Abstract: The present disclosure generally relates to performance recreation, and in particular, the recreation of observed human performance using reinforcement learning. In this regard, a first object is identified from a plurality of objects. The manipulation of the first object is tracked from a first position to a second position. A characterization of the manipulation is generated. A policy that controls a mechanical gripper to recreate the manipulation is generated based on an iteratively increasing cumulative award. The mechanical gripper iteratively recreates the manipulation to increase a cumulative award with each recreation.
Abstract: Various aspects of the technology described herein are generally directed to systems, methods, and computer storage media for, among other things, providing robotic system services including implementing an enhanced robotics framework. The enhanced robotics framework includes a visual feedback, a skills library, and minting and awarding a fungible token for activities associated with a robot.
Type:
Grant
Filed:
December 14, 2022
Date of Patent:
March 24, 2026
Assignee:
AIVOT, LLC
Inventors:
Shashwat Srivastav, Manish Chablani, Art Min, Sriram Sankaran, Igor Medvedev, Julio Ng
Abstract: The present disclosure generally relates to performance recreation, and in particular, the recreation of observed human performance using reinforcement learning. In this regard, a first object is identified from a plurality of objects. The manipulation of the first object is tracked from a first position to a second position. A characterization of the manipulation is generated. A policy that controls a mechanical gripper to recreate the manipulation is generated based on an iteratively increasing cumulative award. The mechanical gripper iteratively recreates the manipulation to increase a cumulative award with each recreation.