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    Speech synthesis based on gaussian conditional random fields

    , Article Communications in Computer and Information Science ; Vol. 427, issue , 2014 , p. 183-193 Khorram, S ; Bahmaninezhad, F ; Sameti, H ; Sharif University of Technology
    Abstract
    Hidden Markov Model (HMM)-based synthesis (HTS) has recently been confirmed to be the most effective method in generating natural speech. However, it lacks adequate context generalization when the training data is limited. As a solution, current study provides a new context-dependent speech modeling framework based on the Gaussian Conditional Random Field (GCRF) theory. By applying this model, an innovative speech synthesis system has been developed which can be viewed as an extension of Context-Dependent Hidden Semi Markov Model (CD-HSMM). A novel Viterbi decoder along with a stochastic gradient ascent algorithm was applied to train model parameters. Also, a fast and efficient parameter...