Patents by Inventor Babak AFSHIN-POUR

Babak AFSHIN-POUR 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: 20230363857
    Abstract: A method to generate a photo realistic dentition image includes receiving a 2D image of a patient dentition including a plurality of patient teeth. The method includes obtaining a template dentition including a plurality of template teeth that correspond with a subset of the patient teeth. The method includes generating a tooth location input to position the plurality of template teeth relative to the subset of the plurality of patient teeth. The method includes identifying an area of generation in the 2D image including a plurality of pixels and contextual information. The method includes generating new photo realistic teeth based on the tooth location input, the contextual information, and the area of generation. The method includes disposing the photo realistic teeth in the 2D image.
    Type: Application
    Filed: July 19, 2023
    Publication date: November 16, 2023
    Applicant: SDC U.S. SmilePay SPV
    Inventors: RYAN AMELON, SAUL KOHN, BABAK AFSHIN POUR, AMIT AILIANI
  • Publication number: 20220292405
    Abstract: Some embodiments relate to methods, systems, and frameworks for data analytics using machine learning, such as methods and systems for preprocessing of biomedical data, using machine learning, for input to a predictive model. The method may include receiving data from a data source, using at least one machine learning (ML) algorithm from a plurality of ML algorithms to obtain at least one combination of preprocessing steps, and computing an accuracy score for each of the at least one combination based on accuracy of prediction of the predictive model. The method may further include using at least one ML algorithm to optimize the feature selection of the predictive model, combining a plurality of datasets into a single dataset, and using a parallel computing network to provide a framework for executing such predictive model.
    Type: Application
    Filed: June 3, 2022
    Publication date: September 15, 2022
    Applicant: BioSymetrics, Inc.
    Inventors: Victoria CATTERSON, Babak AFSHIN-POUR, Cindy LOPES, Jill CATES, Anthony IACOVONE, Gabriel MUSSO
  • Patent number: 11379757
    Abstract: Some embodiments relate to methods, systems, and frameworks for data analytics using machine learning, such as methods and systems for preprocessing of biomedical data, using machine learning, for input to a predictive model. The method may include receiving data from a data source, using at least one machine learning (ML) algorithm from a plurality of ML algorithms to obtain at least one combination of preprocessing steps, and computing an accuracy score for each of the at least one combination based on accuracy of prediction of the predictive model. The method may further include using at least one ML algorithm to optimize the feature selection of the predictive model, combining a plurality of datasets into a single dataset, and using a parallel computing network to provide a framework for executing such predictive model.
    Type: Grant
    Filed: July 31, 2019
    Date of Patent: July 5, 2022
    Assignee: BioSymetrics, Inc.
    Inventors: Victoria Catterson, Babak Afshin-Pour, Cindy Lopes, Jill Cates, Anthony Iacovone, Gabriel Musso
  • Publication number: 20210035017
    Abstract: Some embodiments relate to methods, systems, and frameworks for data analytics using machine learning, such as methods and systems for preprocessing of biomedical data, using machine learning, for input to a predictive model. The method may include receiving data from a data source, using at least one machine learning (ML) algorithm from a plurality of ML algorithms to obtain at least one combination of preprocessing steps, and computing an accuracy score for each of the at least one combination based on accuracy of prediction of the predictive model. The method may further include using at least one ML algorithm to optimize the feature selection of the predictive model, combining a plurality of datasets into a single dataset, and using a parallel computing network to provide a framework for executing such predictive model.
    Type: Application
    Filed: July 31, 2019
    Publication date: February 4, 2021
    Inventors: Victoria CATTERSON, Babak AFSHIN-POUR, Cindy LOPES, Jill CATES, Anthony IACOVONE, Gabriel MUSSO