Litcius/Paper detail

Real-time grasping strategies using event camera

Xiaoqian Huang, Mohamad Halwani, Rajkumar Muthusamy, Abdulla Ayyad, Dewald Swart, Lakmal Seneviratne, Dongming Gan, Yahya Zweiri

2022Journal of Intelligent Manufacturing38 citationsDOIOpen Access PDF

Abstract

Abstract Robotic vision plays a key role for perceiving the environment in grasping applications. However, the conventional framed-based robotic vision, suffering from motion blur and low sampling rate, may not meet the automation needs of evolving industrial requirements. This paper, for the first time, proposes an event-based robotic grasping framework for multiple known and unknown objects in a cluttered scene. With advantages of microsecond-level sampling rate and no motion blur of event camera, the model-based and model-free approaches are developed for known and unknown objects’ grasping respectively. The event-based multi-view approach is used to localize the objects in the scene in the model-based approach, and then point cloud processing is utilized to cluster and register the objects. The proposed model-free approach, on the other hand, utilizes the developed event-based object segmentation, visual servoing and grasp planning to localize, align to, and grasp the targeting object. Using a UR10 robot with an eye-in-hand neuromorphic camera and a Barrett hand gripper, the proposed approaches are experimentally validated with objects of different sizes. Furthermore, it demonstrates robustness and a significant advantage over grasping with a traditional frame-based camera in low-light conditions.

Topics & Concepts

Computer visionArtificial intelligenceGRASPComputer scienceFrame rateSegmentationVisual servoingMotion blurRobotRobustness (evolution)Event (particle physics)Image (mathematics)Programming languageChemistryBiochemistryQuantum mechanicsGenePhysicsAdvanced Memory and Neural ComputingRobotics and Sensor-Based LocalizationRobot Manipulation and Learning