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Pose estimation for autonomous grasping with a robotic arm system

机译:机器人手臂系统自动抓握的姿势估计

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摘要

A robust and accurate method for estimating the 3-D pose of a planar rigid object is presented. This article demonstrates that 3-D pose estimation becomes feasible by using the 2-D tracking points on an object of scale-invariant feature transform (SIFT) and 3-D point cloud detected by stereo vision on an object, assuming that a 3-D geometric model of an object is known a priori. The roll and pitch angles of an object are estimated by the normal vector of approximate plane of 3-D point cloud on an object and the yaw angle is estimated by 2-D tracking point on an object of SIFT. Accurate object detection and localization in the camera coordinate system is crucial for grasping. In the motion planning, the bidirectional rapidly exploring random tree algorithm is used to search for a valid path for efficient grasping. Our robot arm can robustly and autonomously grasp a randomly rotative rigid object detected by SIFT in 3-D space. We have realized a grasping scenario with a dexterous arm (ADAM) such that an object in front of ADAM can be grasped. This demonstration shows how the proposed components build a dexterous and robust system integrating object detection, pose estimation, and motion planning.
机译:提出了一种鲁棒且准确的方法来估计平面刚性物体的3-D姿态。本文演示了通过使用尺度不变特征变换(SIFT)对象上的2-D跟踪点和通过立体视觉在对象上检测到的3-D点云的方法(假设3-物体的几何模型是先验的。通过物体上3-D点云的近似平面的法线向量估算物体的侧倾角和俯仰角,通过SIFT物体上的2-D跟踪点估算偏航角。在相机坐标系中进行精确的物体检测和定位对于抓取至关重要。在运动计划中,使用双向快速探索随机树算法来搜索有效路径以进行有效抓取。我们的机器人手臂可以牢固,自主地抓住SIFT在3D空间中检测到的随机旋转的刚性物体。我们已经实现了使用灵巧手臂(ADAM)的抓握场景,从而可以抓握ADAM前面的物体。该演示说明了所提出的组件如何构建灵巧而健壮的系统,该系统集成了对象检测,姿势估计和运动计划。

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