Patents Assigned to Unknot Inc.
  • Patent number: 12488040
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Grant
    Filed: July 1, 2024
    Date of Patent: December 2, 2025
    Assignee: Unknot Inc.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Dawra
  • Patent number: 12411886
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Grant
    Filed: February 1, 2023
    Date of Patent: September 9, 2025
    Assignee: Unknot Inc.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Dawra
  • Patent number: 12386882
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Grant
    Filed: December 7, 2022
    Date of Patent: August 12, 2025
    Assignee: UNKNOT INC.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Darwa
  • Publication number: 20240354334
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Application
    Filed: July 1, 2024
    Publication date: October 24, 2024
    Applicant: Unknot Inc.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Dawra
  • Publication number: 20240354335
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Application
    Filed: July 1, 2024
    Publication date: October 24, 2024
    Applicant: Unknot Inc.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Dawra
  • Patent number: 12026227
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Grant
    Filed: November 9, 2020
    Date of Patent: July 2, 2024
    Assignee: Unknot Inc.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Darwa
  • Publication number: 20240184821
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Application
    Filed: February 1, 2023
    Publication date: June 6, 2024
    Applicant: Unknot Inc.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Dawra
  • Publication number: 20240176850
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Application
    Filed: November 9, 2020
    Publication date: May 30, 2024
    Applicant: Unknot Inc.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Darwa
  • Publication number: 20230114301
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Application
    Filed: December 7, 2022
    Publication date: April 13, 2023
    Applicant: Unknot Inc.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Dawra
  • Patent number: 11593652
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Grant
    Filed: November 9, 2020
    Date of Patent: February 28, 2023
    Assignee: Unknot Inc.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Dawra
  • Patent number: 11531895
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Grant
    Filed: November 9, 2020
    Date of Patent: December 20, 2022
    Assignee: Unknot Inc.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Dawra
  • Publication number: 20210142525
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Application
    Filed: November 9, 2020
    Publication date: May 13, 2021
    Applicant: Unknot Inc.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Dawra
  • Publication number: 20210142172
    Abstract: Systems and methods for viewing, storing, transmitting, searching, and editing application-specific audiovisual content (or other unstructured data) are disclosed in which edge devices generate content on the fly from a partial set of instructions rather than merely accessing the content in its final or near-final form. An image processing architecture may include a generative model that may be a deep learning model. The generative model may include a latent space comprising a plurality of latent codes and a trained generator mapping. The trained generator mapping may convert points in the latent space to uncompressed data points, which in the case of audiovisual content may be generated image frames. The generative model may be capable of closely approximating (up to noise or perceptual error) most or all potential data points in the relevant compression application, which in the case of audiovisual content may be source images.
    Type: Application
    Filed: November 9, 2020
    Publication date: May 13, 2021
    Applicant: Unknot Inc.
    Inventors: Ross F. Elliot, Seth Haberman, Michael A. Baumer, Nakul Dawra