Patents by Inventor Graham Roth

Graham Roth 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: 12174881
    Abstract: Described are systems and methods to determine hair patterns presented in content items. The determined hair patterns may be associated with the content items to facilitate indexing, filtering, etc. of the content items based on the determined hair patterns. In exemplary implementations, a corpus of content items may be associated with an embedding vector that includes a binary representation of the content item. The embedding vectors associated with each content item can be provided as inputs to a trained machine learning model, which can process the embedding vectors to determine one or more hair patterns presented in each content item while eliminating the need for performing image pre-processing prior to determination of the hair pattern(s) presented in the content item.
    Type: Grant
    Filed: October 10, 2023
    Date of Patent: December 24, 2024
    Assignee: Pinterest, Inc.
    Inventors: Nadia Fawaz, Anh Tuong Ta, Bhawna Juneja, Rohan Mahadev, Valerie Moy, Dmitry Olegovich Kislyuk, David Ding-Jia Xue, Christopher Lee Schaefbauer, Graham Roth, William Yau, Jordan DiSanto, Ding Zhang, David Voiss
  • Publication number: 20240037138
    Abstract: Described are systems and methods to determine hair patterns presented in content items. The determined hair patterns may be associated with the content items to facilitate indexing, filtering, etc. of the content items based on the determined hair patterns. In exemplary implementations, a corpus of content items may be associated with an embedding vector that includes a binary representation of the content item. The embedding vectors associated with each content item can be provided as inputs to a trained machine learning model, which can process the embedding vectors to determine one or more hair patterns presented in each content item while eliminating the need for performing image pre-processing prior to determination of the hair pattern(s) presented in the content item.
    Type: Application
    Filed: October 10, 2023
    Publication date: February 1, 2024
    Applicant: Pinterest, Inc.
    Inventors: Nadia Fawaz, Anh Tuong Ta, Bhawna Juneja, Rohan Mahadev, Valerie Moy, Dmitry Olegovich Kislyuk, David Ding-Jia Xue, Christopher Lee Schaefbauer, Graham Roth, William Yau, Jordan DiSanto, Ding Zhang, David Voiss
  • Patent number: 11816144
    Abstract: Described are systems and methods to determine hair patterns presented in content items. The determined hair patterns may be associated with the content items to facilitate indexing, filtering, etc. of the content items based on the determined hair patterns. In exemplary implementations, a corpus of content items may be associated with an embedding vector that includes a binary representation of the content item. The embedding vectors associated with each content item can be provided as inputs to a trained machine learning model, which can process the embedding vectors to determine one or more hair patterns presented in each content item while eliminating the need for performing image pre-processing prior to determination of the hair pattern(s) presented in the content item.
    Type: Grant
    Filed: March 31, 2022
    Date of Patent: November 14, 2023
    Assignee: Pinterest, Inc.
    Inventors: Nadia Fawaz, Anh Tuong Ta, Bhawna Juneja, Rohan Mahadev, Valerie Moy, Dmitry Olegovich Kislyuk, David Ding-Jia Xue, Christopher Lee Schaefbauer, Graham Roth, William Yau, Jordan DiSanto, Ding Zhang, David Voiss
  • Publication number: 20230315780
    Abstract: Described are systems and methods to determine hair patterns presented in content items. The determined hair patterns may be associated with the content items to facilitate indexing, filtering, etc. of the content items based on the determined hair patterns. In exemplary implementations, a corpus of content items may be associated with an embedding vector that includes a binary representation of the content item. The embedding vectors associated with each content item can be provided as inputs to a trained machine learning model, which can process the embedding vectors to determine one or more hair patterns presented in each content item while eliminating the need for performing image pre-processing prior to determination of the hair pattern(s) presented in the content item.
    Type: Application
    Filed: March 31, 2022
    Publication date: October 5, 2023
    Inventors: Nadia Fawaz, Anh Tuong Ta, Bhawna Juneja, Rohan Mahadev, Valerie Moy, Dmitry Olegovich Kislyuk, David Ding-Jia Xue, Christopher Lee Schaefbauer, Graham Roth, William Yau, Jordan DiSanto, Ding Zhang, David Voiss