Invention Grant
- Patent Title: System(s) and method(s) of using imitation learning in training and refining robotic control policies
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Application No.: US17203296Application Date: 2021-03-16
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Publication No.: US11772272B2Publication Date: 2023-10-03
- Inventor: Seyed Mohammad Khansari Zadeh , Eric Jang , Daniel Lam , Daniel Kappler , Matthew Bennice , Brent Austin , Yunfei Bai , Sergey Levine , Alexander Irpan , Nicolas Sievers , Chelsea Finn
- Applicant: GOOGLE LLC
- Applicant Address: US CA Mountain View
- Assignee: GOOGLE LLC
- Current Assignee: GOOGLE LLC
- Current Assignee Address: US CA Mountain View
- Agency: Gray Ice Higdon
- Main IPC: B25J9/16
- IPC: B25J9/16 ; B25J13/06

Abstract:
Implementations described herein relate to training and refining robotic control policies using imitation learning techniques. A robotic control policy can be initially trained based on human demonstrations of various robotic tasks. Further, the robotic control policy can be refined based on human interventions while a robot is performing a robotic task. In some implementations, the robotic control policy may determine whether the robot will fail in performance of the robotic task, and prompt a human to intervene in performance of the robotic task. In additional or alternative implementations, a representation of the sequence of actions can be visually rendered for presentation to the human can proactively intervene in performance of the robotic task.
Public/Granted literature
- US20220297303A1 SYSTEM(S) AND METHOD(S) OF USING IMITATION LEARNING IN TRAINING AND REFINING ROBOTIC CONTROL POLICIES Public/Granted day:2022-09-22
Information query
IPC分类: