Patents by Inventor Peder A. Olsen

Peder A. Olsen 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).

  • Publication number: 20240354371
    Abstract: Systems and methods for generating predicted high-resolution images from low-resolution images. To generate the predicted high-resolution images, the present technology may utilize machine learning models and super resolution models in a series of processes. For instance, the low-resolution images may undergo a sensor transformation based on processing by a machine learning model. The low-resolution images may also be combined with land structure features and/or prior high-resolution images to form an augmented input that is processed by a super resolution model to generate an initial predicted high-resolution image. The predicted initial high-resolution image may be combined or stacked with other predicted high-resolution images to form a stacked image. That stacked image may then be processed by another super resolution model to generate a final predicted high-resolution image.
    Type: Application
    Filed: July 1, 2024
    Publication date: October 24, 2024
    Inventors: Peder A. OLSEN, Ranveer CHANDRA, Olaoluwa ADIGUN
  • Patent number: 12045311
    Abstract: Systems and methods for generating predicted high-resolution images from low-resolution images. To generate the predicted high-resolution images, the present technology may utilize machine learning models and super resolution models in a series of processes. For instance, the low-resolution images may undergo a sensor transformation based on processing by a machine learning model. The low-resolution images may also be combined with land structure features and/or prior high-resolution images to form an augmented input that is processed by a super resolution model to generate an initial predicted high-resolution image. The predicted initial high-resolution image may be combined or stacked with other predicted high-resolution images to form a stacked image. That stacked image may then be processed by another super resolution model to generate a final predicted high-resolution image.
    Type: Grant
    Filed: March 24, 2021
    Date of Patent: July 23, 2024
    Assignee: MICROSOFT TECHNOLOGY LICENSING, LLC
    Inventors: Peder A. Olsen, Ranveer Chandra, Olaoluwa Adigun
  • Publication number: 20240211540
    Abstract: Systems and methods for generating predicted high-resolution images from low-resolution images. To generate the predicted high-resolution images, the present technology may utilize machine learning models and super resolution models in a series of processes. For instance, the low-resolution images may undergo a sensor transformation based on processing by a machine learning model. The low-resolution images may also be combined with land structure features and/or prior high-resolution images to form an augmented input that is processed by a super resolution model to generate an initial predicted high-resolution image. The predicted initial high-resolution image may be combined or stacked with other predicted high-resolution images to form a stacked image. That stacked image may then be processed by another super resolution model to generate a final predicted high-resolution image.
    Type: Application
    Filed: March 24, 2021
    Publication date: June 27, 2024
    Applicant: Microsoft Technology Licensing, LLC
    Inventors: Peder A. Olsen, Ranveer Chandra, Olaoluwa Adigun
  • Patent number: 11132615
    Abstract: Software that performs the following steps: (i) receiving data from a first database and data from a second database, (ii) identifying a training subset and a test subset from the received data; (iii) generating a first graphical model using data from the training subset; (iv) generating a second graphical model using data from the training subset; (v) determining respective weights for the first graphical model and the second graphical model by using an expectation maximization method on data from the test subset; (vi) generating a third graphical model by interpolating at least the first graphical model and the second graphical model using their respectively determined weights; and (vii) defining one or more links between the data from the first database and the data from the second database using the third graphical model.
    Type: Grant
    Filed: March 10, 2015
    Date of Patent: September 28, 2021
    Assignee: International Business Machines Corporation
    Inventors: Ramesh Natarajan, Peder A. Olsen, Sholom M. Weiss
  • Publication number: 20160267224
    Abstract: Software that performs the following steps: (i) receiving a first set of observed data pertaining to healthcare events, the first set of observed data including a subset of patient care event data pertaining to patient care events and a subset of prescription data pertaining to prescription events; (ii) generating a graphical model representing a probabilistic relationship between the patient care event data and the prescription data, the graphical model including a set of latent variable(s) estimated from the first set of observed data using an expectation maximization method; (iii) receiving a second set of observed data pertaining to healthcare events associated with a healthcare provider; and (iv) computing, using a dynamic programming approach, a first prescription score for the healthcare provider relating to a computed probability under the generated graphical model of at least one prescription event of the second set of observed data.
