Patents by Inventor Samuel English Anthony

Samuel English Anthony 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: 11919545
    Abstract: A system uses a machine learning based model to determine attributes describing states of mind and behavior of traffic entities in video frames captured by an autonomous vehicle. The system classifies video frames according to traffic scenarios depicted, where each scenario is associated with a filter based on vehicle attributes, traffic attributes, and road attributes. The system identifies a set of video frames associated with ground truth scenarios for validating the accuracy of the machine learning based model and predicts attributes of traffic entities in the video frames. The system analyzes video frames captured after the set of video frames to determine actual attributes of the traffic entities. Based on a comparison of the predicted attributes and actual attributes, the system determines a likelihood of the machine learning based model making accurate predictions and uses the likelihood to generate a navigation action table for controlling the autonomous vehicle.
    Type: Grant
    Filed: May 14, 2021
    Date of Patent: March 5, 2024
    Assignee: PERCEPTIVE AUTOMATA, INC.
    Inventors: Jeffrey D. Zaremba, Till S. Hartmann, Samuel English Anthony
  • Patent number: 11840261
    Abstract: A system uses a machine learning based model to determine attributes describing states of mind and behavior of traffic entities in video frames captured by an autonomous vehicle. The system classifies video frames according to traffic scenarios depicted, where each scenario is associated with a filter based on vehicle attributes, traffic attributes, and road attributes. The system identifies a set of video frames associated with ground truth scenarios for validating the accuracy of the machine learning based model and predicts attributes of traffic entities in the video frames. The system analyzes video frames captured after the set of video frames to determine actual attributes of the traffic entities. Based on a comparison of the predicted attributes and actual attributes, the system determines a likelihood of the machine learning based model making accurate predictions and uses the likelihood to generate a navigation action table for controlling the autonomous vehicle.
    Type: Grant
    Filed: May 14, 2021
    Date of Patent: December 12, 2023
    Assignee: Perceptive Automata, Inc.
    Inventors: Till S. Hartmann, Jeffrey D. Zaremba, Samuel English Anthony
  • Publication number: 20230347931
    Abstract: A system evaluates modifications to components of an autonomous vehicle (AV) stack. The system receives driving recommendations traffic scenarios based on user annotations of video frames showing each traffic scenario. For each traffic scenario, the system predicts driving recommendations based on the AV stack. The system determines a measure of quality of driving recommendation by comparing predicted driving recommendations based on the AV stack with the driving recommendations received for the traffic scenario. The measure of quality of driving recommendation is used for evaluating components of the AV stack. The system determines a driving recommendation for an AV corresponding to ranges of SOMAI (state of mind) score and sends signals to controls of the autonomous vehicle to navigate the autonomous vehicle according to the driving recommendation. The system identifies additional training data for training machine learning model based on the measure of driving quality.
    Type: Application
    Filed: April 27, 2023
    Publication date: November 2, 2023
    Inventors: Jeffrey Donald Zaremba, Chuan Yen Ian Goh, Omar Al Assad, Till S. Hartman, Sonia Poltoraski, Samuel English Anthony
  • Publication number: 20230351772
    Abstract: A system evaluates modifications to components of an autonomous vehicle (AV) stack. The system receives driving recommendations traffic scenarios based on user annotations of video frames showing each traffic scenario. For each traffic scenario, the system predicts driving recommendations based on the AV stack. The system determines a measure of quality of driving recommendation by comparing predicted driving recommendations based on the AV stack with the driving recommendations received for the traffic scenario. The measure of quality of driving recommendation is used for evaluating components of the AV stack. The system determines a driving recommendation for an AV corresponding to ranges of SOMAI (state of mind) score and sends signals to controls of the autonomous vehicle to navigate the autonomous vehicle according to the driving recommendation. The system identifies additional training data for training machine learning model based on the measure of driving quality.
