Patents by Inventor Kyle Matthys

Kyle Matthys 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: 20250327764
    Abstract: Disclosed herein is a sensors-as-a-service ecosystem. In use, the system includes functions for receiving first sensor data at a sensors as a service platform, where the first sensor data corresponds to a first level of capabilities for a first sensor. The system also receives a selection of a sensor upgrade for the first sensor and provisions enhanced sensor capabilities for the sensor upgrade based on the selection. Furthermore, the system sends a sensor update with the enhanced sensor capabilities from the sensors as a service platform to the first sensor. Finally, the system receives second sensor data from the first sensor at the sensors as a service platform, where the second sensor data corresponds to a second level of capabilities for the first sensor.
    Type: Application
    Filed: June 25, 2025
    Publication date: October 23, 2025
    Inventors: Daniel Cook, Michael Stowell, Karel Vanheusden, George Clayton Gibbs, Jacques Nicole, Carlos Montalvo, Kyle Matthys, Bruce Lanning, Sung Lim, John Chmiola
  • Patent number: 12449387
    Abstract: Methods and system to learn precise sensing fingerprints based on machine learning integration are disclosed herein. In use, the system receives at least one first parameter associated with at least one sensor and associates the first parameter with a pre-identified first digital signature in a signature database. A machine learning system is trained based on the first parameter and the pre-identified digital signature. The system then receives at least one second parameter from the at least one sensor and determines that the second parameter is independent of a digital signature in the signature database. Using the machine learning system, a second digital signature for the second parameter is identified and saved in the signature database.
    Type: Grant
    Filed: February 13, 2024
    Date of Patent: October 21, 2025
    Assignee: LYTEN, INC.
    Inventors: Daniel Cook, Michael Stowell, Karel Vanheusden, George Clayton Gibbs, Jacques Nicole, Carlos Montalvo, Kyle Matthys, Bruce Lanning, Sung Lim, John Chmiola
  • Patent number: 12379339
    Abstract: Disclosed herein is a sensors-as-a-service ecosystem. In use, the system includes functions for receiving first sensor data at a sensors as a service platform, where the first sensor data corresponds to a first level of capabilities for a first sensor. The system also receives a selection of a sensor upgrade for the first sensor and provisions enhanced sensor capabilities for the sensor upgrade based on the selection. Furthermore, the system sends a sensor update with the enhanced sensor capabilities from the sensors as a service platform to the first sensor. Finally, the system receives second sensor data from the first sensor at the sensors as a service platform, where the second sensor data corresponds to a second level of capabilities for the first sensor.
    Type: Grant
    Filed: November 19, 2024
    Date of Patent: August 5, 2025
    Assignee: LYTEN, INC.
    Inventors: Daniel Cook, Michael Stowell, Karel Vanheusden, George Clayton Gibbs, Jacques Nicole, Carlos Montalvo, Kyle Matthys, Bruce Lanning, Sung Lim, John Chmiola
  • Publication number: 20250076233
    Abstract: Disclosed herein is a sensors-as-a-service ecosystem. In use, the system includes functions for receiving first sensor data at a sensors as a service platform, where the first sensor data corresponds to a first level of capabilities for a first sensor. The system also receives a selection of a sensor upgrade for the first sensor and provisions enhanced sensor capabilities for the sensor upgrade based on the selection. Furthermore, the system sends a sensor update with the enhanced sensor capabilities from the sensors as a service platform to the first sensor. Finally, the system receives second sensor data from the first sensor at the sensors as a service platform, where the second sensor data corresponds to a second level of capabilities for the first sensor.
    Type: Application
    Filed: November 19, 2024
    Publication date: March 6, 2025
    Inventors: Daniel Cook, Michael Stowell, Karel Vanheusden, George Clayton Gibbs, Jacques Nicole, Carlos Montalvo, Kyle Matthys, Bruce Lanning, Sung Lim, John Chmiola
  • Publication number: 20240288381
    Abstract: Methods and system to learn precise sensing fingerprints based on machine learning integration are disclosed herein. In use, the system receives at least one first parameter associated with at least one sensor and associates the first parameter with a pre-identified first digital signature in a signature database. A machine learning system is trained based on the first parameter and the pre-identified digital signature. The system then receives at least one second parameter from the at least one sensor and determines that the second parameter is independent of a digital signature in the signature database. Using the machine learning system, a second digital signature for the second parameter is identified and saved in the signature database.
