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Method and system for selectively biased linear discriminant analysis in automatic speech recognition systems

  • US 9,679,556 B2
  • Filed: 08/23/2013
  • Issued: 06/13/2017
  • Est. Priority Date: 08/24/2012
  • Status: Active Grant
First Claim
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1. A method for training an acoustic model using the maximum likelihood criteria, comprising the steps of:

  • a) performing a forced alignment of speech training data;

    b) processing the training data and obtaining estimated scatter matrices, wherein said scatter matrices may comprise one or more of a between class scatter matrix and a within-class scatter matrix, from which mean vectors may be estimated;

    c) biasing the between class scatter matrix and the within-class scatter matrix;

    d) diagonalizing the between class scatter matrix and the within class scatter matrix and estimating eigen-vectors to produce transformed scatter matrices;

    e) obtaining new discriminative features using the estimated vectors, wherein said vectors correspond to the highest discrimination in the new space;

    f) training a new acoustic model based on said new discriminative features, wherein the training further comprises the steps of;

    estimating parameters with new features obtained through a transformed matrix, andusing a maximum likelihood formula with new features to perform the training; and

    g) saving said acoustic model.

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