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Voice Pathology Detection Using Deep Learning: a Preliminary Study

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This paper describes a preliminary investigation of Voice Pathology Detection using Deep Neural Networks (DNN). We used voice recordings of sustained vowel /a/ produced at normal pitch from German corpus Saarbruecken Voice Database (SVD). This corpus contains voice recordings and electroglottograph signals of more than 2 000 speakers. The idea behind this experiment is the use of convolutional layers in combination with recurrent Long-Short-Term-Memory (LSTM) layers on raw audio signal. Each recording was split into 64 ms Hamming windowed segments with 30 ms overlap. Our trained model achieved 71.36% accuracy with 65.04% sensitivity and 77.67% specificity on 206 validation files and 68.08% accuracy with 66.75% sensitivity and 77.89% specificity on 874 testing files. This is a promising result in favor of this approach because it is comparable to similar previously published experiment that used different methodology. Further investigation is needed to achieve the state-of-the-art results.

Pavol Harar, Jesus B. Alonso-Hernandez, Jiri Mekyska, Zoltan Galaz, Radim Burget, Zdenek Smekal• 2019

Related benchmarks

TaskDatasetResultRank
Repeatability assessmentALS
ICC0.4743
5
Dysphonic voice detectionSVD (train)
Mean Accuracy77.42
5
Dysphonic voice detectionSVD (val)
Mean Accuracy69.14
5
Dysphonic voice detectionMEEI (test)
Mean Accuracy66.14
5
Dysphonic voice detectionHUPA (test)
Mean Accuracy49.18
5
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