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RGB-D Camera based 3D Object Pose Estimation and Grasping

机译:基于RGB-D相机的3D对象姿态估计和抓握

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摘要

It is a great challenge to grasp 3D objects in unstructured environment. This task is closely related with object recognition, pose estimation, hand-eye calibration and grasp strategy planning. This paper focuses on the 6-DoF pose estimation and hand-eye calibration problems. Based on the point cloud provided by the RGB-D sensor, Viewpoint Feature Histogram (VFH) descriptor is used to localize the object by comparing the scene and model library. Instead of using a pan-tilt platform to build the template library, an industrial robot with in-hand camera is programmed to collect point clouds from different view angles. Distances between scene point cloud and the model point clouds are evaluated to find a group of candidate poses. The poses are further refined by aligning those point cloud pairs using Iterative Closest Point (ICP) algorithm. Although standard VFH descriptor is invariant to scale, it is sensitive to viewpoint variance, which may lead to irrational results. In order to improve the robustness, effect of the translational offset and number of pose candidates are evaluated. The hand-eye calibration process is formulated into an AX=ZB problem and solved by using quaternion rotation and least squares method. A series of experiments are performed with a RGB-D sensor and an industrial robot. The results verify that the method is effective to estimate the object poses. Considering the accuracy of the used sensor, it is proved that the proposed method has acceptable robustness and accuracy.
机译:在非结构化环境中掌握3D对象是一项巨大挑战。此任务与对象识别,姿势估计,手眼校准和掌握策略规划密切相关。本文侧重于6-DOF姿势估计和手眼校准问题。基于RGB-D传感器提供的点云,ViewPoint特征直方图(VFH)描述符用于通过比较场景和模型库来本地化对象。而不是使用Pan-Tilt平台来构建模板库,而是编程有手中摄像机的工业机器人,以从不同视角收集点云。场景点云和模型点云之间的距离被评估以查找一组候选姿势。通过使用迭代最接近点(ICP)算法对齐那些点云对来进一步改进姿势。虽然标准VFH描述符不变于缩放,但它对视点方差敏感,这可能导致非理性结果。为了提高稳健性,评估翻译偏移和姿势候选数量的效果。手眼校准过程配制成AX = ZB问题,并通过使用四元数旋转和最小二乘法解决。使用RGB-D传感器和工业机器人进行一系列实验。结果验证该方法是否有效估计对象姿势。考虑到二手传感器的准确性,证明了该方法具有可接受的稳健性和准确性。

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