    Type: Application
    Filed: April 27, 2023
    Publication date: November 2, 2023
    Inventors: Sonia Poltoraski, Till S. Hartman, Jeffrey Donald Zaremba, Samuel English Anthony, Chuan Yen Ian Goh, Omar Al Assad
  • Publication number: 20230347932
    Abstract: A system evaluates modifications to components of an autonomous vehicle (AV) stack. The system receives driving recommendations traffic scenarios based on user annotations of video frames showing each traffic scenario. For each traffic scenario, the system predicts driving recommendations based on the AV stack. The system determines a measure of quality of driving recommendation by comparing predicted driving recommendations based on the AV stack with the driving recommendations received for the traffic scenario. The measure of quality of driving recommendation is used for evaluating components of the AV stack. The system determines a driving recommendation for an AV corresponding to ranges of SOMAI (state of mind) score and sends signals to controls of the autonomous vehicle to navigate the autonomous vehicle according to the driving recommendation. The system identifies additional training data for training machine learning model based on the measure of driving quality.
    Type: Application
    Filed: April 27, 2023
    Publication date: November 2, 2023
    Inventors: Jeffrey Donald Zaremba, Chuan Yen Ian Goh, Omar Al Assad, Till S. Hartman, Sonia Poltoraski, Samuel English Anthony, James Gowers
  • Patent number: 11772663
    Abstract: A system performs modeling and simulation of non-stationary traffic entities for testing and development of modules used in an autonomous vehicle system. The system uses a machine learning based model that predicts hidden context attributes for traffic entities that may be encountered by a vehicle in traffic. The system generates simulation data for testing and development of modules that help navigate autonomous vehicles. The generated simulation data may be image or video data including representations of traffic entities, for example, pedestrians, bicyclists, and other vehicles. The system may generate simulation data using generative adversarial neural networks.
    Type: Grant
    Filed: December 10, 2019
    Date of Patent: October 3, 2023
    Assignee: PERCEPTIVE AUTOMATA, INC.
    Inventor: Samuel English Anthony
  • Patent number: 11753046
    Abstract: Systems and methods for predicting user interaction with vehicles. A computing device receives an image and a video segment of a road scene, the first at least one of an image and a video segment being taken from a perspective of a participant in the road scene and then generates stimulus data based on the image and the video segment. Stimulus data is transmitted to a user interface and response data is received, which includes at least one of an action and a likelihood of the action corresponding to another participant in the road scene. The computing device aggregates a subset of the plurality of response data to form statistical data and a model is created based on the statistical data. The model is applied to another image or video segment and a prediction of user behavior in the another image or video segment is generated.
    Type: Grant
    Filed: September 7, 2021
    Date of Patent: September 12, 2023
    Assignee: PERCEPTIVE AUTOMATA, INC.
    Inventors: Samuel English Anthony, Kshitij Misra, Avery Wagner Faller
  • Patent number: 11733703
    Abstract: An autonomous vehicle uses machine learning based models to predict hidden context attributes associated with traffic entities. The system uses the hidden context to predict behavior of people near a vehicle in a way that more closely resembles how human drivers would judge the behavior. The system determines an activation threshold value for a braking system of the autonomous vehicle based on the hidden context. The system modifies a world model based on the hidden context predicted by the machine learning based model. The autonomous vehicle is safely navigated, such that the vehicle stays at least a threshold distance away from traffic entities.
    Type: Grant
    Filed: January 30, 2020
    Date of Patent: August 22, 2023
    Assignee: PERCEPTIVE AUTOMATA, INC.
    Inventor: Samuel English Anthony
  • Patent number: 11667301
    Abstract: A system performs modeling and simulation of non-stationary traffic entities for testing and development of modules used in an autonomous vehicle system. The system uses a machine learning based model that predicts hidden context attributes for traffic entities that may be encountered by a vehicle in traffic. The system generates simulation data for testing and development of modules that help navigate autonomous vehicles. The generated simulation data may be image or video data including representations of traffic entities, for example, pedestrians, bicyclists, and other vehicles. The system may generate simulation data using generative adversarial neural networks.
