Abstract:
Vacuum-based end effectors are widely used in industry and are often preferred over parallel-jaw and multifinger grippers due to their ability to lift objects with a sing...Show MoreMetadata
Abstract:
Vacuum-based end effectors are widely used in industry and are often preferred over parallel-jaw and multifinger grippers due to their ability to lift objects with a single point of contact. Suction grasp planners often target planar surfaces on point clouds near the estimated centroid of an object. In this paper, we propose a compliant suction contact model that computes the quality of the seal between the suction cup and local target surface and a measure of the ability of the suction grasp to resist an external gravity wrench. To characterize grasps, we estimate robustness to perturbations in end-effector and object pose, material properties, and external wrenches. We analyze grasps across 1,500 3D object models to generate Dex-Net 3.0, a dataset of 2.8 million point clouds, suction grasps, and grasp robustness labels. We use Dex-Net 3.0 to train a Grasp Quality Convolutional Neural Network (GQ-CNN) to classify robust suction targets in point clouds containing a single object. We evaluate the resulting system in 350 physical trials on an ABB YuMi fitted with a pneumatic suction gripper. When evaluated on novel objects that we categorize as Basic (prismatic or cylindrical), Typical (more complex geometry), and Adversarial (with few available suction-grasp points) Dex-Net 3.0 achieves success rates of 98%, 82%, and 58% respectively, improving to 81% in the latter case when the training set includes only adversarial objects. Code, datasets, and supplemental material can be found at http://berkeleyautomation.github.io/dex-net.
Date of Conference: 21-25 May 2018
Date Added to IEEE Xplore: 13 September 2018
ISBN Information:
Electronic ISSN: 2577-087X
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Learning Models ,
- Point Cloud ,
- Material Properties ,
- Prismatic ,
- Contact Model ,
- Object Pose ,
- Suction Cup ,
- Single Point Of Contact ,
- Compliance Model ,
- 3D Printing ,
- Rigid Body ,
- Friction Coefficient ,
- Finite Element Analysis ,
- Target Object ,
- Friction Force ,
- Depth Images ,
- Depth Camera ,
- Object Surface ,
- Physical Experiments ,
- Sensor Noise ,
- Spring Type ,
- Human Labeling ,
- Non-planar Surfaces ,
- Typical Objects ,
- Pyramidal Shape ,
- Camera Pose ,
- Mass-spring System ,
- Physical Robot ,
- Spring System ,
- Perimeter
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Learning Models ,
- Point Cloud ,
- Material Properties ,
- Prismatic ,
- Contact Model ,
- Object Pose ,
- Suction Cup ,
- Single Point Of Contact ,
- Compliance Model ,
- 3D Printing ,
- Rigid Body ,
- Friction Coefficient ,
- Finite Element Analysis ,
- Target Object ,
- Friction Force ,
- Depth Images ,
- Depth Camera ,
- Object Surface ,
- Physical Experiments ,
- Sensor Noise ,
- Spring Type ,
- Human Labeling ,
- Non-planar Surfaces ,
- Typical Objects ,
- Pyramidal Shape ,
- Camera Pose ,
- Mass-spring System ,
- Physical Robot ,
- Spring System ,
- Perimeter