Publication | Closed Access
GPR: Grasp Pose Refinement Network for Cluttered Scenes
32
Citations
38
References
2021
Year
Unknown Venue
EngineeringMachine LearningDexterous ManipulationField RoboticsPoint Cloud ProcessingObject ManipulationObject GraspingImage AnalysisRobot LearningComputational GeometryRobot ManipulationMachine VisionCluttered ScenesComputer ScienceDeep Learning3D Object RecognitionComputer VisionRoboticsScene Modeling
Object grasping in cluttered scenes is a widely investigated field of robot manipulation. Most of the current works focus on estimating grasp pose from point clouds based on an efficient single-shot grasp detection network. However, due to the lack of geometry awareness of the local grasping area, it may cause severe collisions and unstable grasp configurations. In this paper, we propose a two-stage grasp pose refinement network which detects grasps globally while fine-tuning low-quality grasps and filtering noisy grasps locally. Furthermore, we extend the 6-DoF grasp with an extra dimension as grasp width which is critical for collisionless grasping in cluttered scenes. It takes a single-view point cloud as input and predicts dense and precise grasp configurations. To enhance the generalization ability, we build a synthetic single-object grasp dataset including 150 commodities of various shapes, and a complex multi-object cluttered scene dataset including 100k point clouds with robust, dense grasp poses and mask annotations. Experiments conducted on Yumi IRB-1400 Robot demonstrate that the model trained on our dataset performs well in real environments and outperforms previous methods by a large margin.
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