Publication | Closed Access
Speech stuttering assessment using sample entropy and Least Square Support Vector Machine
22
Citations
22
References
2012
Year
Unknown Venue
Sample EntropyEngineeringMachine LearningFeature ExtractionFeature Extraction ProcessUclass DatabaseSpeech RecognitionImage AnalysisSpeech CodingData SciencePattern RecognitionNoiseRobust Speech RecognitionHealth SciencesComputer ScienceStatistical Pattern RecognitionWavelet TheorySignal ProcessingSpeech CommunicationSpeech TechnologySpeech AnalysisSpeech ProcessingSpeech InputSpeech PerceptionDevelopmental StutteringWaveform AnalysisSample Entropy FeaturePattern Recognition Application
This work is intended to discuss the performance of sample entropy feature for the recognition of stuttered events. The data for the analysis is taken from the UCLASS database. Manual segmentation is performed to identify the stuttered events prior to the feature extraction process. Wavelet packet decomposition is performed, and the sample entropy features are extracted using three different filter banks, Bark scale, Mel scale and Erb scale. The extracted features are tested using Least Square Support Vector Machine (LS SVM) for the identification of repetition and prolongation. Ten fold cross validation method is used to ensure the reliability of the results. The experimental investigations reveal that the proposed method shows promising results in distinguishing between the two stuttering events.
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