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Classification of Spontaneous Speech of Individuals with Dementia Based on Automatic Prosody Analysis Using Support Vector Machines (SVM)

  • Roelant Ossewaarde
  • , Roel Jonkers
  • , Fedor Jalvingh
  • , Yvonne Bastiaanse

    Onderzoeksoutput: Conference contributionAcademicpeer review

    5 Citaten (Scopus)
    248 Downloads (Pure)

    Samenvatting

    Analysis of spontaneous speech is an important tool for clinical linguists to diagnose various types of neurodegenerative disease that affect the language processing areas. Prosody, fluency and voice quality may be affected in individuals with Parkinson's disease (PD, degradation of voice quality, unstable pitch), Alzheimer's disease (AD, monotonic pitch), and the non-fluent type of Primary Progressive Aphasia (PPA-NF, hesitant, non-fluent speech). In this study, the performance of a SVM classifier is evaluated that is trained on acoustic features only. The goal is to distinguish different types of brain damage based on recorded speech. Results show that the classifier can distinguish some dementia types (PPA-NF, AD), but not others (PD).
    Originele taal-2English
    TitelProceedings of the Thirty-Second International Florida Artificial Intelligence Research Society Conference
    RedacteurenRoman Barták, Keith Brawner
    Plaats van productiePalo Alto, California
    UitgeverijAAAI Press
    Pagina's241-244
    Aantal pagina's4
    StatusPublished - 2019

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