Markov Logic Networks on semantic attribute relations predict multiple grasp affordances and map them to prototypical patches, enabling generalization to novel objects in robotic grasping.
Describing objects by their attributes,
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Learning Grasp Affordance Reasoning through Semantic Relations
Markov Logic Networks on semantic attribute relations predict multiple grasp affordances and map them to prototypical patches, enabling generalization to novel objects in robotic grasping.