Patents by Inventor Shervin Javdani

Shervin Javdani 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: 11787439
    Abstract: Example methods for multistage autonomous vehicle motion planning include obtaining sensor data descriptive of an environment of the autonomous vehicle; identifying one or more objects in the environment based on the sensor data; generating a plurality of candidate strategies, wherein each candidate strategy of the plurality of candidate strategies comprises a set of discrete decisions respecting the one or more objects, wherein generating the plurality of candidate strategies includes: determining that at least two strategies satisfy an equivalence criterion, such that the plurality of candidate strategies include at least one candidate strategy corresponding to an equivalence class representative of a plurality of different strategies that are based on different discrete decisions; determining candidate trajectories respectively for the plurality of candidate strategies; and initiating control of the autonomous vehicle based on a selected candidate trajectory.
    Type: Grant
    Filed: November 18, 2022
    Date of Patent: October 17, 2023
    Assignee: AURORA OPERATIONS, INC.
    Inventors: James Andrew Bagnell, Shervin Javdani, Venkatraman Narayanan
  • Publication number: 20220297940
    Abstract: A system for object processing is disclosed. The system includes a framework of processes that enable reliable deployment of artificial intelligence-based policies in a warehouse setting to improve the speed, reliability, and accuracy of the system. The system harnesses a vast number of picks to provide data points to machine learning techniques. These machine learning techniques use the data to refine or reinforce in-use policies to optimize the speed and successful transfer of objects within the system. For example, objects in the system are identified at a supply location, a predetermined set of information regarding object is retrieved and combined with a set of object information and processing parameters determined by the system. The combined information is then used to determine routing of the object according to an initial policy. This policy is then observed, altered, tested, and re-implemented in an altered form.
    Type: Application
    Filed: June 9, 2022
    Publication date: September 22, 2022
    Inventors: Thomas WAGNER, Matthew T. MASON, Thomas KOLETSCHKA, Abraham SCHNEIDER, Shervin JAVDANI, Christopher GEYER
  • Patent number: 11407589
    Abstract: A system for object processing is disclosed. The system includes a framework of processes that enable reliable deployment of artificial intelligence-based policies in a warehouse setting to improve the speed, reliability, and accuracy of the system. The system harnesses a vast number of picks to provide data points to machine learning techniques. These machine learning techniques use the data to refine or reinforce in-use policies to optimize the speed and successful transfer of objects within the system. For example, objects in the system are identified at a supply location, a predetermined set of information regarding object is retrieved and combined with a set of object information and processing parameters determined by the system. The combined information is then used to determine routing of the object according to an initial policy. This policy is then observed, altered, tested, and re-implemented in an altered form.
    Type: Grant
    Filed: October 25, 2019
    Date of Patent: August 9, 2022
    Assignee: Berkshire Grey Operating Company, Inc.
    Inventors: Thomas Wagner, Matthew T. Mason, Thomas Koletschka, Abraham Schneider, Shervin Javdani, Christopher Geyer
  • Publication number: 20200130935
    Abstract: A system for object processing is disclosed. The system includes a framework of processes that enable reliable deployment of artificial intelligence-based policies in a warehouse setting to improve the speed, reliability, and accuracy of the system. The system harnesses a vast number of picks to provide data points to machine learning techniques. These machine learning techniques use the data to refine or reinforce in-use policies to optimize the speed and successful transfer of objects within the system. For example, objects in the system are identified at a supply location, a predetermined set of information regarding object is retrieved and combined with a set of object information and processing parameters determined by the system. The combined information is then used to determine routing of the object according to an initial policy. This policy is then observed, altered, tested, and re-implemented in an altered form.
    Type: Application
    Filed: October 25, 2019
    Publication date: April 30, 2020
    Inventors: Thomas Wagner, Matthew T. Mason, Thomas Koletschka, Abraham Schneider, Shervin Javdani, Christopher Geyer