Patents by Inventor Vassilios Digalakis

Vassilios Digalakis has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 6256607
    Abstract: An automatic recognition system and method divides observation vectors into subvectors and determines a quantization index for the subvectors. Subvector indices can then be transmitted or otherwise stored and used to perform recognition. In a further embodiment, recognition probabilities are determined for subvectors separately and these probabilities are combined to generate probabilities for the observed vectors. An automatic system for assigning bits to subvector indices can be used to improve recognition.
    Type: Grant
    Filed: September 8, 1998
    Date of Patent: July 3, 2001
    Assignee: SRI International
    Inventors: Vassilios Digalakis, Leonardo Neumeyer, Stavros Tsakalidis, Manolis Perakakis
  • Patent number: 6226611
    Abstract: Pronunciation quality is automatically evaluated for an utterance of speech based on one or more pronunciation scores. One type of pronunciation score is based on duration of acoustic units. Examples of acoustic units include phones and syllables. Another type of pronunciation score is based on a posterior probability that a piece of input speech corresponds to a certain model such as an HMM, given the piece of input speech. Speech may be segmented into phones and syllables for evaluation with respect to the models. The utterance of speech may be an arbitrary utterance made up of a sequence of words which had not been encountered before. Pronunciation scores are converted into grades as would be assigned by human graders. Pronunciation quality may be evaluated in a client-server language instruction environment.
    Type: Grant
    Filed: January 26, 2000
    Date of Patent: May 1, 2001
    Assignee: SRI International
    Inventors: Leonardo Neumeyer, Horacio Franco, Mitchel Weintraub, Patti Price, Vassilios Digalakis
  • Patent number: 6055498
    Abstract: Pronunciation quality is automatically evaluated for an utterance of speech based on one or more pronunciation scores. One type of pronunciation score is based on duration of acoustic units. Examples of acoustic units include phones and syllables. Another type of pronunciation score is based on a posterior probability that a piece of input speech corresponds to a certain model, such as a hidden Markov model, given the piece of input speech. Speech may be segmented into phones and syllable for evaluation with respect to the models. The utterance of speech may be an arbitrary utterance made up of a sequence of words which had not been encountered before. Pronunciation scores are converted into grades as would be assigned by human graders. Pronunciation quality may be evaluated in a client-server language instruction environment.
    Type: Grant
    Filed: October 2, 1997
    Date of Patent: April 25, 2000
    Assignee: SRI International
    Inventors: Leonardo Neumeyer, Horacio Franco, Mitchel Weintraub, Patti Price, Vassilios Digalakis
  • Patent number: 5864810
    Abstract: A method and apparatus for automatic recognition of speech adapts to a particular speaker by using adaptation data to develop a transformation through which speaker independent models are transformed into speaker adapted models. The speaker adapted models are then used for speaker recognition and achieve better recognition accuracy than non-adapted models. In a further embodiment, the transformation-based adaptation technique is combined with a known Bayesian adaptation technique.
    Type: Grant
    Filed: January 20, 1995
    Date of Patent: January 26, 1999
    Assignee: SRI International
    Inventors: Vassilios Digalakis, Leonardo Neumeyer, Dimitry Rtischev
  • Patent number: 5825978
    Abstract: In accordance with the invention, a speech recognizer is provided which uses a computationally-feasible method for constructing a set of Hidden Markov Models (HMMs) for speech recognition that utilize a partial and optimal degree of mixture tying. With partially-tied HMMs, improved recognition accuracy of a large vocabulary word corpus as compared to systems that use fully-tied HMMs is achieved with less computational overhead than with a fully untied system. The computationally-feasible technique comprises the steps of determining a cluster of HMM states that share Gaussian components which are close together, developing a subset codebook for those clusters, and recalculating the Gaussians in the codebook to best estimate the clustered states.
    Type: Grant
    Filed: July 18, 1994
    Date of Patent: October 20, 1998
    Assignee: SRI International
    Inventors: Vassilios Digalakis, Hy Murveit