Hidden Markov Models (hmms) Network (epo) Patents (Class 704/E15.032)
  • Patent number: 11783818
    Abstract: Described herein are devices, methods, and systems for detecting a phrase from uttered speech. A processing device may determine a first model for phrase recognition based on a likelihood ratio using a set of training utterances. The set of utterances may be analyzed by the first model to determine a second model, the second model comprising a training state sequence for each of the set of training utterances, and wherein each training state sequence indicates a likely state for each time interval of a corresponding training utterance. A determination of whether a detected utterance corresponds to the phrase may be based on a concatenation of the first model and the second model.
    Type: Grant
    Filed: September 25, 2020
    Date of Patent: October 10, 2023
    Assignee: Cypress Semiconductor Corporation
    Inventors: Robert Zopf, Ashutosh Pandey
  • Publication number: 20100318354
    Abstract: Technologies are described herein for noise adaptive training to achieve robust automatic speech recognition. Through the use of these technologies, a noise adaptive training (NAT) approach may use both clean and corrupted speech for training. The NAT approach may normalize the environmental distortion as part of the model training. A set of underlying “pseudo-clean” model parameters may be estimated directly. This may be done without point estimation of clean speech features as an intermediate step. The pseudo-clean model parameters learned from the NAT technique may be used with a Vector Taylor Series (VTS) adaptation. Such adaptation may support decoding noisy utterances during the operating phase of a automatic voice recognition system.
    Type: Application
    Filed: June 12, 2009
    Publication date: December 16, 2010
    Applicant: Microsoft Corporation
    Inventors: Michael Lewis Seltzer, James Garnet Droppo, Ozlem Kalinli, Alejandro Acero