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Learning hardware agnostic grasps for a universal jamming gripper

机译:学习硬件不可知的通用夹持器的掌握

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摘要

Grasping has been studied from various perspectives including planning, control, and learning. In this paper, we take a learning approach to predict successful grasps for a universal jamming gripper. A jamming gripper is comprised of a flexible membrane filled with granular material, and it can quickly harden or soften to grip objects of varying shape by modulating the air pressure within the membrane. Although this gripper is easy to control, developing a physical model of its gripping mechanism is difficult because it undergoes significant deformation during use. Thus, many grasping approaches based on physical models (such as based on form- and force-closure) would be challenging to apply to a jamming gripper. Here we instead use a supervised learning algorithm and design both visual and shape features for capturing the properties of good grasps. We show that given target object data from an RGBD sensor, our algorithm can predict successful grasps for the jamming gripper without requiring a physical model. It can therefore be applied to both a parallel plate gripper and a jamming gripper without modification. We demonstrate that our learning algorithm enables both grippers to pick up a wide variety of objects, including objects from outside the training set. Through robotic experiments we are then able to define the type of objects each gripper is best suited for handling.
机译:已经从包括规划,控制和学习的各种角度研究了掌握。在本文中,我们采取了学习方法来预测成功的掌握通用干扰夹具。干扰夹具由填充有颗粒材料的柔性膜组成,并且通过调节膜内的空气压力,可以快速硬化或软化以抓住变化形状的物体。虽然该夹具易于控制,但仍然难以控制其夹持机构的物理模型,因为它在使用期间经历显着变形。因此,基于物理模型(例如基于形状和力封闭)的许多抓握方法将具有挑战性地施加到干扰夹具。在这里,我们使用监督的学习算法和设计视觉和形状特征,以捕获良好的掌握的属性。我们表明,给定的来自RGBD传感器的目标对象数据,我们的算法可以预测干扰夹具的成功掌握而不需要物理模型。因此,它可以应用于平行板夹持器和干扰夹具而不进行修改。我们展示了我们的学习算法使夹具都能够拾取各种各样的物体,包括来自培训集外部的物体。通过机器人实验,我们能够定义每个夹具最适合处理的物体类型。

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