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Ph.D. Dissertation Defense - Rahul Pawar

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TitleAudio Diarization For Lena Data And Its Application To Computing Language Behavior Statistics For Individuals With Autism

Committee:

Dr. Mark Clements, ECE, Chair , Advisor

Dr. Elliot Moore, ECE

Dr. Faramarz Fekri, ECE

Dr. David Anderson, ECE

Dr. Rebecca Jones, Cornell

Abstract:

The objective of this dissertation is to develop diarization algorithms for LENA data and study its application to compute language behavior statistics for individuals with autism. LENA device is one of the most commonly used devices to collect audio data in autism and language development studies. LENA algorithms were evaluated for older children and infants. I-vector based diarization algorithms were developed for two scenarios: a) some amount of labeled data is present for every speaker present in the audio recording and b) no labeled data is present for the audio recording to be diarized. Further, i-vector based diarization methods were applied to compute two objective measures of assessment. These objective measures of assessment were analyzed to show they can reveal some aspects of autism severity. Also, a method to extract a 5 minute high child vocalization audio window from a 16 hour day long recording was developed, which was then used to compute canonical babble statistics using human annotation.

Status

  • Workflow Status:Published
  • Created By:Daniela Staiculescu
  • Created:08/08/2019
  • Modified By:Daniela Staiculescu
  • Modified:08/08/2019

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