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Learning-based Motion Stabilizer Leveraging Offline Temporal Optimization.

2022 19TH INTERNATIONAL CONFERENCE ON UBIQUITOUS ROBOTS (UR)(2022)

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摘要
During loco-manipulation, instabilities to the robot’s base can be introduced by the manipulator’s motions. Trajectories that are generated on-the-fly may jeopardize the stability and safety of the robot and its surroundings. This work proposes a self-supervised learning-based pipeline to keep a robot stable while executing a given trajectory. Empirical results show that the desired objective can be achieved with the proposed pipeline. Experiments are done in simulation and on hardware on a unique multi-modal, manipulation-capable legged robot, and its scalability is tested on a conventional manipulator.
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关键词
motion stabilizer leveraging offline temporal optimization,loco-manipulation,stability,safety,self-supervised learning-based pipeline,robot stable,manipulation-capable legged robot,conventional manipulator
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