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A Joint Network for Grasp Detection Conditioned on Natural Language Commands

Yiye Chen, Ruinian Xu, Yunzhi Lin, Patricio A. Vela

202139 citationsDOI

Abstract

We consider the task of grasping a target object based on a natural language command query. Previous work primarily focused on localizing the object given the query, which requires a separate grasp detection module to grasp it. The cascaded application of two pipelines incurs errors in overlapping multi-object cases due to ambiguity in the individal outputs. This work proposes a model named Command Grasping Network (CGNet) to directly output command satisficing grasps from RGB image and textual command inputs. A dataset with ground truth (image, command, grasps) tuple is generated based on the VMRD dataset to train the proposed network. Experimental results on the generated test set show that CGNet outperforms a cascaded object-retrieval and grasp detection baseline by a large margin. Three physical experiments demonstrate the functionality and performance of CGNet.

Topics & Concepts

Computer scienceGRASPArtificial intelligenceTupleObject (grammar)Margin (machine learning)AmbiguitySet (abstract data type)Computer visionTask (project management)Object detectionNatural languageMachine learningPattern recognition (psychology)EngineeringProgramming languageMathematicsDiscrete mathematicsSystems engineeringRobot Manipulation and LearningHand Gesture Recognition SystemsMultimodal Machine Learning Applications
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