杂波中未知物体的超二次表示抓取

A. Makhal, F. Thomas, A. P. Gracia
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引用次数: 36

摘要

本文提出了一种快速有效的杂波中未知目标抓取方法。该抓取方法依赖于局部视图对象的实时超二次(SQ)表示和不完全对象建模,非常适合于混乱场景下未知对称对象的抓取,然后进行优化对映抓取。不完整的对象模型通过镜像算法进行处理,该算法假设对称,首先创建一个近似完整的模型,然后适合SQ表示。该抓握算法利用SQ参数中尺寸和曲面曲率信息的快速检索,旨在实现最大的力平衡和稳定性。计算机器人的姿态相对于重力方向,并结合机器人的参数和抓取器的规格来选择最佳的接近方向和接触点。SQ拟合方法已在包含孤立对象和杂波对象的自定义数据集上进行了测试。在一个PR2机器人上对该抓取算法进行了评估,并给出了实时结果。初步结果表明,尽管该方法基于简单的形状信息,但它在时间效率和准确性方面优于其他基于学习的抓取算法。
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Grasping Unknown Objects in Clutter by Superquadric Representation
In this paper, a quick and efficient method is presented for grasping unknown objects in clutter. The grasping method relies on real-time superquadric (SQ) representation of partial view objects and incomplete object modelling, well suited for unknown symmetric objects in cluttered scenarios which is followed by optimized antipodal grasping. The incomplete object models are processed through a mirroring algorithm that assumes symmetry to first create an approximate complete model and then fit for SQ representation. The grasping algorithm is designed for maximum force balance and stability, taking advantage of the quick retrieval of dimension and surface curvature information from the SQ parameters. The pose of the SQs with respect to the direction of gravity is calculated and used together with the parameters of the SQs and specification of the gripper, to select the best direction of approach and contact points. The SQ fitting method has been tested on custom datasets containing objects in isolation as well as in clutter. The grasping algorithm is evaluated on a PR2 robot and real time results are presented. Initial results indicate that though the method is based on simplistic shape information, it outperforms other learning based grasping algorithms that also work in clutter in terms of time-efficiency and accuracy.
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