    Type: Grant
    Filed: December 10, 2019
    Date of Patent: June 6, 2023
    Assignee: Perceptive Automata, Inc.
    Inventors: Kshitij Misra, Samuel English Anthony
  • Patent number: 11520346
    Abstract: An autonomous vehicle uses machine learning based models to predict hidden context attributes associated with traffic entities. The system uses the hidden context to predict behavior of people near a vehicle in a way that more closely resembles how human drivers would judge the behavior. The system determines an activation threshold value for a braking system of the autonomous vehicle based on the hidden context. The system modifies a world model based on the hidden context predicted by the machine learning based model. The autonomous vehicle is safely navigated, such that the vehicle stays at least a threshold distance away from traffic entities.
    Type: Grant
    Filed: January 30, 2020
    Date of Patent: December 6, 2022
    Assignee: Perceptive Automata, Inc.
    Inventor: Samuel English Anthony
  • Patent number: 11518413
    Abstract: An autonomous vehicle collects sensor data of an environment surrounding the autonomous vehicle including traffic entities such as pedestrians, bicyclists, or other vehicles. The sensor data is provided to a machine learning based model along with an expected turn direction of the autonomous vehicle to determine a hidden context attribute of a traffic entity given the expected turn direction of the autonomous vehicle. The hidden context attribute of the traffic entity represents factors that affect the behavior of the traffic entity, and the hidden context attribute is used to predict future behavior of the traffic entity. Instructions to control the autonomous vehicle are generated based on the hidden context attribute.
    Type: Grant
    Filed: May 14, 2021
    Date of Patent: December 6, 2022
    Assignee: PERCEPTIVE AUTOMATA, INC.
    Inventors: Samuel English Anthony, Till S. Hartmann, Jacob Reinier Maat, Dylan James Rose, Kevin W. Sylvestre
  • Patent number: 11467579
    Abstract: An autonomous vehicle uses probabilistic neural networks to predict hidden context attributes associated with traffic entities. The hidden context represents behavior of the traffic entities in the traffic. The probabilistic neural network is configured to receive an image of traffic as input and generate output representing hidden context for a traffic entity displayed in the image. The system executes the probabilistic neural network to generate output representing hidden context for traffic entities encountered while navigating through traffic. The system determines a measure of uncertainty for the output values. The autonomous vehicle uses the measure of uncertainty generated by the probabilistic neural network during navigation.
    Type: Grant
    Filed: February 6, 2020
    Date of Patent: October 11, 2022
    Assignee: Perceptive Automata, Inc.
    Inventors: Jacob Reinier Maat, Samuel English Anthony
  • Publication number: 20220138491
    Abstract: Systems and methods for predicting user interaction with vehicles. A computing device receives an image and a video segment of a road scene, the first at least one of an image and a video segment being taken from a perspective of a participant in the road scene and then generates stimulus data based on the image and the video segment. Stimulus data is transmitted to a user interface and response data is received, which includes at least one of an action and a likelihood of the action corresponding to another participant in the road scene. The computing device aggregates a subset of the plurality of response data to form statistical data and a model is created based on the statistical data. The model is applied to another image or video segment and a prediction of user behavior in the another image or video segment is generated.
    Type: Application
    Filed: September 7, 2021
    Publication date: May 5, 2022
    Inventors: Samuel English Anthony, Kshitij Misra, Avery Wagner Faller
  • Publication number: 20210356968
    Abstract: A system uses a machine learning based model to determine attributes describing states of mind and behavior of traffic entities in video frames captured by an autonomous vehicle. The system classifies video frames according to traffic scenarios depicted, where each scenario is associated with a filter based on vehicle attributes, traffic attributes, and road attributes. The system identifies a set of video frames associated with ground truth scenarios for validating the accuracy of the machine learning based model and predicts attributes of traffic entities in the video frames. The system analyzes video frames captured after the set of video frames to determine actual attributes of the traffic entities. Based on a comparison of the predicted attributes and actual attributes, the system determines a likelihood of the machine learning based model making accurate predictions and uses the likelihood to generate a navigation action table for controlling the autonomous vehicle.
