Patents by Inventor Kenneth A. Abeloe

Kenneth A. Abeloe 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: 12174631
    Abstract: A method of operating an apparatus using a control system that includes at least one neural network. The method includes receiving an input value captured by the apparatus, processing the input value using the at least one neural network of the control system implemented on first one or more solid-state chips, and obtaining an output from the at least one neural network resulting from processing the input value. The method may also include processing the output with another neural network implemented on solid-state chips to determine whether the output breaches a predetermined condition that is unchangeable after an initial installation onto the control system. The aforementioned another neural network is prevented from being retrained. The method may also include the step of using the output from the at least one neural network to control the apparatus unless the output breaches the predetermined condition. Similar corresponding apparatuses are described.
    Type: Grant
    Filed: October 12, 2023
    Date of Patent: December 24, 2024
    Assignee: Apex AI Industries, LLC
    Inventor: Kenneth A. Abeloe
  • Publication number: 20240219907
    Abstract: A method of operating an apparatus using a control system that includes at least one neural network. The method includes receiving an input value captured by the apparatus, processing the input value using the at least one neural network of the control system implemented on first one or more solid-state chips, and obtaining an output from the at least one neural network resulting from processing the input value. The method may also include processing the output with another neural network implemented on solid-state chips to determine whether the output breaches a predetermined condition that is unchangeable after an initial installation onto the control system. The aforementioned another neural network is prevented from being retrained. The method may also include the step of using the output from the at least one neural network to control the apparatus unless the output breaches the predetermined condition. Similar corresponding apparatuses are described.
    Type: Application
    Filed: October 12, 2023
    Publication date: July 4, 2024
    Inventor: Kenneth A. Abeloe
  • Patent number: 11815893
    Abstract: A method of operating an apparatus using a control system that includes at least one neural network. The method includes receiving an input value captured by the apparatus, processing the input value using the at least one neural network of the control system implemented on first one or more solid-state chips, and obtaining an output from the at least one neural network resulting from processing the input value. The method may also include processing the output with another neural network implemented on solid-state chips to determine whether the output breaches a predetermined condition that is unchangeable after an initial installation onto the control system. The aforementioned another neural network is prevented from being retrained. The method may also include the step of using the output from the at least one neural network to control the apparatus unless the output breaches the predetermined condition. Similar corresponding apparatuses are described.
    Type: Grant
    Filed: October 21, 2021
    Date of Patent: November 14, 2023
    Assignee: APEX AI INDUSTRIES, LLC
    Inventor: Kenneth A. Abeloe
  • Patent number: 11580159
    Abstract: Systems and methods for full motion video search are provided. In one aspect, a method includes receiving one or more search terms. The search terms include one or more of a characterization of the amount of man-made features in a video image and a characterization of the amount of natural features in the video image. The method further includes searching a full motion video database based on the one or more search terms.
    Type: Grant
    Filed: January 6, 2022
    Date of Patent: February 14, 2023
    Assignee: KBR WYLE SERVICES, LLC
    Inventors: Kenneth A. Abeloe, Dennis Hsu
  • Patent number: 11366472
    Abstract: A method of operating an apparatus using a control system that includes at least one neural network. The method includes receiving an input value captured by the apparatus, processing the input value using the at least one neural network of the control system implemented on first one or more solid-state chips, and obtaining an output from the at least one neural network resulting from processing the input value. The method may also include processing the output with another neural network implemented on solid-state chips to determine whether the output breaches a predetermined condition that is unchangeable after an initial installation onto the control system. The aforementioned another neural network is prevented from being retrained. The method may also include the step of using the output from the at least one neural network to control the apparatus unless the output breaches the predetermined condition. Similar corresponding apparatuses are described.
    Type: Grant
    Filed: October 6, 2020
    Date of Patent: June 21, 2022
    Assignee: APEX ARTIFICIAL INTELLIGENCE INDUSTRIES, INC.
    Inventor: Kenneth A. Abeloe
  • Publication number: 20220156319
    Abstract: Systems and methods for full motion video search are provided. In one aspect, a method includes receiving one or more search terms. The search terms include one or more of a characterization of the amount of man-made features in a video image and a characterization of the amount of natural features in the video image. The method further includes searching a full motion video database based on the one or more search terms.
    Type: Application
    Filed: January 6, 2022
    Publication date: May 19, 2022
    Inventors: Kenneth A. Abeloe, Dennis Hsu
  • Patent number: 11244003
    Abstract: Systems and methods for full motion video search are provided. In one aspect, a method includes receiving one or more search terms. The search terms include one or more of a characterization of the amount of man-made features in a video image and a characterization of the amount of natural features in the video image. The method further includes searching a full motion video database based on the one or more search terms.
    Type: Grant
    Filed: November 4, 2019
    Date of Patent: February 8, 2022
    Assignee: CENTAURI, LLC
    Inventors: Kenneth A. Abeloe, Dennis Hsu
  • Patent number: 10802488
    Abstract: An apparatus having components implemented on one or more solid-state chips. The apparatus includes an input device constructed to generate an input data value (input value), and a neural network implemented on solid-state chips trained to generate an output to control the apparatus by processing the input value. The apparatus also includes another neural network implemented on solid-state chips and configured to receive the output from the neural network. The another neural network is trained to determine whether the output of the neural network corresponds to a predetermined condition and generate a control output from the output of the neural network. The apparatus includes a processor configured receive the control output from the aforementioned another neural network, and in response to the control output indicating the output of the first neural network corresponds to a predetermined condition, and control an operation of the neural network. Corresponding methods are also disclosed.
    Type: Grant
    Filed: August 14, 2019
    Date of Patent: October 13, 2020
    Assignee: Apex Artificial Intelligence Industries, Inc.
    Inventor: Kenneth A. Abeloe
  • Patent number: 10802489
    Abstract: A method of operating an apparatus using a control system that includes at least one neural network. The method includes receiving an input value captured by the apparatus, processing the input value using the at least one neural network of the control system implemented on first one or more solid-state chips, and obtaining an output from the at least one neural network resulting from processing the input value. The method may also include processing the output with another neural network implemented on solid-state chips to determine whether the output breaches a predetermined condition that is unchangeable after an initial installation onto the control system. The aforementioned another neural network is prevented from being retrained. The method may also include the step of using the output from the at least one neural network to control the apparatus unless the output breaches the predetermined condition. Similar corresponding apparatuses are described.
    Type: Grant
    Filed: August 14, 2019
    Date of Patent: October 13, 2020
    Assignee: Apex Artificial Intelligence Industries, Inc.
    Inventor: Kenneth A. Abeloe
  • Patent number: 10795364
    Abstract: A device implemented on solid-state chips for an autonomous machine with sensors. The device includes a neural network on the autonomous machine, trained with a first training data set that includes training data generated by a sensor located remote from the autonomous machine, and configured to generate output data after processing input data. The device also includes a processor coupled to the neural network, and a detector to receive the output data and determine whether the output data breaches a predetermined condition, and a neural network manager coupled to the neural network and adapted to re-train the first neural network using another training data set if the detector determines the output data breach the first predetermined condition; and another neural network structured and trained identical to the first neural network to generate a second output data by processing the set of input data, wherein the neural networks are executed simultaneously.
    Type: Grant
    Filed: August 14, 2019
    Date of Patent: October 6, 2020
    Assignee: Apex Artificial Intelligence Industries, Inc.
    Inventor: Kenneth A. Abeloe
  • Patent number: 10672389
    Abstract: Systems and methods for automatically self-correcting or correcting in real-time one or more neural networks after detecting a triggering event, or breaching boundary conditions are provided. Such a triggering event may indicate incorrect output signal or data being generated by the one or more neural networks. In particular, machine controllers of the invention limit the operations of neural networks to be within boundary conditions. Autonomous machines of the invention can be self-corrected after a breach of a boundary condition is detected. Autonomous land vehicles of the invention are capable of determining the timing of automatic transition to the manual control from automated driving mode. The controller of the invention filters and saves input-output data sets that fall within boundary conditions for later training of neural networks. The controllers of the invention include security architectures to prevent damages from virus attacks or system malfunctions.
    Type: Grant
    Filed: March 25, 2019
    Date of Patent: June 2, 2020
    Assignee: Apex Artificial Intelligence Industries, Inc.
    Inventor: Kenneth A. Abeloe
  • Patent number: 10627820
    Abstract: Systems and methods for automatically self-correcting or correcting in real-time one or more neural networks after detecting a triggering event, or breaching boundary conditions are provided. Such a triggering event may indicate incorrect output signal or data being generated by the one or more neural networks. In particular, machine controllers of the invention limit the operations of neural networks to be within boundary conditions. Autonomous machines of the invention can be self-corrected after a breach of a boundary condition is detected. Autonomous land vehicles of the invention are capable of determining the timing of automatic transition to the manual control from automated driving mode. The controller of the invention filters and saves input-output data sets that fall within boundary conditions for later training of neural networks. The controllers of the invention include security architectures to prevent damages from virus attacks or system malfunctions.
    Type: Grant
    Filed: April 26, 2019
    Date of Patent: April 21, 2020
    Assignee: Apex Artificial Intelligence Industries, Inc.
    Inventor: Kenneth A. Abeloe
  • Patent number: 10620631
    Abstract: Systems and methods for automatically self-correcting or correcting in real-time one or more neural networks after detecting a triggering event, or breaching boundary conditions are provided. Such a triggering event may indicate incorrect output signal or data being generated by the one or more neural networks. In particular, machine controllers of the invention limit the operations of neural networks to be within boundary conditions. Autonomous machines of the invention can be self-corrected after a breach of a boundary condition is detected. Autonomous land vehicles of the invention are capable of determining the timing of automatic transition to the manual control from automated driving mode. The controller of the invention filters and saves input-output data sets that fall within boundary conditions for later training of neural networks. The controllers of the invention include security architectures to prevent damages from virus attacks or system malfunctions.
    Type: Grant
    Filed: April 8, 2019
    Date of Patent: April 14, 2020
    Assignee: Apex Artificial Intelligence Industries, Inc.
