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SuctionNet-1Billion: A Large-Scale Benchmark for Suction Grasping

About

Suction is an important solution for the longstanding robotic grasping problem. Compared with other kinds of grasping, suction grasping is easier to represent and often more reliable in practice. Though preferred in many scenarios, it is not fully investigated and lacks sufficient training data and evaluation benchmarks. To address that, firstly, we propose a new physical model to analytically evaluate seal formation and wrench resistance of a suction grasping, which are two key aspects of grasp success. Secondly, a two-step methodology is adopted to generate annotations on a large-scale dataset collected in real-world cluttered scenarios. Thirdly, a standard online evaluation system is proposed to evaluate suction poses in continuous operation space, which can benchmark different algorithms fairly without the need of exhaustive labeling. Real-robot experiments are conducted to show that our annotations align well with real world. Meanwhile, we propose a method to predict numerous suction poses from an RGB-D image of a cluttered scene and demonstrate our superiority against several previous methods. Result analyses are further provided to help readers better understand the challenges in this area. Data and source code are publicly available at www.graspnet.net.

Hanwen Cao, Hao-Shu Fang, Wenhai Liu, Cewu Lu• 2021

Related benchmarks

TaskDatasetResultRank
Vacuum GraspingSuctionNet Vacuum 1B (Seen)
AP28.31
4
Vacuum GraspingSuctionNet Vacuum 1B (Novel)
AP8.23
4
Vacuum GraspingSuctionNet Vacuum Similar 1B
AP26.64
4
Vacuum GraspingReal Experiments (Seen)
Grasp Success Rate3.91e+3
2
Vacuum GraspingReal Experiments (Unseen)
R Grasp Success Rate43.33
2
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