Publication | Closed Access
MonoGraspNet: 6-DoF Grasping with a Single RGB Image
40
Citations
36
References
2023
Year
Unknown Venue
Robot KinematicsEngineeringDexterous ManipulationField RoboticsObject ManipulationDepth Map6-Dof Grasping Poses3D Computer VisionKinematicsRobot LearningComputational GeometrySingle Rgb ImageGeometric ModelingArbitrary Object GraspingMachine Vision6-Dof Robotic GraspingDeep LearningComputer Vision3D VisionNatural SciencesExtended RealityRobotics
6-DoF robotic grasping is a long-lasting but un-solved problem. Recent methods utilize strong 3D networks to extract geometric grasping representations from depth sensors, demonstrating superior accuracy on common objects but performing unsatisfactorily on photometrically challenging objects, e.g., objects in transparent or reflective materials. The bottleneck lies in that the surface of these objects can not reflect accurate depth due to the absorption or refraction of light. In this paper, in contrast to exploiting the inaccurate depth data, we propose the first RGB-only 6-DoF grasping pipeline called MonoGraspNet that utilizes stable 2D features to simultaneously handle arbitrary object grasping and overcome the problems induced by photometrically challenging objects. MonoGraspNet leverages a keypoint heatmap and a normal map to recover the 6-DoF grasping poses represented by our novel representation parameterized with 2D keypoints with corresponding depth, grasping direction, grasping width, and angle. Extensive experiments in real scenes demonstrate that our method can achieve competitive results in grasping common objects and surpass the depth-based competitor by a large margin in grasping photometrically challenging objects. To further stimulate robotic manipulation research, we annotate and open-source a multi-view grasping dataset in the real world containing 44 sequence collections of mixed photometric complexity with nearly 20M accurate grasping labels.
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