    Type: Application
    Filed: March 10, 2015
    Publication date: September 15, 2016
    Inventors: Ramesh Natarajan, Peder A. Olsen, Sholom M. Weiss
  • Patent number: 8972258
    Abstract: Techniques disclosed herein include using a Maximum A Posteriori (MAP) adaptation process that imposes sparseness constraints to generate acoustic parameter adaptation data for specific users based on a relatively small set of training data. The resulting acoustic parameter adaptation data identifies changes for a relatively small fraction of acoustic parameters from a baseline acoustic speech model instead of changes to all acoustic parameters. This results in user-specific acoustic parameter adaptation data that is several orders of magnitude smaller than storage amounts otherwise required for a complete acoustic model. This provides customized acoustic speech models that increase recognition accuracy at a fraction of expected data storage requirements.
    Type: Grant
    Filed: May 22, 2014
    Date of Patent: March 3, 2015
    Assignee: Nuance Communications, Inc.
    Inventors: Vaibhava Goel, Peder A. Olsen, Steven J. Rennie, Jing Huang
  • Publication number: 20140257809
    Abstract: Techniques disclosed herein include using a Maximum A Posteriori (MAP) adaptation process that imposes sparseness constraints to generate acoustic parameter adaptation data for specific users based on a relatively small set of training data. The resulting acoustic parameter adaptation data identifies changes for a relatively small fraction of acoustic parameters from a baseline acoustic speech model instead of changes to all acoustic parameters. This results in user-specific acoustic parameter adaptation data that is several orders of magnitude smaller than storage amounts otherwise required for a complete acoustic model. This provides customized acoustic speech models that increase recognition accuracy at a fraction of expected data storage requirements.
    Type: Application
    Filed: May 22, 2014
    Publication date: September 11, 2014
    Inventors: Vaibhava Goel, Peder A. Olsen, Steven J. Rennie, Jing Huang
  • Patent number: 8738376
    Abstract: Techniques disclosed herein include using a Maximum A Posteriori (MAP) adaptation process that imposes sparseness constraints to generate acoustic parameter adaptation data for specific users based on a relatively small set of training data. The resulting acoustic parameter adaptation data identifies changes for a relatively small fraction of acoustic parameters from a baseline acoustic speech model instead of changes to all acoustic parameters. This results in user-specific acoustic parameter adaptation data that is several orders of magnitude smaller than storage amounts otherwise required for a complete acoustic model. This provides customized acoustic speech models that increase recognition accuracy at a fraction of expected data storage requirements.
    Type: Grant
    Filed: October 28, 2011
    Date of Patent: May 27, 2014
    Assignee: Nuance Communications, Inc.
    Inventors: Vaibhava Goel, Peder A. Olsen, Steven J. Rennie, Jing Huang
  • Publication number: 20140129226
    Abstract: Techniques disclosed herein include systems and methods for privacy-sensitive training data collection for updating acoustic models of speech recognition systems. In one embodiment, the system locally creates adaptation data from raw audio data. Such adaptation can include derived statistics and/or acoustic model update parameters. The derived statistics and/or updated acoustic model data can then be sent to a speech recognition server or third-party entity. Since the audio data and transcriptions are already processed, the statistics or acoustic model data is devoid of any information that could be human-readable or machine readable such as to enable reconstruction of audio data. Thus, such converted data sent to a server does not include personal or confidential information. Third-party servers can then continually update speech models without storing personal and confidential utterances of users.
    Type: Application
    Filed: November 5, 2012
    Publication date: May 8, 2014
    Inventors: Antonio R. Lee, Petr Novak, Peder A. Olsen, Vaibhava Goel
  • Patent number: 8635067
    Abstract: Access is obtained to a large reference acoustic model for automatic speech recognition. The large reference acoustic model has L states modeled by L mixture models, and the large reference acoustic model has N components. A desired number of components Nc, less than N, to be used in a restructured acoustic model derived from the reference acoustic model, is identified. The desired number of components Nc is selected based on a computing environment in which the restructured acoustic model is to be deployed. The restructured acoustic model also has L states. For each given one of the L mixture models in the reference acoustic model, a merge sequence is built which records, for a given cost function, sequential mergers of pairs of the components associated with the given one of the mixture models. A portion of the Nc components is assigned to each of the L states in the restructured acoustic model.
