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Audio Labeler

(Removed) Define and visualize ground-truth labels

Since R2018b

Audio Labeler has been removed. Use Signal Labeler instead. For more information, see Compatibility Considerations.


The Audio Labeler app enables you to label ground-truth data at both the region level and file level.

Using the app, you can:

  • Create label definitions for consistent and fast labeling.

  • Visualize the time-domain waveform during playback.

  • Interactively specify labels at the file level and region level. You can specify regions by drawing directly on the time-domain waveform.

  • Record new audio to add to your dataset.

  • Apply automatic labeling of detected speech regions.

  • Apply automatic word labeling using third-party speech-to-text transcription services. See Speech-to-Text Transcription for more information.

The app exports data as a labeledSignalSet object. You can use labeledSignalSet to train a network, classifier, or analyze data and report statistics.

Audio Labeler app

Open the Audio Labeler App

  • MATLAB® toolstrip: On the Apps tab, under Signal Processing and Communications, click the app icon.

  • MATLAB command prompt: Enter audioLabeler.


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In this example, you create a logical mask for an audio signal where ones correspond to the utterance "yes" and zeros correspond to the absence of the utterance "yes". To create the mask, you use the IBM™ speech-to-text API through the Audio Labeler app.

This example requires that you install the Speech-to-Text Transcription functionality.

Listen to the audio file that you want to label and then visualize it in the time domain.

[audioIn,fs] = audioread("KeywordSpeech-16-16-mono-34secs.flac");


t = (0:numel(audioIn)-1)/fs;
xlabel('Time (s)')

Open the Audio Labeler app and load the KeywordSpeech-16-16-mono-34secs.flac file into the Data Browser.

Under Automation, click Speech to Text. On the Speech to Text tab, select your preferred speech-to-text API. This example uses the IBM speech-to-text API. Select Segment Words so that the text labels are divided into individual words instead of sentences. Click Run to interface with the speech-to-text API and create a new region of interest (ROI) label. The ROI label contains words detected and labeled by IBM's speech-to-text API.

Close the Speech to Text tab and then export the labeled signal set to the workspace.

The labels are exported to the workspace as labeledSignalSet object with a time stamp. Set the variable labeledSet to the time-stamped labeledSignalSet object.

labeledSet = myLabeledSet;

Inspect the SpeechContent label.

speechContent = labeledSet.Labels.SpeechContent{1}
speechContent=52×2 table
     ROILimits        Value  
    ____________    _________

    0.87    1.31    "first"  
    1.31    1.41    "you"    
    1.41    1.63    "said"   
    1.63    2.22    "yes"    
    2.25    2.52    "then"   
    2.52    3.03    "no"     
    3.09    3.22    "and"    
    3.22    3.32    "you"    
    3.32    3.52    "said"   
    3.52    3.94    "yes"    
    3.94    4.16    "then"   
    4.16    4.66    "no"     
    4.83    5.39    "yes"    
    5.42    5.57    "the"    
    5.57    6.07    "no"     
    6.15    6.56    "driving"

The speech-to-text API returns the limits of the ROI labels in seconds. Use the SpeechContent table to create a logical vector.

keywordLabels = speechContent(speechContent.Value == "yes",:);
keywordROILimitsInSamples = round(keywordLabels.ROILimits*fs);

mask = zeros(size(audioIn),"logical");
for i = 1:size(keywordROILimitsInSamples)
    mask(keywordROILimitsInSamples(i,1):keywordROILimitsInSamples(i,2)) = true;

Plot the speech signal and the keyword spotting mask.

plot(t,audioIn, ...
xlabel('Time (s)')
legend('Audio','Keyword Spotting Mask','Location','southeast')

Programmatic Use

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audioLabeler opens the app, enabling you to label ground-truth data about audio.

Version History

Introduced in R2018b

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