通过扩展周边个人空间图来学习把握

J. Juett, B. Kuipers
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引用次数: 4

摘要

我们提出了一个早期到达和抓取学习的机器人模型,灵感来自婴儿学习,而不需要事先了解手臂的几何、运动学或动力学。人类婴儿在伸手时能够使用一系列的抽动动作将手带到附近物体的位置。机器人学习代理可以通过使用图形表示来编码一组安全的、潜在有用的手臂状态和它们之间可行的移动,从而产生定性的类似行为。这些观察结果表明,周围个人空间(PPS)图模型对于早期发育是足够的,并表明婴儿在这一阶段可能会使用类似的模型。在本文中,我们展示了PPS图,模拟手掌反射(婴儿触摸手掌时手指闭合的反射),允许在持续的伸手练习中发生意外抓取。给定这些偶然事件,代理可以引导到一个简单的有意识的抓取动作。特别是,智能体必须学习三个新的必要条件:在抓取开始时手应该张开,手的最终运动应该由抓手的开口引导,这样它就能首先到达目标,手腕必须有方向,这样抓手的手指就可以在目标物体周围闭合,通常要求开口垂直于物体的长轴。结合现有的达到目标对象并与之交互的能力,这些条件的知识允许代理学习越来越可靠的有目的的掌握。本文解决了前两个条件,并允许45%的掌握成功。这项工作有助于在婴儿学习模型之后实现基础机器人学习的更大目标,并且对其自身的解剖结构或环境有最小的先验知识。抓取能力将允许智能体控制物体的运动和位置,为其环境提供更丰富的表征和新的学习经验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to Grasp by Extending the Peri-Personal Space Graph
We present a robot model of early reach and grasp learning, inspired by infant learning without prior knowledge of the geometry, kinematics, or dynamics of the arm. Human infants at reach onset are capable of using a sequence of jerky submotions to bring the hand to the position of a nearby object. A robotic learning agent can produce qualitatively similar behavior by using a graph representation to encode a set of safe, potentially useful arm states and feasible moves between them. These observations show that the Peri-Personal Space (PPS) Graph model is sufficient for early reaching and suggest that infants may use analogous models during this phase. In this paper, we show that the PPS Graph, with a simulated Palmar reflex (a reflex in infants that closes the fingers when the palm is touched), allows accidental grasps to occur during continued reaching practice. Given these occasional events, the agent can bootstrap to a simple deliberate grasp action. In particular, the agent must learn three new necessary conditions for a grasp: the hand should be open as the grasp begins, the final motion of the hand should be led by the gripper opening so that it reaches the target first, and the wrist must be oriented such that the gripper fingers may close around the target object, often requiring the opening to be perpendicular to the object's major axis. Combined with the existing capability to reach and interact with target objects, knowledge of these conditions allows the agent to learn increasingly reliable purposeful grasps. The first two conditions are addressed in this paper, and allow 45% of grasps to succeed. This work contributes toward the larger goal of foundational robot learning after the model of infant learning, with minimal prior knowledge of its own anatomy or its environment. The ability to grasp will allow the agent to control the motion and position of objects, providing a richer representation for its environment and new experiences to learn from.
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