    Inventor: Kenneth A. Abeloe
  • Publication number: 20200065329
    Abstract: Systems and methods for full motion video search are provided. In one aspect, a method includes receiving one or more search terms. The search terms include one or more of a characterization of the amount of man-made features in a video image and a characterization of the amount of natural features in the video image. The method further includes searching a full motion video database based on the one or more search terms.
    Type: Application
    Filed: November 4, 2019
    Publication date: February 27, 2020
    Inventors: Kenneth A. Abeloe, Dennis Hsu
  • Patent number: 10496701
    Abstract: Systems and methods for full motion video search are provided. In one aspect, a method includes receiving one or more search terms. The search terms include one or more of a characterization of the amount of man-made features in a video image and a characterization of the amount of natural features in the video image. The method further includes searching a full motion video database based on the one or more search terms.
    Type: Grant
    Filed: July 21, 2017
    Date of Patent: December 3, 2019
    Assignee: Centauri, LLC
    Inventors: Kenneth A. Abeloe, Dennis Hsu
  • Publication number: 20190204832
    Abstract: Systems and methods for automatically self-correcting or correcting in real-time one or more neural networks after detecting a triggering event, or breaching boundary conditions are provided. Such a triggering event may indicate incorrect output signal or data being generated by the one or more neural networks. In particular, machine controllers of the invention limit the operations of neural networks to be within boundary conditions. Autonomous machines of the invention can be self-corrected after a breach of a boundary condition is detected. Autonomous land vehicles of the invention are capable of determining the timing of automatic transition to the manual control from automated driving mode. The controller of the invention filters and saves input-output data sets that fall within boundary conditions for later training of neural networks. The controllers of the invention include security architectures to prevent damages from virus attacks or system malfunctions.
    Type: Application
    Filed: May 29, 2018
    Publication date: July 4, 2019
    Inventor: Kenneth A. Abeloe
  • Patent number: 10324467
    Abstract: Systems and methods for automatically self-correcting or correcting in real-time one or more neural networks after detecting a triggering event, or breaching boundary conditions are provided. Such a triggering event may indicate incorrect output signal or data being generated by the one or more neural networks. In particular, machine controllers of the invention limit the operations of neural networks to be within boundary conditions. Autonomous machines of the invention can be self-corrected after a breach of a boundary condition is detected. Autonomous land vehicles of the invention are capable of determining the timing of automatic transition to the manual control from automated driving mode. The controller of the invention filters and saves input-output data sets that fall within boundary conditions for later training of neural networks. The controllers of the invention include security architectures to prevent damages from virus attacks or system malfunctions.
    Type: Grant
    Filed: May 29, 2018
    Date of Patent: June 18, 2019
    Assignee: Apex Artificial Intelligence Industries, Inc.
    Inventor: Kenneth A. Abeloe
  • Patent number: 10254760
    Abstract: Systems and methods for automatically self-correcting or correcting in real-time one or more neural networks after detecting a triggering event, or breaching boundary conditions are provided. Such a triggering event may indicate incorrect output signal or data being generated by the one or more neural networks. In particular, machine controllers of the invention limit the operations of neural networks to be within boundary conditions. Autonomous machines of the invention can be self-corrected after a breach of a boundary condition is detected. Autonomous land vehicles of the invention are capable of determining the timing of automatic transition to the manual control from automated driving mode. The controller of the invention filters and saves input-output data sets that fall within boundary conditions for later training of neural networks. The controllers of the invention include security architectures to prevent damages from virus attacks or system malfunctions.
    Type: Grant
    Filed: June 4, 2018
    Date of Patent: April 9, 2019
    Assignee: Apex Artificial Intelligence Industries, Inc.
    Inventor: Kenneth A. Abeloe
  • Patent number: 10242665
    Abstract: Systems and methods for automatically self-correcting or correcting in real-time one or more neural networks after detecting a triggering event, or breaching boundary conditions are provided. Such a triggering event may indicate incorrect output signal or data being generated by the one or more neural networks. In particular, machine controllers of the invention limit the operations of neural networks to be within boundary conditions. Autonomous machines of the invention can be self-corrected after a breach of a boundary condition is detected. Autonomous land vehicles of the invention are capable of determining the timing of automatic transition to the manual control from automated driving mode. The controller of the invention filters and saves input-output data sets that fall within boundary conditions for later training of neural networks. The controllers of the invention include security architectures to prevent damages from virus attacks or system malfunctions.
    Type: Grant
    Filed: June 4, 2018
    Date of Patent: March 26, 2019
    Assignee: Apex Artificial Intelligence Industries, Inc.
    Inventor: Kenneth A. Abeloe
  • Patent number: 10085014
    Abstract: Systems and methods for viewing stereoscopic television are described. The methods generate stereoscopic views from 3D content; synchronize with external view ware (e.g., shuttered glasses) to include shutter information and viewing geometry; sequence 3D content for multiple viewers at multiple perspective views; and output to a display component for viewing.
    Type: Grant
    Filed: February 15, 2017
    Date of Patent: September 25, 2018
    Assignee: Virginia Venture Industries, LLC
    Inventor: Kenneth A. Abeloe