Literature DB >> 33644784

ROBUST DETECTION OF VOICED SEGMENTS IN SAMPLES OF EVERYDAY CONVERSATIONS USING UNSUPERVISED HMMS.

Meysam Asgari1, Izhak Shafran1, Alireza Bayestehtashk1.   

Abstract

We investigate methods for detecting voiced segments in everyday conversations from ambient recordings. Such recordings contain high diversity of background noise, making it difficult or infeasible to collect representative labelled samples for estimating noise-specific HMM models. The popular utility get-f0 and its derivatives compute normalized cross-correlation for detecting voiced segments, which unfortunately is sensitive to different types of noise. Exploiting the fact that voiced speech is not just periodic but also rich in harmonic, we model voiced segments by adopting harmonic models, which have recently gained considerable attention. In previous work, the parameters of the model were estimated independently for each frame using maximum likelihood criterion. However, since the distribution of harmonic coefficients depend on articulators of speakers, we estimate the model parameters more robustly using a maximum a posteriori criterion. We use the likelihood of voicing, computed from the harmonic model, as an observation probability of an HMM and detect speech using this unsupervised HMM. The one caveat of the harmonic model is that they fail to distinguish speech from other stationary harmonic noise. We rectify this weakness by taking advantage of the non-stationary property of speech. We evaluate our models empirically on a task of detecting speech on a large corpora of everyday speech and demonstrate that these models perform significantly better than standard voice detection algorithm employed in popular tools.

Entities:  

Keywords:  life log; speech detection; voice detection

Year:  2013        PMID: 33644784      PMCID: PMC7909075          DOI: 10.1109/slt.2012.6424264

Source DB:  PubMed          Journal:  SLT Workshop Spok Lang Technol


  1 in total

1.  Personality in its natural habitat: manifestations and implicit folk theories of personality in daily life.

Authors:  Matthias R Mehl; Samuel D Gosling; James W Pennebaker
Journal:  J Pers Soc Psychol       Date:  2006-05
  1 in total
  1 in total

1.  Robust and Accurate Features for Detecting and Diagnosing Autism Spectrum Disorders.

Authors:  Meysam Asgari; Alireza Bayestehtashk; Izhak Shafran
Journal:  Interspeech       Date:  2013-08
  1 in total

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