open this example with your edits?