基础模型能否实现机器人操作的零射击任务规范?

Yuchen Cui, S. Niekum, Abhi Gupta, Vikash Kumar, A. Rajeswaran
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引用次数: 32

摘要

任务规范是自主机器人编程的核心。任务规范的低工作量模式对于非专业最终用户的参与和个性化机器人代理的最终采用至关重要。一种被广泛研究的任务规范方法是通过目标,使用压缩状态向量或来自同一机器人场景的目标图像。前者对于非专家来说很难解释,需要详细的状态估计和场景理解。后者需要生成期望的目标图像,这往往需要人类来完成任务,违背了拥有自主机器人的目的。在这项工作中,我们探索了目标规范的替代形式和更一般的形式,这些形式有望更容易被人类指定和使用,例如从互联网上获得的图像,提供所需任务的视觉描述的手绘草图,或简单的语言描述。作为实现这一目标的初步步骤,我们研究了大规模预训练模型(基础模型)用于零射击目标规范的能力,并在模拟机器人操作任务和现实世界数据集的集合中发现了有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can Foundation Models Perform Zero-Shot Task Specification For Robot Manipulation?
Task specification is at the core of programming autonomous robots. A low-effort modality for task specification is critical for engagement of non-expert end-users and ultimate adoption of personalized robot agents. A widely studied approach to task specification is through goals, using either compact state vectors or goal images from the same robot scene. The former is hard to interpret for non-experts and necessitates detailed state estimation and scene understanding. The latter requires the generation of desired goal image, which often requires a human to complete the task, defeating the purpose of having autonomous robots. In this work, we explore alternate and more general forms of goal specification that are expected to be easier for humans to specify and use such as images obtained from the internet, hand sketches that provide a visual description of the desired task, or simple language descriptions. As a preliminary step towards this, we investigate the capabilities of large scale pre-trained models (foundation models) for zero-shot goal specification, and find promising results in a collection of simulated robot manipulation tasks and real-world datasets.
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