Invention Grant
- Patent Title: Machine-learning systems and techniques to optimize teleoperation and/or planner decisions
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Application No.: US16518921Application Date: 2019-07-22
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Publication No.: US11022970B2Publication Date: 2021-06-01
- Inventor: Jesse Sol Levinson , Gabriel Thurston Sibley , Ashutosh Gajanan Rege
- Applicant: Zoox, Inc.
- Applicant Address: US CA Foster City
- Assignee: Zoox, Inc.
- Current Assignee: Zoox, Inc.
- Current Assignee Address: US CA Foster City
- Agency: Lee & Hayes, P.C.
- Main IPC: G05D1/02
- IPC: G05D1/02 ; G05D1/00 ; G08G1/00 ; H04L29/08 ; H04L12/24 ; G06N20/00 ; G08G1/16 ; G08G1/005 ; G06Q10/00 ; G01S17/87 ; G01S7/497 ; B60Q1/50 ; G01S17/86 ; G01S17/931 ; G06N7/00 ; G01S13/86 ; G01S13/87 ; G01S13/931

Abstract:
A system, an apparatus or a process may be configured to implement an application that applies artificial intelligence and/or machine-learning techniques to predict an optimal course of action (or a subset of courses of action) for an autonomous vehicle system (e.g., one or more of a planner of an autonomous vehicle, a simulator, or a teleoperator) to undertake based on suboptimal autonomous vehicle performance and/or changes in detected sensor data (e.g., new buildings, landmarks, potholes, etc.). The application may determine a subset of trajectories based on a number of decisions and interactions when resolving an anomaly due to an event or condition. The application may use aggregated sensor data from multiple autonomous vehicles to assist in identifying events or conditions that might affect travel (e.g., using semantic scene classification). An optimal subset of trajectories may be formed based on recommendations responsive to semantic changes (e.g., road construction).
Public/Granted literature
- US11061398B2 Machine-learning systems and techniques to optimize teleoperation and/or planner decisions Public/Granted day:2021-07-13
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