即时
计算机视觉
人工智能
点(几何)
计算机科学
数学
几何学
物理
量子力学
作者
Yazhe Luo,Sipu Ruan,Yifei Li,Jiting Li,Diansheng Chen
摘要
Abstract To reliably manipulate previously-unknown objects in semi-structured environments, robots require rapid deployments and seamless transitions in pose estimation and grasping. This work proposes a novel two-stage robotic grasping method that instantly achieves accurate grasping without prior training. At the first stage, depth information and structured markers are utilized to construct compact templates for packaged targets, reducing noise and automating annotations. Then, we conduct coarse matching and design a new variant of the iterative closest point algorithm, named ATSAC-ICP, for precise point cloud registration. The method extracts locally well-registered pairs, regresses and optimizes 6-DOF pose to satisfy confidence probability and precision threshold. The second stage normalizes the target pose for consistent grasp planning, which is based on scene and placement patterns. The proposed method is evaluated by several sets of experiments using various randomly selected textured objects. The results show that the pose errors are approximately ±2mm, ±3° and the successful grasping rate is over 90%. These demonstrate effectiveness and applicability in grasping daily objects.
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