CLAS: Coordinating Multi-Robot Manipulation with Central Latent Action Spaces

Elie Aljalbout, Maximilian Karl, Patrick van der Smagt
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引用次数: 1

Abstract

Multi-robot manipulation tasks involve various control entities that can be separated into dynamically independent parts. A typical example of such real-world tasks is dual-arm manipulation. Learning to naively solve such tasks with reinforcement learning is often unfeasible due to the sample complexity and exploration requirements growing with the dimensionality of the action and state spaces. Instead, we would like to handle such environments as multi-agent systems and have several agents control parts of the whole. However, decentralizing the generation of actions requires coordination across agents through a channel limited to information central to the task. This paper proposes an approach to coordinating multi-robot manipulation through learned latent action spaces that are shared across different agents. We validate our method in simulated multi-robot manipulation tasks and demonstrate improvement over previous baselines in terms of sample efficiency and learning performance.
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基于中心潜在动作空间的多机器人协调操作
多机器人操作任务涉及各种控制实体,这些控制实体可以被分离成动态独立的部分。这类现实世界任务的一个典型例子是双臂操作。由于样本复杂性和探索需求随着动作和状态空间维度的增长而增长,学习用强化学习来天真地解决这类任务通常是不可行的。相反,我们希望将这样的环境作为多代理系统来处理,并让几个代理控制整个系统的一部分。然而,分散操作的生成需要通过限于任务中心信息的通道在代理之间进行协调。本文提出了一种通过在不同智能体之间共享的学习潜在动作空间来协调多机器人操作的方法。我们在模拟的多机器人操作任务中验证了我们的方法,并证明了在样本效率和学习性能方面比以前的基线有所改进。
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