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Contact-GraspNet: Efficient 6-DoF Grasp Generation in Cluttered Scenes

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Grasping unseen objects in unconstrained, cluttered environments is an essential skill for autonomous robotic manipulation. Despite recent progress in full 6-DoF grasp learning, existing approaches often consist of complex sequential pipelines that possess several potential failure points and run-times unsuitable for closed-loop grasping. Therefore, we propose an end-to-end network that efficiently generates a distribution of 6-DoF parallel-jaw grasps directly from a depth recording of a scene. Our novel grasp representation treats 3D points of the recorded point cloud as potential grasp contacts. By rooting the full 6-DoF grasp pose and width in the observed point cloud, we can reduce the dimensionality of our grasp representation to 4-DoF which greatly facilitates the learning process. Our class-agnostic approach is trained on 17 million simulated grasps and generalizes well to real world sensor data. In a robotic grasping study of unseen objects in structured clutter we achieve over 90% success rate, cutting the failure rate in half compared to a recent state-of-the-art method.

Martin Sundermeyer, Arsalan Mousavian, Rudolph Triebel, Dieter Fox• 2021

Related benchmarks

TaskDatasetResultRank
Physical GraspingPhysical Grasping Evaluation 10 objects
Detection Success Rate53
7
Object GraspingPyBullet simulation 20 seen objects, 30 scenes
Grasp Success Rate (GSR)75.42
6
Object GraspingPyBullet simulation 10 unseen objects 30 scenes
GSR63.91
6
Object GraspingPyBullet simulation 10 seen objects, 30 scenes
GSR78.25
6
Robot GraspingReal-world grasping Similar objects, 10 objects, 10 trials (test)
GSR78.95
3
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