    Type: Application
    Filed: May 14, 2021
    Publication date: November 18, 2021
    Inventors: Jeffrey D. Zaremba, Till S. Hartmann, Samuel English Anthony
  • Publication number: 20210357662
    Abstract: A system uses a machine learning based model to determine attributes describing states of mind and behavior of traffic entities in video frames captured by an autonomous vehicle. The system classifies video frames according to traffic scenarios depicted, where each scenario is associated with a filter based on vehicle attributes, traffic attributes, and road attributes. The system identifies a set of video frames associated with ground truth scenarios for validating the accuracy of the machine learning based model and predicts attributes of traffic entities in the video frames. The system analyzes video frames captured after the set of video frames to determine actual attributes of the traffic entities. Based on a comparison of the predicted attributes and actual attributes, the system determines a likelihood of the machine learning based model making accurate predictions and uses the likelihood to generate a navigation action table for controlling the autonomous vehicle.
    Type: Application
    Filed: May 14, 2021
    Publication date: November 18, 2021
    Inventors: Till S. Hartmann, Jeffrey D. Zaremba, Samuel English Anthony
  • Publication number: 20210354730
    Abstract: An autonomous vehicle collects sensor data of an environment surrounding the autonomous vehicle including traffic entities such as pedestrians, bicyclists, or other vehicles. The sensor data is provided to a machine learning based model along with an expected turn direction of the autonomous vehicle to determine a hidden context attribute of a traffic entity given the expected turn direction of the autonomous vehicle. The hidden context attribute of the traffic entity represents factors that affect the behavior of the traffic entity, and the hidden context attribute is used to predict future behavior of the traffic entity. Instructions to control the autonomous vehicle are generated based on the hidden context attribute.
    Type: Application
    Filed: May 14, 2021
    Publication date: November 18, 2021
    Inventors: Samuel English Anthony, Till S. Hartmann, Jacob Reinier Maat, Dylan James Rose, Kevin W. Sylvestre
  • Patent number: 11126889
    Abstract: Systems and methods for predicting user interaction with vehicles. A computing device receives an image and a video segment of a road scene, the first at least one of an image and a video segment being taken from a perspective of a participant in the road scene and then generates stimulus data based on the image and the video segment. Stimulus data is transmitted to a user interface and response data is received, which includes at least one of an action and a likelihood of the action corresponding to another participant in the road scene. The computing device aggregates a subset of the plurality of response data to form statistical data and a model is created based on the statistical data. The model is applied to another image or video segment and a prediction of user behavior in the another image or video segment is generated.
    Type: Grant
    Filed: March 24, 2020
    Date of Patent: September 21, 2021
    Assignee: Perceptive Automata Inc.
    Inventors: Samuel English Anthony, Kshitij Misra, Avery Wagner Faller
  • Patent number: D928177
    Type: Grant
    Filed: June 12, 2019
    Date of Patent: August 17, 2021
    Assignee: Perceptive Automata, Inc.
    Inventors: Avery Wagner Faller, Samuel English Anthony
  • Patent number: D928803
    Type: Grant
    Filed: June 12, 2019
    Date of Patent: August 24, 2021
    Assignee: Perceptive Automata, Inc.
    Inventors: Avery Wagner Faller, Samuel English Anthony
  • Patent number: D928804
    Type: Grant
    Filed: June 12, 2019
    Date of Patent: August 24, 2021
    Assignee: Perceptive Automata, Inc.
    Inventors: Avery Wagner Faller, Samuel English Anthony