    Type: Application
    Filed: February 13, 2024
    Publication date: August 29, 2024
    Inventors: Michael Stowell, Daniel Cook, Carlos Montalvo, George Clayton Gibbs, Jacques Nicole, Karel Vanheusden, Kyle Matthys, Bruce Lanning, Sung Lim, John Chmiola
  • Publication number: 20240280526
    Abstract: Methods and system to learn precise sensing fingerprints based on machine learning integration are disclosed herein. In use, the system receives at least one first parameter associated with at least one sensor and associates the first parameter with a pre-identified first digital signature in a signature database. A machine learning system is trained based on the first parameter and the pre-identified digital signature. The system then receives at least one second parameter from the at least one sensor and determines that the second parameter is independent of a digital signature in the signature database. Using the machine learning system, a second digital signature for the second parameter is identified and saved in the signature database.
    Type: Application
    Filed: February 13, 2024
    Publication date: August 22, 2024
    Inventors: Daniel Cook, Michael Stowell, Karel Vanheusden, George Clayton Gibbs, Jacques Nicole, Carlos Montalvo, Kyle Matthys, Bruce Lanning, Sung Lim, John Chmiola
  • Publication number: 20240272103
    Abstract: Methods and system to learn precise sensing fingerprints based on machine learning integration are disclosed herein. In use, the system receives at least one first parameter associated with at least one sensor and associates the first parameter with a pre-identified first digital signature in a signature database. A machine learning system is trained based on the first parameter and the pre-identified digital signature. The system then receives at least one second parameter from the at least one sensor and determines that the second parameter is independent of a digital signature in the signature database. Using the machine learning system, a second digital signature for the second parameter is identified and saved in the signature database.
    Type: Application
    Filed: February 13, 2024
    Publication date: August 15, 2024
    Inventors: Daniel Cook, Michael Stowell, Karel Vanheusden, George Clayton Gibbs, Jacques Nicole, Carlos Montalvo, Kyle Matthys, Bruce Lanning, Sung Lim, John Chmiola
  • Publication number: 20240275608
    Abstract: Methods and system to learn precise sensing fingerprints based on machine learning integration are disclosed herein. In use, the system receives at least one first parameter associated with at least one sensor and associates the first parameter with a pre-identified first digital signature in a signature database. A machine learning system is trained based on the first parameter and the pre-identified digital signature. The system then receives at least one second parameter from the at least one sensor and determines that the second parameter is independent of a digital signature in the signature database. Using the machine learning system, a second digital signature for the second parameter is identified and saved in the signature database.
    Type: Application
    Filed: February 13, 2024
    Publication date: August 15, 2024
    Inventors: Daniel Cook, Michael Stowell, Karel Vanheusden, George Clayton Gibbs, Jacques Nicole, Carlos Montalvo, Kyle Matthys, Bruce Lanning, Sung Lim, John Chmiola
  • Publication number: 20240273648
    Abstract: Methods and system to learn precise sensing fingerprints based on machine learning integration are disclosed herein. In use, the system receives at least one first parameter associated with at least one sensor and associates the first parameter with a pre-identified first digital signature in a signature database. A machine learning system is trained based on the first parameter and the pre-identified digital signature. The system then receives at least one second parameter from the at least one sensor and determines that the second parameter is independent of a digital signature in the signature database. Using the machine learning system, a second digital signature for the second parameter is identified and saved in the signature database.
    Type: Application
    Filed: February 13, 2024
    Publication date: August 15, 2024
    Inventors: Daniel Cook, Keith Norman, Kyle Matthys, Michael Stowell, Karel Vanheusden, George Clayton Gibbs, Jacques Nicole, Carlos Montalvo, Bruce Lanning, Sung Lim, John Chmiola