Patents by Inventor Istvan S. Horvath

Istvan S. Horvath 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: 20230281975
    Abstract: A device may receive a video and corresponding camera information associated with a camera that captured the video, and may select an object in the video and a wire model for the object. The device may adjust an orientation, location, or size of the wire model to align the wire model on the object in a frame of the video, based on the corresponding camera information and to generate an adjusted wire model. The device may identify the object in another frame of the video, and may align the adjusted wire model on the object in the other frame. The device may interpolate the adjusted wire model for the object for intermediate frames of the video between the first and other frames, and may generate three-dimensional annotations for the video based on the adjusted wire models. The device may train a machine learning model based on the three-dimensional annotations.
    Type: Application
    Filed: March 2, 2022
    Publication date: September 7, 2023
    Applicant: Verizon Patent and Licensing Inc.
    Inventors: Gellert NACSA, Domonkos HUSZAR, Felician BENDA, Akos KISS, Istvan S. HORVATH, Gabor MAJOROS, Csaba REKECZKY
  • Publication number: 20220327333
    Abstract: Techniques described herein provide for the use of a heterogeneous artificial intelligence/machine learning (“AI/ML”) architecture, in which relatively complex AI/ML, techniques may be used in conjunction with more lightweight AI/ML techniques in order to leverage the accuracy of relatively complex AI/ML techniques with the reduced processing power and/or time requirements of more lightweight AI/ML techniques. A teacher model system may utilize processing resource and/or time-intensive AI/ML techniques and/or models in order to determine classifications associated with source data, and may provide such classifications to a student model system that may utilize the classifications in accordance with less processing resource and/or time-intensive AI/ML techniques in order to accurately classify sensor data in real time or near-real time.
    Type: Application
    Filed: April 7, 2021
    Publication date: October 13, 2022
    Applicant: Verizon Patent and Licensing Inc.
    Inventors: Anna E. Csorgo, Balint Magyar, Domonkos Huszar, Mark Szabo, Istvan S. Horvath, Andras Horvath, Csaba Rekeczky
  • Patent number: 10939031
    Abstract: A method, a device, and a non-transitory storage medium are described in which a machine learning-based device placement and configuration service is provided. The machine learning-based device placement and configuration system uses regression models calculated from installation and performance data. The regression model includes data associated with sites at which video cameras were previously installed and tested for detection accuracy levels possibly associated with a service area. With these generated models, information about the physical space, and desired performance criteria, designers optimize camera number, camera placement, and geo-location camera parameters. The device placement and configuration service may find an optimal camera placement and geo-location camera parameter set which satisfy certain criteria. The geo-location parameters include position, height, heading, pitch, and roll.
    Type: Grant
    Filed: June 9, 2020
    Date of Patent: March 2, 2021
    Assignee: Verizon Patent and Licensing Inc.
    Inventors: Andrew W. Herson, Domonkos Huszar, Istvan S. Horvath, Christopher Kennedy, Csaba Rekeczky
  • Patent number: 10911747
    Abstract: A device may receive initial registration data identifying initial camera parameters associated with a camera device provided at a location, and may receive location data associated with the location captured by the camera device. The device may receive map data identifying a map image of the location, and may transform the initial registration data into estimated camera parameters. The device may process the location data, with the estimator model, to generate extracted data, and may process the estimated camera parameters, the extracted data, and the map data, with a parameter optimization model, to identify camera parameters for the camera device. The device may provide the camera parameters to the camera device to cause the camera device to be configured based on the camera parameters.
    Type: Grant
    Filed: December 2, 2019
    Date of Patent: February 2, 2021
    Assignee: Verizon Patent and Licensing Inc.
    Inventors: Akos Kiss, Istvan S. Horvath, Peter Ruzsa, Gabor Erdosi, Dora E. Babicz, Andrew W. Herson, Csaba Rekeczky
  • Publication number: 20200304703
    Abstract: A method, a device, and a non-transitory storage medium are described in which a machine learning-based device placement and configuration service is provided. The machine learning-based device placement and configuration system uses regression models calculated from installation and performance data. The regression model includes data associated with sites at which video cameras were previously installed and tested for detection accuracy levels possibly associated with a service area. With these generated models, information about the physical space, and desired performance criteria, designers optimize camera number, camera placement, and geo-location camera parameters. The device placement and configuration service may find an optimal camera placement and geo-location camera parameter set which satisfy certain criteria. The geo-location parameters include position, height, heading, pitch, and roll.
    Type: Application
    Filed: June 9, 2020
    Publication date: September 24, 2020
    Inventors: Andrew W. Herson, Domonkos Huszar, Istvan S. Horvath, Christopher Kennedy, Csaba Rekeczky
  • Patent number: 10715714
    Abstract: A method, a device, and a non-transitory storage medium are described in which a machine learning-based device placement and configuration service is provided. The machine learning-based device placement and configuration system uses regression models calculated from installation and performance data. The regression model includes data associated with sites at which video cameras were previously installed and tested for detection accuracy levels possibly associated with a service area. With these generated models, information about the physical space, and desired performance criteria, designers optimize camera number, camera placement, and geo-location camera parameters. The device placement and configuration service may find an optimal camera placement and geo-location camera parameter set which satisfy certain criteria. The geo-location parameters include position, height, heading, pitch, and roll.
    Type: Grant
    Filed: October 17, 2018
    Date of Patent: July 14, 2020
    Assignee: Verizon Patent and Licensing, Inc.
    Inventors: Andrew W. Herson, Domonkos Huszar, Istvan S. Horvath, Christopher Kennedy, Csaba Rekeczky
  • Publication number: 20200128171
    Abstract: A method, a device, and a non-transitory storage medium are described in which a machine learning-based device placement and configuration service is provided. The machine learning-based device placement and configuration system uses regression models calculated from installation and performance data. The regression model includes data associated with sites at which video cameras were previously installed and tested for detection accuracy levels possibly associated with a service area. With these generated models, information about the physical space, and desired performance criteria, designers optimize camera number, camera placement, and geo-location camera parameters. The device placement and configuration service may find an optimal camera placement and geo-location camera parameter set which satisfy certain criteria. The geo-location parameters include position, height, heading, pitch, and roll.
    Type: Application
    Filed: October 17, 2018
    Publication date: April 23, 2020
    Inventors: Andrew W. Herson, Domonkos Huszar, Istvan S. Horvath, Christopher Kennedy, Csaba Rekeczky