3D Vision for Object Grasp and Obstacle Avoidance of a Collaborative Robot

Kai-Tai Song, Yu-Hsien Chang,Jen-Hao Chen

2019 IEEE/ASME International Conference on Advanced Intelligent Mechatronics (AIM)(2019)

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摘要
This paper presents a design and experimental study of 3D robotic vision for bin picking and obstacle avoidance. Through the 3D vision algorithm, the robotic picking system is able to analyze the imagery of cluttered objects, classify the objects and estimate the pose of identified objects for grasping. In order to facilitate the robot to work with a human nearby, obstacle avoidance during task execution is developed based on 3D vision. In this design, a RealSense SR300 RGB-D camera is utilized to acquire RGB images and depth images of clustered workpieces. A deep neural network (DNN) approach to object recognition is designed and combined with point cloud segmentation to enhance 3D object-pose estimation for grasping The robot avoids obstacles to assure safe operation during execution of the bin picking task. Practical experiments using a Techman TM5 6-DOF robot arm show that the proposed method effectively accomplishes obstacle avoidance in pick-and-place operations.
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关键词
object grasp,obstacle avoidance,collaborative robot,3D robotic vision,3D vision algorithm,robotic picking system,cluttered objects,identified objects,RealSense SR300 RGB-D camera,3D object-pose estimation,bin picking task,Techman TM5 6-DOF robot arm show,object classification,task execution,RGB image acquisition,depth images,deep neural network,DNN,object recognition,point cloud segmentation,pick-and-place operations
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