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Using Crowdsourcing for Labelling Emotional Speech Assets

Research output: Contribution to conferencePaperpeer-review

Abstract

The success of supervised learning approaches for the classification of emotion in speech depends highly on the quality of the training data. The manual annotation of emotion speech assets is the primary way of gathering training data for emotional speech recognition. This position paper proposes the use of crowdsourcing for the rating of emotion speech assets. Recent developments in learning from crowdsourcing offer opportunities to determine accurate ratings for assets which have been annotated by large numbers of non-expert individuals. The challenges involved include identifying good annotators, determining consensus ratings and learning the bias of annotators.
Original languageEnglish
DOIs
Publication statusPublished - 2010
EventW3C workshop on Emotion ML - Paris, France
Duration: 5 Oct 20106 Oct 2010

Conference

ConferenceW3C workshop on Emotion ML
Country/TerritoryFrance
CityParis
Period5/10/106/10/10

Keywords

  • supervised learning
  • classification of emotion in speech
  • training data
  • manual annotation
  • crowdsourcing
  • rating of emotion speech assets
  • learning from crowdsourcing
  • accurate ratings
  • non-expert individuals
  • good annotators
  • consensus ratings
  • bias of annotators

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