    Type: Grant
    Filed: December 9, 2010
    Date of Patent: January 21, 2014
    Assignee: International Business Machines Corporation
    Inventors: Pierre Dognin, Vaibhava Goel, John R. Hershey, Peder A. Olsen
  • Patent number: 8315799
    Abstract: A computer implemented method, system and/or computer program product confirm an orally entered address to a mobile navigation device. The mobile navigation device receives a global positioning system (GPS) root address component from a GPS. The GPS root address component is a text name of a root location at which a mobile navigation device is currently located. The mobile navigation device receives an orally entered address that comprises an oral root address component and an oral subunit component of the oral root address component. In response to the converted root address component matching the GPS root address component, the orally entered address is partitioned into the oral subunit component and the oral root address component, and any additional speech-to-text conversion of the orally entered address after the oral root address component is terminated.
    Type: Grant
    Filed: May 11, 2010
    Date of Patent: November 20, 2012
    Assignee: International Business Machines Corporation
    Inventors: Neal J. Alewine, John W. Eckhart, Peder A. Olsen, Kenneth D. White
  • Patent number: 8229744
    Abstract: A method, system, and computer program for class detection and time mediated averaging of class dependent models. A technique is described to take advantage of gender information in training data and how obtain female, male, and gender independent models from this information. By using a probability value to average male and female Gaussian Mixture Models (GMMs), dramatic deterioration in cross gender decoding performance is avoided.
    Type: Grant
    Filed: August 26, 2003
    Date of Patent: July 24, 2012
    Assignee: Nuance Communications, Inc.
    Inventors: Satyanarayana Dharanipragada, Peder A. Olsen
  • Publication number: 20120150536
    Abstract: Access is obtained to a large reference acoustic model for automatic speech recognition. The large reference acoustic model has L states modeled by L mixture models, and the large reference acoustic model has N components. A desired number of components Nc, less than N, to be used in a restructured acoustic model derived from the reference acoustic model, is identified. The desired number of components Nc is selected based on a computing environment in which the restructured acoustic model is to be deployed. The restructured acoustic model also has L states. For each given one of the L mixture models in the reference acoustic model, a merge sequence is built which records, for a given cost function, sequential mergers of pairs of the components associated with the given one of the mixture models. A portion of the Nc components is assigned to each of the L states in the restructured acoustic model.
    Type: Application
    Filed: December 9, 2010
    Publication date: June 14, 2012
    Applicant: INTERNATIONAL BUSINESS MACHINES CORPORATION
    Inventors: Pierre Dognin, Vaibhava Goel, John R. Hershey, Peder A. Olsen
  • Publication number: 20110282574
    Abstract: A computer implemented method, system and/or computer program product confirm an orally entered address to a mobile navigation device. The mobile navigation device receives a global positioning system (GPS) root address component from a GPS. The GPS root address component is a text name of a root location at which a mobile navigation device is currently located. The mobile navigation device receives an orally entered address that comprises an oral root address component and an oral subunit component of the oral root address component. In response to the converted root address component matching the GPS root address component, the orally entered address is partitioned into the oral subunit component and the oral root address component, and any additional speech-to-text conversion of the orally entered address after the oral root address component is terminated.
    Type: Application
    Filed: May 11, 2010
    Publication date: November 17, 2011
    Applicant: INTERNATIONAL BUSINESS MACHINES CORPORATION
    Inventors: Neal J. ALEWINE, John W. ECKHART, Peder A. OLSEN, Kenneth D. WHITE
  • Patent number: 6804648
    Abstract: A parametric family of multivariate density functions formed by mixture models from univariate functions of the type exp(−|x|&bgr;) for modeling acoustic feature vectores are used in automatic recognition of speech. The parameter &bgr; is used to measure the non-Gaussian nature of the data. &bgr; is estimated from the input data using a maximum likelihood criterion. There is a balance between &bgr; and the number of data points that must be satisfied for efficient estimation.
    Type: Grant
    Filed: March 25, 1999
    Date of Patent: October 12, 2004
    Assignee: International Business Machines Corporation
    Inventors: Sankar Basu, Charles A. Micchelli, Peder A. Olsen
  • Patent number: 6374216
    Abstract: A nonparametric family of density functions formed by histogram estimators for modeling acoustic vectors are used in automatic recognition of speech. A Gaussian kernel is set forth in the density estimator. When the densities are found for all the basic sounds in a training stage, an acoustic vector is assigned to a phoneme label corresponding to the highest likelihood for the basis of the decoding of acoustic vectors into text.
    Type: Grant
    Filed: September 27, 1999
    Date of Patent: April 16, 2002
    Assignee: International Business Machines Corporation
    Inventors: Charles A. Micchelli, Peder A. Olsen