Reduced semi-continuous models for large vocabulary continuous speech recognition in Dutch

نویسندگان

  • Kris Demuynck
  • Jacques Duchateau
  • Dirk Van Compernolle
چکیده

Semi-continuous Density HMM’s have due to the decoupling between the set of gaussians and the other HMM-parameters more possibilities than Continuous Density HMM’s to match the number of parameters in the model to the available train data. The computational load of the SC-HMM’s however is huge compared to the load of their continuous counterparts, because of the large mixture weighting vector and because of the fact that for each frame all gaussians have to be evaluated. This paper describes the different steps taken to reduce the computational load of the SC-HMM’s, resulting in faster and better models.

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تاریخ انتشار 1996