2022
DOI: 10.48550/arxiv.2204.03874
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On-Policy Pixel-Level Grasping Across the Gap Between Simulation and Reality

Abstract: Grasp detection in cluttered scenes is a very challenging task for robots. Generating synthetic grasping data is a popular way to train and test grasp methods, as is Dex-net and GraspNet; yet, these methods generate training grasps on 3D synthetic object models, but evaluate at images or point clouds with different distributions, which reduces performance on real scenes due to sparse grasp labels and covariate shift. To solve existing problems, we propose a novel on-policy grasp detection method, which can tra… Show more

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