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公开(公告)号:US10207402B2
公开(公告)日:2019-02-19
申请号:US15377280
申请日:2016-12-13
Applicant: Google Inc.
Inventor: Sergey Levine , Peter Pastor Sampedro , Alex Krizhevsky
Abstract: Deep machine learning methods and apparatus related to manipulation of an object by an end effector of a robot. Some implementations relate to training a deep neural network to predict a measure that candidate motion data for an end effector of a robot will result in a successful grasp of one or more objects by the end effector. Some implementations are directed to utilization of the trained deep neural network to servo a grasping end effector of a robot to achieve a successful grasp of an object by the grasping end effector. For example, the trained deep neural network may be utilized in the iterative updating of motion control commands for one or more actuators of a robot that control the pose of a grasping end effector of the robot, and to determine when to generate grasping control commands to effectuate an attempted grasp by the grasping end effector.
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公开(公告)号:US20170252922A1
公开(公告)日:2017-09-07
申请号:US15377280
申请日:2016-12-13
Applicant: Google Inc.
Inventor: Sergey Levine , Peter Pastor Sampedro , Alex Krizhevsky
IPC: B25J9/16
CPC classification number: B25J9/161 , B25J9/1612 , B25J9/1664 , B25J9/1697 , G05B13/027 , G06N3/0454 , G06N3/084
Abstract: Deep machine learning methods and apparatus related to manipulation of an object by an end effector of a robot. Some implementations relate to training a deep neural network to predict a measure that candidate motion data for an end effector of a robot will result in a successful grasp of one or more objects by the end effector. Some implementations are directed to utilization of the trained deep neural network to servo a grasping end effector of a robot to achieve a successful grasp of an object by the grasping end effector. For example, the trained deep neural network may be utilized in the iterative updating of motion control commands for one or more actuators of a robot that control the pose of a grasping end effector of the robot, and to determine when to generate grasping control commands to effectuate an attempted grasp by the grasping end effector.
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