Self-Supervised Correspondence in Visuomotor Policy Learning.

IEEE Robotics and Automation Letters(2020)

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摘要
In this letter, we explore using self-supervised correspondence for improving the generalization performance and sample efficiency of visuomotor policy learning. Prior work has primarily used approaches such as autoencoding, pose-based losses, and end-to-end policy optimization in order to train the visual portion of visuomotor policies. We instead propose an approach using self-supervised dense v...
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关键词
Visualization,Training,Task analysis,Robots,Hardware,Complexity theory,Feature extraction
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