Litcius/Paper detail

Graspness Discovery in Clutters for Fast and Accurate Grasp Detection

Chenxi Wang, Hao-Shu Fang, Minghao Gou, Hongjie Fang, Jin Gao, Cewu Lu

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)126 citationsDOI

Abstract

Efficient and robust grasp pose detection is vital for robotic manipulation. For general 6 DoF grasping, conventional methods treat all points in a scene equally and usually adopt uniform sampling to select grasp candidates. However, we discover that ignoring where to grasp greatly harms the speed and accuracy of current grasp pose detection methods. In this paper, we propose "graspness", a quality based on geometry cues that distinguishes graspable area in cluttered scenes. A look-ahead searching method is proposed for measuring the graspness and statistical results justify the rationality of our method. To quickly detect graspness in practice, we develop a neural network named graspness model to approximate the searching process. Extensive experiments verify the stability, generality and effectiveness of our graspness model, allowing it to be used as a plug-and-play module for different methods. A large improvement in accuracy is witnessed for various previous methods after equipping our graspness model. Moreover, we develop GSNet, an end-to-end network that incorporate our graspness model for early filtering of low quality predictions. Experiments on a large scale benchmark, GraspNet-1Billion, show that our method outperforms previous arts by a large margin (30 + AP) and achieves a high inference speed.

Topics & Concepts

GRASPComputer scienceBenchmark (surveying)Artificial intelligenceMargin (machine learning)InferenceGeneralityProcess (computing)Machine learningStability (learning theory)Computer visionData miningGeodesyProgramming languagePsychotherapistGeographyPsychologyOperating systemRobot Manipulation and LearningMuscle activation and electromyography studiesHand Gesture Recognition Systems