Suction is an important solution for the longstanding robotic grasping problem. Compared with other kinds of grasping, suction grasping is easier to represent and often more reliable in practice. Though preferred in many scenarios, it is not fully investigated and lacks sufficient training data and evaluation benchmarks. To address that, firstly, we propose a new physical model to analytically evaluate seal formation and wrench resistance of a suction grasping, which are two key aspects of grasp success. Secondly, a two-step methodology is adopted to generate annotations on a large-scale dataset collected in real-world cluttered scenarios. Thirdly, a standard online evaluation system is proposed to evaluate suction poses in continuous operation space, which can benchmark different algorithms fairly without the need of exhaustive labeling. Real-robot experiments are conducted to show that our annotations align well with real world. Meanwhile, we propose a method to predict numerous suction poses from an RGB-D image of a cluttered scene and demonstrate our superiority against several previous methods. Result analyses are further provided to help readers better understand the challenges in this area. Data and source code are publicly available at www.graspnet.net.
翻译:抽吸是长期机器人捕捉问题的一个重要解决办法。 与其它种类的捕捉相比, 抽吸捕是比较容易代表的, 在实践中往往更可靠 。 虽然在许多情况中它被偏好, 但没有得到充分的调查, 缺乏足够的培训数据和评价基准 。 首先, 为了解决这个问题, 我们提出一个新的物理模型, 用于分析评估海豹形成和抽吸捕阻力的阻力, 这是捕捉成功的两个关键方面 。 第二, 采取了两步方法, 以生成对在现实世界的杂乱情景中收集的大规模数据集的说明。 第三, 提议建立一个标准的在线评价系统, 以评价在连续操作空间中抽吸所构成的系统, 它可以在不需要详尽标记的情况下公平地衡量不同的算法。 进行真实的机器人实验, 以显示我们的说明与真实世界的吻合。 同时, 我们提出一个方法, 来预测从一个混杂的场景的 RGB- D 图像中得出的众多抽吸力, 并显示我们相对于以前几个方法的优势 。 结果分析将进一步帮助读者更好地了解这一领域的挑战。 数据和源码可以在 www.graspnet 。