Abstract

Humans excel at performing a wide range of sophisticated tasks by leveraging skills acquired from prior experiences. This characteristic is especially essential in robotics empowered by deep reinforcement learning, as learning every skill from scratch is time-consuming and may not always be feasible. With the prior skills incorporated, skill composition aims to accelerate the learning process on new robotic tasks. Previous works have given insight into combining pre-trained task-agnostic skills, whereas skills are transformed into fixed order representation, resulting in poor capturing of potential complex skill relations. In this paper, we novelly propose a Graph-based framework for Skill Composition (GSC). To learn rich structural information, a carefully designed skill graph is constructed, where skill representations are taken as nodes and skill relations are utilized as edges. Furthermore, to allow it trained efficiently on large-scale skill set, a transformer-style graph updating method is employed to achieve comprehensive information aggregation. Our simulation experiments indicate that GSC outperforms the state-of-the-art methods on various challenging tasks. Additionally, we successfully apply the technique to the navigation task on a real quadruped robot. The project homepage can be found at Graph Skill Composition.

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